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A joint initiative of Ludwig-Maximilians-Universität and the Ifo Institute for Economic Research VOLUME 11, NO. 2 Forum SUMMER 2010 Focus NATURAL DISASTERS Wolfgang Kron Stéphane Hallegatte and Valentin Przyluski Eduardo Cavallo and Ilan Noy David Hofman Hideki Toya and Mark Skidmore Yasuhide Okuyama Makena Coffman and Ilan Noy Peter Gordon, James E. Moore II, Jiyoung Park and Harry W. Richardson Bradley T. Ewing, Jamie B. Kruse and Mark A. Thompson Jacob Vigdor Mario Mazzocchi, Francesca Hansstein and Maddalena Ragona Specials A EURO RESCUE PLAN Wolfgang Franz, Clemens Fuest, Martin Hellwig and Hans-Werner Sinn RECENT FISCAL DEVELOPMENTS AND EXIT STRATEGIES Vito Tanzi Spotlight GOVERNMENT DEBT IN EUROPE Christian Breuer and Matthias Müller Trends STATISTICS UPDATE CESifo Forum ISSN 1615-245X A quarterly journal on European economic issues Publisher and distributor: Ifo Institute for Economic Research e.V. Poschingerstr. 5, D-81679 Munich, Germany Telephone ++49 89 9224-0, Telefax ++49 89 9224-98 53 69, e-mail [email protected] Annual subscription rate: n50.00 Single subscription rate: n15.00 Shipping not included Editors: John Whalley ([email protected]) and Chang Woon Nam ([email protected]) Indexed in EconLit Reproduction permitted only if source is stated and copy is sent to the Ifo Institute www.cesifo-group.de Forum Volume 11, Number 2 Summer 2010 _____________________________________________________________________________________ Focus NATURAL DISASTERS Natural Catastrophes: Do We Have to Live with Them? Wolfgang Kron 3 The Economics of Natural Disasters Stéphane Hallegatte and Valentin Przyluski 14 The Aftermath of Natural Disasters: Beyond Destruction Eduardo Cavallo and Ilan Noy 25 Mitigating the Impact of Natural Disasters on Public Finance David Hofman 36 Natural Disaster Impacts and Fiscal Decentralization Hideki Toya and Mark Skidmore 43 Globalization and Localization of Disaster Impacts: An Empirical Examination Yasuhide Okuyama 56 A Hurricane Hits Hawaii: A Tale of Vulnerability to Natural Disasters Makena Coffman and Ilan Noy 67 Short-Run Economic Impacts of Hurricane Katrina (and Rita) Peter Gordon, James E. Moore II, Jiyoung Park and Harry W. Richardson 73 Measuring the Regional Economic Response to Hurricane Katrina Bradley T. Ewing, Jamie B. Kruse and Mark A. Thompson 80 What Should the World Do about Port-au-Prince? An Economic Assessment Jacob Vigdor 86 The 2010 Volcanic Ash Cloud and Its Financial Impact on the European Airline Industry Mario Mazzocchi, Francesca Hansstein and Maddalena Ragona 92 Specials A Euro Rescue Plan Wolfgang Franz, Clemens Fuest, Martin Hellwig and Hans-Werner Sinn 101 Comments on Recent Fiscal Developments and Exit Strategies Vito Tanzi 105 Spotlight Government Debt in Europe Christian Breuer and Matthias Müller 111 Trends Statistics Update 113 Focus NATURAL DISASTERS age), the snow damage in China in early 2008 (more than 21 billion US dollars) and droughts like the one in Southeast Asia in 2009–2010 – let alone the many ‘silent’ disasters in Africa – which go unnoticed because their onset is not sudden. In poor countries, natural catastrophes often do not produce high monetary loss numbers in absolute terms, and sometimes not even high death tolls, but nevertheless they may be more severe and momentous for the country affected than, for instance, hurricane Katrina for the United States. NATURAL CATASTROPHES: DO WE HAVE TO LIVE WITH THEM? WOLFGANG KRON* Introduction: recent catastrophic events Hardly a year passes in which at least one country around the world suffers from a large natural catastrophe. The first months of 2010 have already seen a series of severe earthquakes in different parts of the world such as Haiti, Chile, Indonesia, China and Mexico, and a volcanic eruption in Iceland. Winter storms in Europe (Kyrill 2007, Klaus 2008, Xynthia 2009) remind us regularly that billion-dollar loss events are a continuing threat to Europe, as are widespread floods. The ones in Britain in 2007, along the lower Danube in 2006, in the Alps in 2005, and in central Europe in 2002 all set new loss records in the regions where they occurred. In 2004 and 2005, hurricanes in the North Atlantic – Katrina, Wilma, Rita (2005) and Ivan (2004) to mention just a few names – did the same with respect to their number and monetary losses. Nargis, a tropical cyclone in the Gulf of Bengal in 2008, devastated the Irrawaddy Delta through wind and storm surge and cost the lives of more than 140,000 Burmese. The Philippines were drenched in 2009 by enormous amounts of rainfall. Countless numbers of flash floods all over the world, of which only events like those in Istanbul (September 2009), Madeira (February 2010) and Rio de Janeiro (April 2010) became generally known, claim lives and cause huge destruction practically every day. On the other hand, events which cause hardly any physical damage – like the eruption of the Eyjafjallajökull volcano in Iceland (April 2010) – may produce costs running into several hundred million US dollars a day by interrupting private and business lives and the flow of goods. From the above, it becomes clear that disasters can assume different forms: in terms of scale (regional intensity or large-scale impact), number of fatalities, monetary losses and impact on the local economy. It is without doubt, however, that natural catastrophes, especially weather-related events, have been increasing dramatically in frequency and intensity. The 20 greatest natural catastrophes in terms of monetary losses and the ten deadliest catastrophes since 2000 are listed in Tables 1 and 2 respectively (see below). From hazard to risk – from event to catastrophe It is important to understand the circumstances under which natural catastrophes happen. Some people even claim that there is no such a thing as a natural catastrophe. Why? Because nature alone does not produce catastrophes, it only produces natural extreme events. We regard catastrophes from the point of view of their impact on man, so an extreme event like the one that caused the extinction of the dinosaurs is not a catastrophe in this sense. For this reason, even a very strong earthquake in an uninhabited region without human property cannot result in a catastrophe. Similarly, a Sometimes, very expensive events – recent examples being two hailstorms in Australia (Melbourne and Perth, March 2010) – are hardly noticed outside the country hit. But there are also less spectacular catastrophes such as the extreme heatwave in Europe in 2003 (70,000 deaths and over USD 10 billion dam- * Munich Reinsurance Company. 3 CESifo Forum 2/2010 Focus The overall losses in Chile are estimated as exceeding 30 billion US dollars (as at 7 June 2010). This shows that well-prepared regions may still face high repair and reconstruction bills, but the loss of life, the number of people injured, and the interruption to regular life are definitely less severe than at highly vulnerable locations. To be fair, one must consider the previous costs for precautionary measures as well. It follows from this that better precaution does not necessarily result in reduced overall costs, but there is no indication either that they are higher than if nothing is done. To sum up, precaution, even if costly, pays off. strong earthquake in a well-prepared region may not be catastrophic. In a poorly prepared region, however, even a moderate tremor may cause a devastating disaster. A natural catastrophe happens if people and/or their possessions are affected so severely that a society’s life is disrupted. A well-prepared society is not likely to experience a catastrophe as easily as one where many aspects of preparedness, from education and knowledge to building codes, and from functioning governance to availability of financial means are missing, making it vulnerable to impacts from nature. Catastrophes are hence not only products of chance but also the outcome of interaction between political, financial, social, technical and natural circumstances. Reconstruction costs in Haiti will also be well above 10 billion US dollars. The difference to Chile is that Haiti’s buildings and infrastructure will be raised to a higher level of safety by (hopefully) proper planning and construction, i.e. it will have its vulnerability significantly reduced. This must be considered when comparing the material losses in Haiti with those in Chile; the term ‘costs’ rather than ‘losses’ would therefore be more appropriate. The earthquakes in 2010 clearly support this statement. Haiti’s capital Port-au-Prince was razed by a magnitude 7.0 quake at 13 km depth on 12 January. The energy set free by the event was relatively moderate, but concentrated on a small area. Additionally, the disadvantageous underground conditions amplified the shaking. Presumably more than 220,000 people died as their dwellings were not the least designed for earthquake forces (the US Embassy was well designed and suffered practically no damage, by the way). The catastrophe happened because of the high concentration of humans at the epicentre and the extreme vulnerability. The physical parameters of the earthquake in Baja California, Mexico on 4 April were very similar, with a magnitude of 7.2 at 10 km depth. Two people died, the damage is expected to be less than 1 billion US dollars. Here, the quake hit an almost unpopulated area with only one larger settlement (Mexicali) at some 50 km distance. The lower population density and values and better building standards made the difference to Haiti. The above statements hold, in a similar way, for natural catastrophes caused by windstorm, flood, tsunami, etc. Whether a location is risky depends on (a) the likelihood that a natural event may occur; (b) the presence of people/items; and (c) their vulnerability (Kron 2005). Where there are no people or values that can be affected by a natural phenomenon, there is no risk. Vulnerability can refer to human health (human vulnerability), structural integrity (physical vulnerability), or personal wealth (financial vulnerability). Insurance’s contribution to risk control addresses the last of these factors. All three components have been and still are increasing unabated. Rising sea levels, increased tropical cyclone intensities (wind and rain), unprecedented flood experiences, on the one hand, and megacities with exploding populations and industrial development, on the other, are making many regions ever riskier, in particular those on coasts. The overall risk is determined by computing the integral over all possible threatening events and their consequences. The thus quantified risk is identical to the expected average annual loss. The magnitude 8.8 Chile earthquake on 27 February was about 500 times stronger than the Haitian, and 250 times stronger than the Mexican. While the depth of 35 km, the distance of 100 km from the city of Concepción, and the vast area which was exposed to the shaking certainly played a role with respect to the impacts, the fact that less than 300 people died (plus some 200 due to a tsunami) can clearly be attributed to the higher standard of construction. Hence, the governing parameter for this catastrophe was the high magnitude, i.e. the hazard parameter. CESifo Forum 2/2010 Natural catastrophe statistics and trends Munich Re has been systematically collecting information on natural catastrophes for more than 4 Focus Table 1 Overall and insured losses of the 20 costliest natural catastrophes since 2000 Rank Date Event 1 Aug. 2005 2 3 4 5 6 May 2008 Sep. 2008 Feb. 2010 Oct. 2004 Sept. 2004 Hurricane Katrina, storm surge Earthquake Hurricane Ike Earthquake Earthquakes Hurricane Ivan 7 Oct. 2005 Hurricane Wilma 8 9 10 11 Aug. 2002 Jan.–Feb. 2008 Aug. 2004 Sep. 2005 12 13 14 15 Jul. – Aug. 2003 Jul. 2007 Sep. 2004 Dec. 2004 Jan. 2007 Floods, severe storms Winter damage Hurricane Charley Hurricane Rita, storm surge Heatwave, drought Earthquake Hurricane Frances Tsunami Winter storm Kyrill Losses in billion US$ Affected country/regiona) (original values, not adjusted for inflation) Overall Insured USA* 125 62 China (Sichuan) Caribbean, USA* Chile* Japan (Niigata)* Caribbean, USA* 85 38 30 28 23 0.3 18.5 8 0.76 13.8 Caribbean, Mexico, USA* Europe China Caribbean, USA* USA* 22 12.5 21.5 21.1 18 16 3.4 1.2 8 12.1 13.8 12.5 12 10 10 2 0.335 5.5 1 5.8 Europe Japan (Niigata)* Caribbean, USA* Indian Ocean* West and Central Europe* USA (Midwest) Caribbean, USA* Caribbean, USA* Japan* Jan. 2008 Floods 10 0.5 Sep. 2008 Hurricane Gustav 10 3.5 19 Sep. 2004 Hurricane Jeanne 9.2 5 20 Sep. 2004 Typhoon Songda 4.7 9 a) Area near the coast is marked with *. Notes: Losses from the Haiti earthquake are not included. The extent of incurred damage is not likely to exceed 9 billion US dollars, although estimates of the reconstruction costs exceed 10 billion US dollars. Source: Munich Re. 35 years. The firm’s NatCatSERVICE database, the near a coast (15 of 20), and are mostly caused by world’s largest with respect to losses from natural weather events (15 of 20). Despite the fact that catastrophes, contains more than 28,000 entries for showing original values not adjusted for inflation the period 1970 to 2009. US dollars are used as the might give a biased picture, normalisation would not lead currency in the database. This means that all change this picture fundamentally, which shows: losses are converted from the local currency/ies into (a) natural catastrophes have never been so expen- US dollars, applying the exchange rate at the time sive; (b) losses in the two-digit billion dollar range the event occurs. have become more frequent; and (c) loss potentials have reached new dimensions. This is not only true The analyses conducted by Munich Re’s Geo Risks for overall economic losses but also for the insur- Research department deliver the most accurate esti- ance industry’s share. 11 events in Table 1, i.e. in just mates of the total economic and insured losses the past ten years (all those with insured losses larg- caused by any kind of natural peril. The results and er than 4 billion US dollars), belong to the top 18 conclusions of these analyses are not only used for all-time insured losses from a single event. determining insurance premiums but also made available to governments and non-governmental In Table 2 (deadliest events in the past ten years), we organisations to assist them in better planning and also see that many events (five) are related to coasts, developing prevention measures against natural but – with the exception of Europe in 2003 – hit poor catastrophes. regions. If one considers the past 60 years instead of only the past ten, the events ranked 9th and 10th Table 1 reveals that catastrophes with high mone- with less than 10,000 fatalities are no longer among tary losses occur in well developed countries, often the top ten; they fall back to ranks beyond 50. This 5 CESifo Forum 2/2010 Focus Table 2 The 10 deadliest natural catastrophes since 2000 Rank Date Event 1 Jan. 2010 Earthquake 2 Dec. 2004 Tsunami 3 May 2008 Cyclone Nargis, storm surge 4 Oct. 2005 Earthquake 5 May 2008 Earthquake 6 July – Aug. 2003 Heatwave, drought 7 Dec. 2003 Earthquake 8 Jan. 2001 Earthquake 9 May 2006 Earthquake 10 Nov. 2007 Cyclone Sidr, storm surge a) Area near the coast is marked with *. Source: Munich Re. reflects the fact that many catastrophes with very high death tolls occurred in the second half of the 20th century, although the population density everywhere then was less than nowadays. This development testifies to the efficiency of modern technological achievements and efforts in disaster reduction, initiated for instance by the International Decade for Natural Disaster Reduction (IDNDR), which was proclaimed by the United Nations in the 1990s. However, the top six events in Table 2, all recorded in the past seven years, would still rank among the top 14 since 1950 and hence suggest that it is by no means guaranteed that catastrophic death tolls are becoming more and more limited. Fatalities 222,500 220,000 140,000 88,000 84,000 70,000 26,200 14,970 5,749 3,360 take into account that these values are changing over time. The least that can be done is to adjust for inflation. Currently Munich Re, together with various scientific institutions such as the London School of Economics (LSE), is intensely studying the potential effects of other parameters that may affect comparability and bias results, such as changes in population and wealth (e.g. the development of the value of assets relative to GDP), as well as implications of improved precautionary measures, etc. An illustration comparing the parameters, number of loss events, fatalities, overall losses and insured losses for GNCs caused by different hazard categories is presented in the pie charts of Figure 1. They show that, for the past 60 years, 72 percent of loss events were weather-related (meteorological, hydrological and climatological events). Of this portion, tropical cyclones and extratropical winter storms make up more than half. If it comes to fatalities, earthquakes (including tsunamis) are responsible for roughly half of all deaths, followed by meteorological causes (including storm surges), which account for about 40 percent. Tables 1 and 2 clearly reveal the distinct difference between rich and poor countries. Large financial losses – in absolute terms – occur in the developed world, which is also quite well insured. The actual impact on a country must be measured in relative terms though. While a one billion dollar loss in the United States or in certain European countries is not outstanding, it may cripple the economy of a small, poor country. Munich Re therefore defines the so-called Great Natural Catastrophes (GNCs) using relative criteria (see note to Figure 1). This definition also helps when it comes to trend analyses. Looking only at GNCs means the reporting bias introduced by the development of communication technology in the past 60 years is largely eliminated. While GNCs are likely to be documented in the records of the affected countries and their consequences can be assessed, smaller events are not. In contrast to that, we quickly learn in today’s internet age of almost any minor local loss event, no matter where it happens. The charts for monetary losses in the lower part of Figure 1 reveal distinct differences between insured and overall losses. Weather events are, with more than 90 percent, by far the costliest ones for the insurance industry, while the overall losses are more evenly distributed among the three main categories. We found that the annual average monetary losses from GNCs have increased dramatically over the past 60 years (Figure 2). Even if a high fluctu- For statistical analyses, in particular for trend analyses, one cannot use original loss values, but must CESifo Forum 2/2010 Affected country/regiona) Haiti* Indian Ocean* Myanmar* Pakistan, India (Kashmir) China (Sichuan) Europe Iran (Bam) India (Gujarat) Indonesia (Java)* Bangladesh * 6 Focus Figure 1 GREAT NATURAL CATASTROPHES 1950 TO 2009 PERCENTAGE DISTRIBUTION ORDERED BY TYPE OF EVENT 285 loss events 2 million fatalities 6% 7% 4% 28% 25% 53% 36% 41% Overall losses USD 2000 bn (in 2009 values) Insured losses USD 415 bn (in 2009 values) 7% 6% 4% 9% 32% 23% 81% 38% Geophysical events Meteorological events Hydrological events (Earthquake, tsunami, volcanic eruption) (Storm) (Flood, mass movement) Climatological events (Extreme temperature, drought, forest fire) Note: GreatMunich natural catastrophes are those where the affected region’s ability to help itself was overtaxed and interSource: Re. national assistance required because thousands were killed, hundreds of thousands made homeless, or substantial economic or insured losses (relative to the regional situation) sustained. Source: Munich Re. ation is observed from year to year, the overall trend is obvious. As weather-related catastrophes predominate in terms of losses, this rise is mainly attributable to windstorms and floods. The question is: what are the driving factors of this development? People – land use – risk perception At the moment, about 6.8 billion people require a place to live on the earth, up from 3 billion in 1960 and heading for nine billion in the 2050s. Adequate and safe areas are limited by natural circumstances, but also by economic needs. While in the past settlement areas could be chosen because of their sheltered location with respect to adverse natural conditions, nowadays any available piece of land has to be used. Furthermore, new residents are often unfamiliar with the local hazard situation or lulled into a sense of security by trusting in the technical controllability of the forces induced by nature. Reasons for increasing losses There is no doubt that the main reasons for the increase of catastrophe losses are global population growth, the settlement and industrialisation of regions with high exposure levels, and the fact that modern technologies are highly susceptible to external disturbances. Due to its complexity, international trade is even more susceptible. Changing environmental conditions, in particular climate change and the lack of adequate risk perception, are additional features. Coastal areas, in particular, have been very attractive to people. Today, already one tenth of the world’s population lives within 5 km of the coast, one-third within 50 km and two-thirds within 300 km, and 15 of the 20 largest cities in the world are located on 7 CESifo Forum 2/2010 Focus worldwide problem, there are some striking examples such as areas along the Yangtze River in China that were devoted and designed for flood retention in the 1950s, but can no longer be used for this very purpose as several hundred thousand people live there today. Figure 2 GREAT NATURAL CATASTROPHES 1950 TO 2009 OVERALL AND INSURED LOSSES WITH TREND 250 in 2009 values USD billion 200 Overall losses Insured losses Trend overall losses Trend insured losses 150 100 Complexity – wealth – susceptibility 50 0 1950 1955 1960 1965 1970 1975 1980 1985 1990 1995 Source: Munich Re. coasts. And this trend is still unbroken. According to an OECD study (Nicholls et al. 2007), 113 million people will live in the flood-prone neighbourhoods of the 20 most populated coastal cities in 2070, an almost five-fold increase in today’s number. The same study predicts that assets in the 20 cities with the highest concentration of flood-exposed values will increase from the current 2.2 billion US dollars to about 27 billion. In addition to permanent residents, millions of tourists choose coastal regions as their holiday destination. The state of Florida in the United States, which has always had a high hurricane exposure, is a good illustration of how socio-economic factors act as natural catastrophe loss drivers. The population has grown from three million in 1950 to the current 19 million (plus 86 million tourists every year). This means that a hurricane making landfall in Florida today will have a multiple of people and their belongings in its path compared with the past. 2005 Wealth has increased in practically all regions of the world. At developed locations, even in poor countries, buildings have expensive features such as glass facades and sensitive claddings for architectural reasons – not just walls and windows. The potential for destruction from shaking, wind pressure, hail and flying debris is high, while more and more expensive items can be found inside buildings as was the case in the past. In general, modern equipment is highly vulnerable. Almost everything contains electric or electronic components, and these items often suffer severely when exposed to vibrations, heat, sand and dust, water or even humid, salty air. Whereas years ago water-damaged items had simply been dried and re-used, they are now discarded. In the interior of countries, river plains are – if one neglects the flood hazard – also well suited for development, and preferably used for this purpose. While flood-control measures prevent frequent losses and inconvenience, this effect is counterbalanced by the feeling of security it creates, leading people to expose more and more objects of increasing value to the risk of flood. This sense of security is transmitted not only by dykes and embankments, early-warning systems, and the availability of disaster-relief organisations, but also by the intentional or unintentional transmission of false information and by local authorities or groups with a vested interest (e.g. the tourist trade) playing down the risk. While this is a CESifo Forum 2/2010 Several outages in recent years in Europe, North America and Asia have shown how badly we depend on functioning power supply and telecommunication networks. Given a complex infrastructure (e.g. traffic and power networks), a failure in one place may cause a domino effect that brings the whole system to a standstill. It is scarcely conceivable what would happen if a large-scale and long-term power breakdown were to occur that turned off the (electrical) lights completely in Europe and/or North America for weeks and even months. This could come about, for instance, in a strong electro-magnetic event (‘sun storm’) which destroys several large, systemrelevant transformers. Replacing/repairing these may take months – as might the outage. Another recent event, actually one with minor catastrophic potential, has had a dramatic impact: the ash of Eyjafjallajökull volcano that kept aircraft on the ground led to chaotic situations at airports and in hotels, interfered with business activities, and even started to lead to shortfalls in supplies – and this just after a few days. 2000 8 Focus the last 100 years; the last nine years were among the 11 hottest in recorded history; 2010 has a high potential to become the warmest year ever. Climate change is taking place and it is mainly caused by human activities. Urban concentration and environmental changes It is not only the development of hazard-prone regions, but additionally the concentration of commercial and industrial centres which attracts people. More than 50 percent of the world’s population lives in urban areas compared to just 30 percent in 1950 – and the percentage is still increasing. Half a century ago, there were eight megacities in the world with a population exceeding five million. Today the number of megacities has grown to over 60. It is obvious that the chance of a severe natural event hitting one of these high-concentration regions is steadily growing. The fourth status report of the Intergovernmental Panel on Climate Change (IPCC 2007) regards the link between global warming and the greater frequency and intensity of extreme weather events as probable. The report finds, for instance, with more than 66 percent probability, that climate change already produces more heatwaves, heavy precipitation, droughts and intense tropical storms. The expected rise in global average temperatures of between 1.6 and 6.4°C by the end of the century, depending on future emissions of greenhouse gases, significantly increases the probability of short-term record temperatures (heatwaves). Warmer sea surface temperatures enhance evaporation and warmer air can hold more water vapour, thus increasing precipitation potential. Combined with more pronounced convection processes, in which warm and moist air rises to form clouds, this results in more frequent and more intense precipitation events. Particularly over dense urban areas – i.e. areas with high concentrations of values – the more intense convection may lead to local severe weather events that often involve a high density of lightning strokes, hailstorms and gale-force gusts, sometimes even tornadoes. On account of the large proportion of impervious surfaces in urban areas, the torrential rain runs straight into the drainage systems, which are not designed to cope with such volumes, with the result that underpasses, cellars and sometimes subway tunnels are flooded. A striking example is the 2005 Mumbai flooding: within 24 hours, 944 mm of rain fell in the Indian industrial metropolis on 26 July, that is more than 40 percent of the city’s average annual rainfall (2170 mm). The flood losses added up to 5 billion US dollars, of which 770 million US dollars were insured. Large cities not only represent huge value accumulations, but are also very vulnerable to disturbances. Many dwellings are being built in an uncontrolled way, i.e. on unstable ground (e.g. the favelas in South American metropolitan areas) or near bodies of water, and they are certainly not erected according to any construction code. Infrastructure (roads, electricity, water, sewage, etc.) is added later on (if at all) as a kind of emergency measure rather than in a planned and designed fashion. That makes these systems highly unreliable and vulnerable. On top of that, little attention is paid to governance in poor neighbourhoods. Early warning and evacuation in the event of imminent severe threats can therefore be extremely difficult. Colonisation of land has always the consequence of changing the environment. Forests are removed, rivers have to be tamed or diverted, and the local micro-climate is possibly altered. Most of these measures improve the situation in the short term but deteriorate it in the long term. One fairly common consequence of urban growth is subsidence, caused for instance by groundwater extraction or sometimes simply by the weight of buildings erected on relatively soft and unconsolidated coastal soil. A few decimetres of subsidence can create huge problems in already low-lying port cities and deltas, some areas suddenly finding themselves below a given flood level or even below the local sea level. The most severe – and globally effective – change of the environment, however, concerns our climate. The fact that the average number of great weather catastrophes has tripled since 1950 is again evidence of causal links between global warming and increasing frequencies and severity of natural events. Socioeconomic factors like the ones mentioned above cannot explain the rise of catastrophes in total. It is highly likely that climate change also is responsible for a part of it and that the number of severe, weather-related natural catastrophes will further increase in the long term as a result of continuing climate Climate change The scientific facts are clear: the global average temperature in the atmosphere has risen by 0.74°C over 9 CESifo Forum 2/2010 Focus quake catastrophes and some – particularly for the insurance industry – very costly weather events, it has become likely that the year will be an outstanding one with respect to natural disasters. But despite unfavourable loss trends, the insurance industry continues to offer a wide range of natural peril covers whilst trying, at the same time, to encourage its clients to focus more on loss prevention. It is also making strenuous efforts to control its own loss potentials with the help of modern geoscientific methods. It is still difficult, however, to predict in quantitative terms the effects that future changes will have on the frequency and intensity of extreme events. change. This, combined with the trend towards higher value concentrations in exposed areas, will increase loss potentials dramatically. Even before publication of the Stern Review by Lord Nicholas Stern (2006), it was clear that climate change is not just an ecological problem; it is also an economic issue. Stern predicted that climate change could cost 5 to 20 percent of the worldwide GDP annually until 2050. These costs could be reduced to 1 percent by proper and timely actions. If damage costs continue to rise, this also affects industry and primarily, of course, insurance companies. For Munich Re as a leading reinsurer, the natural catastrophe trends of recent years have resulted in three action strategies. Firstly, we call for effective and binding rules on CO2 emissions in the international debate, so that climate change is curbed and future generations do not have to live with weather scenarios that are difficult to control. Secondly, with our expertise we develop new business opportunities in the context of climate protection and adaptation measures. And thirdly, in our core business we only accept risks at risk-adequate prices. The role of the insurance industry The insurance industry plays an important role in raising awareness and coping with natural hazards: it quantifies risk by means of adequate premiums and thus makes risks transparent. Therefore, it creates incentives for reasonable behaviour and prevention, and so reduces the losses for the society. The insurance industry also has tremendous potential for promoting climate protection and climate change adaptation, and thus positively influencing future losses, by taking account of such issues in its products, investments, sponsoring activities and communications. In the same way as private individuals, insurance companies try to avoid volatility in their payments. Natural perils insurance is highly volatile. Large single losses (from one event) can be reduced by transferring part of the risk to the reinsurance sector, in which companies often do business worldwide. When catastrophic losses occur in one country, they are distributed all over the world, thus relieving the local insurance market and possibly even preventing its collapse. Driven by high losses from weather-related catastrophes, 2008 was the third most expensive year on record, taking inflation into account. It has only been exceeded by the hurricane year of 2005 and by 1995, the year of the Kobe earthquake. Overall economic losses totalled some 200 billion US dollars (2007: 82 billion US dollars), which is not too far from the record set in 2005 (232 billion US dollars in current values). Worldwide insured losses in 2008 rose to 45 billion US dollars, about 40 percent higher than the average in the previous ten years (32 billion US dollars). The large number of tropical cyclones and the earthquake in Sichuan made 2008 also one of the deadliest years on record; 98 percent of the fatalities occurred in Asia (Munich Re 2009). The insurance industry’s natural catastrophe risk models have already been adjusted in the light of the latest findings. For instance, they now incorporate sea temperatures that remain above the longterm average due to the ongoing cyclical warm phase in the North Atlantic; the effects of this warm phase are enforced by global warming. We can expect the above-average water temperatures to increase further the intensities of cyclones. There are two model types that are applied in the context of insuring natural catastrophes: (a) those to determine the individual risk of a given object (or a portfolio of objects) to be insured, and (b) those to assess expected losses, in particular for accumulation losses of extreme events. The following year, 2009, was practically free from large disasters and spectacular record losses on a global scale, but the sum of all losses was only marginally below average (Munich Re 2010). 2010 has again started differently. With the various earth- CESifo Forum 2/2010 10 Focus same as a probability distribution of losses. From this curve, the expected loss for a given return period, or the return period of a historical event with a known loss, can be read off. While such models for windstorm and earthquake have been available for many years, flood loss models have only become operational for the past few years as they require considerably more detail. Hazard zonation and premium calculation Premiums for the various hazards should reflect the individual exposure. For the bulk of business, i.e. for private homes and small businesses and their contents, the effort required to assess the exposure of a particular building has to be seen in the context of the annual premium income for one such property, which may be in the order of less than 100 US dollars in low-risk areas. Since individual assessment of the risk and calculation of an individual premium for such properties are impossible, the premium has to be fixed on the basis of a flat-rate assumption. For this purpose, zones with a similar hazard level (storm, flood, earthquake, landslide, etc.) have to be identified and/or defined, premiums (per unit value) being constant within a given zone. In most developed countries, hazard zone data of this kind are available. The partnership for risk reduction Risk and loss minimisation call for an integrated course of action. The risk must be borne by several shoulders: the state, the people and enterprises affected, and the financial sector, in particular the insurance industry. Only when they all cooperate with each other in a finely tuned relationship, in the spirit of a risk partnership, can disaster prevention really be effective. Modelling probable expected losses The job of public authorities (i.e. the state or the government) is primarily to reduce the underlying risk to society as a whole. They provide access to observation and early-warning systems, build river dykes and sea defences, determine the framework for the use of exposed areas by enacting statutory provisions, and prepare emergency plans, including programmes to alleviate recovery (temporary housing, financial assistance, tax relief, etc.). In some countries, insurance programmes are state-run. Unlike in the case of earthquake and windstorm, where homeowners themselves are responsible for ensuring their houses are properly protected, the responsibility for protection from flooding is largely shifted to public authorities. Insurance and especially reinsurance companies must be prepared to pay large amounts of money after major events. One example: Munich Re faced claims in the order of 2 billion US dollars after hurricane Katrina in 2005. The company is not threatened in its existence even by such enormous amounts. However, volatility is expensive. Money for payments must be made available very quickly and cannot be placed in long-term – and thus profitable – investments. With increasing single losses, the whole financial market, including banks, loan institutions and investors, is becoming more and more involved in covering risks. Assessing probable maximum (accumulation) loss (PML) and holding adequate reserves are crucial to an insurer’s economic survival. PML models are based on the definition in the second section of this paper where the expected loss is a function of the hazard, the values at risk and their vulnerability. The values at risk are represented by the portfolio under consideration, i.e. the distribution of (insured) values in a country. Typical (average) loss rates for different types of buildings and given loads (wind speed, water level, ground acceleration) are applied and account for vulnerability. The hazard is introduced by simulating a storm/earthquake/flood event in the area. By simulating a large number of – stochastically generated – events and arranging the resulting losses according to size, one obtains an (empirical) PML curve, which is the Those immediately affected (individuals, companies, communities) have a great potential for loss reduction. The crucial point is whether they keep their risk awareness alive. Even those people who do not neglect the danger of a natural peril from the very beginning often quickly forget about it, especially if nothing happens for some time. They rely on technological protection systems and at the same time make their property more and more valuable by adding additional items that are often susceptible to damage. These people must be informed and educated to build in an appropriate manner, control the exposure of their values, and be ready to take action in an emergency. This includes preparing for catastrophic losses by taking financial precautions, e.g. buying insurance. 11 CESifo Forum 2/2010 Focus surance Initiative (MCII). The idea of MCII is to collect money through global emissions trading and pay it into a pool. In this way, the largest CO2 emitters would ultimately finance the insurance solutions. The MCII has already introduced this idea into the negotiations for a successor to the Kyoto protocol, which is absolutely vital. To restrict global warming to the rise of 2°C that experts estimate to be just about controllable, well-conceived measures are needed quickly. This can only succeed if an international agreement with clear emission reductions and supported by all the major CO2 emitters is adopted as a successor to the Kyoto Protocol, which expires in 2012. The true task of insurance companies is to compensate financial losses that would have a substantial impact on insureds or even bring about their ruin. They carry the financial risk from events that have such a low probability that they cannot be considered foreseeable. Insurance redistributes the burden borne by individuals among the entire community of insureds, which is ideally composed in such a way that they all have a chance of being affected – even if the degrees of probability differ. Furthermore, they perform educational and public relations services, e.g. by publishing brochures in which they draw attention to hazards and explain ways of dealing with them (e.g. Munich Re 2010). Other measures being initiated in emerging countries include microinsurance. Munich Re recently launched a pilot product offering low-income households in the Indonesian capital Jakarta the opportunity to insure against the direct economic losses and social risks caused by severe flooding. The product – the first microinsurance flood product worldwide – is trigger based, depending on the height of the flood at a specific, public river gauge. What can and should be done? Impacts from natural disasters are not as devastating to rich societies as to those in less developed parts of the world. There, whole countries are sometimes thrown back in their development for years. Rich states, on the other hand, have a significant financial burden not only from catastrophe losses, but also from the costly precautionary measures that citizens demand from their governments to protect themselves and their properties. Chances and opportunities While we cannot stop or even reverse climate change, there are many opportunities to mitigate it and to adapt to it. New technologies and innovative products will open up extraordinary economic opportunities for companies, sectors and countries leading the process. Disaster prevention and risk reduction has several levels. Starting from protecting the global climate from becoming more and more threatening, they range via forecast, warning, and technical control systems to the individual’s (person, company) behaviour and provisions to make sure she/he/it will not be ruined by an extreme event. While there is no discussion that loss of life must be prevented by all means, the costs of efforts for prevention of monetary losses should not be completely out of balance with the value of the protected items. For whole countries, the mitigation of climate change offers exceptional chances. New technologies are emerging and specific sectors can expand. Especially economies with a high percentage of technological industries have enormous potential with regard to mitigating and adapting to climate change. Emerging countries Climate change is a global problem and can therefore only be solved globally. The biggest challenge is to quickly create and implement a global action plan that includes both the largest emitters of greenhouse gases and the developing countries, which are affected the most. Industrialised countries have to take the lead as their emissions have mainly created the problem. If we do not take ambitious action, the effects of global warming may become unmanageable. The longer we wait, the harder it will be for future generations to cope with climate change and Effective and economical solutions have to be found for emerging countries. These countries – especially in Africa or Southeast Asia – are often faced with a higher risk of natural disasters. At the same time, the level of insurance density is generally very low, as these markets are less industrialised and people have less available income to insure themselves against existential risks. An attempt to provide assistance for climatechange-related risks is the Munich Climate In- CESifo Forum 2/2010 12 Focus result of the effects of extreme natural events and the response to those events. Effective safeguards are both achievable and indispensable, but they will never provide complete protection. The determining factor is awareness that nature can always come up with events against which no human means can prevail. the more expensive it will become. From the economic point of view, it definitely makes sense to act now: investments in climate protection come much cheaper than paying for the damage that would ultimately occur. And in the end, it is people in general that have to bear the costs of natural catastrophes – not least because a large portion of the damage is always uninsured, as Munich Re’s statistics show abundantly. Overall, the costs of not acting will certainly be vast. References Frisch, M. (1981), Der Mensch erscheint im Holozän, Frankfurt: Suhrkamp. However, it is important to keep the debate on an objective level and to clarify some misunderstandings. The world will not immediately be destroyed by climate change and we will not be overwhelmed by a sudden endless series of destructive weather. In connection with global warming, we are talking of statistical changes in natural events. No single event can serve as a proof for the change. However, we still need to adapt to the consequences of climate change in order to lower the vulnerability, for example through better building standards or flood prevention measures, and avoid ever rising loss potentials by uncontrolled development of hazardprone areas. Intergovernmental Panel on Climate Change (IPCC, 2007), Climate Change 2007: Fourth Assessment Report of the Intergovernmental Panel on Climate Change, http://www.ipcc-data.org/ddc_ar4pubs.html. Kron, W. (2005), “Flood Risk = Hazard · Values · Vulnerability”, Water International 30, 58–68. Munich Re (2009), Topics Geo – Natural Catastrophes 2008, Munich: Munich Reinsurance Company. Munich Re (2010), Topics Geo – Natural Catastrophes 2009, Munich: Munich Reinsurance Company. Nicholls, R. J., S. Hanson, C. Herweijer, N. Patmore, S. Hallegatte, J. Corfee-Morlot, J. Chateau and R. Muir-Wood, (2007), Ranking of the World’s Cities Most Exposed to Coastal Flooding Today and in the Future, OECD Environment Working Paper 1, http://www.olis.oecd.org/olis/2007doc.nsf/linkto/env-wkp(2007)1. Stern, N. (2006), Stern Review on the Economics of Climate Change, HM Treasury, London, http://webarchive.nationalarchives.gov.uk/ +/http://www.hm-treasury.gov.uk/sternreview_index.htm. Conclusion The Swiss writer Max Frisch once stated (1981, 103): “only man knows natural disasters, so far as he survives them. Nature does not know disasters”. These have become more frequent and more intense during the last decades. The main causes are increasing global population and its need – and sometimes wish – to settle in areas that are prone to natural hazards, often in highly concentrated urban agglomerations. At the same time, the amount and susceptibility of possessions grow as risk awareness fades. A further significant contribution is added by climate change. The latest IPCC report has clearly documented that climate change is real and caused by human activities. It is today one of the greatest risks facing societies, and the rising number of severe weather-related natural catastrophes will cause higher loss burdens for economies in the future. At the same time, it offers growth opportunities for innovative economies and businesses. Great natural events are not avoidable. Great catastrophes are. Catastrophes are inevitably the net 13 CESifo Forum 2/2010 Focus To clarify the situation, this article proposes a definition of the cost of a disaster, and emphasizes the most important mechanisms that explain this cost. It does so by first explaining why the direct economic cost, i.e. the value of what has been damaged or destroyed by the disaster, is not a good indicator of disaster seriousness and why estimating indirect losses is crucial. Then, it describes the main indirect consequences of a disaster and of the following reconstruction phase, and discusses the methodologies to measure them. Finally, it proposes a review of published assessments of indirect economic consequences, which confirm their importance and the need to take them into account. THE ECONOMICS OF NATURAL DISASTERS STÉPHANE HALLEGATTE* AND VALENTIN PRZYLUSKI** Introduction Large-scale disasters regularly affect societies over the globe, causing huge destructions and damages. The 2010 earthquake in Port-au-Prince and the hurricane Katrina in 2005 have shown that poor as well as rich countries are vulnerable to these events, which have long lasting consequences on welfare, and on human and economic development. What is a disaster? How to define its cost? For which purpose? After each of these events, media, insurance companies and international institutions publish numerous assessments of the ‘cost of the disaster’. However these various assessments are based on different methodologies and approaches, and they often reach quite different results. Beside technical problems, these discrepancies are due to the multidimensionality in disaster impacts and their large redistributive effects, which make it unclear what is included or not in disaster cost assessments. But most importantly, the purpose of these assessments is rarely specified, even though different purposes correspond to different perimeter of analysis and different definitions of the ‘cost’. There is no single definition of a disaster. From an economic perspective, however, a natural disaster can be defined as a natural event that causes a perturbation to the functioning of the economic system, with a significant negative impact on assets, production factors, output, employment, or consumption. Examples of such natural event are earthquakes, storms, hurricanes, intense precipitations, droughts, heat waves, cold spells, and thunderstorms and lightning. Disasters affect the economic system in multiple ways and defining the cost of a disaster is tricky. Pelling et al. (2002), Lindell and Prater (2003), Cochrane (2004), Rose (2004), among others, discuss typologies of disaster impacts. These typologies usually distinguish between direct and indirect losses. This confusion translates into the multiplicity of words to characterize the cost of a disaster in published assessments: direct losses, asset losses, indirect losses, output losses, intangible losses, market and non-market losses, welfare losses, or any combination of those. It also makes it almost impossible to compare or aggregate published estimates that are based on so many different assumptions and methods. Direct losses are the immediate consequences of the disaster physical phenomenon: the consequence of high winds, of water inundation, or of ground shaking. Direct losses are often classified into direct market losses and direct non-market losses (also sometimes referred to as intangible losses, even though non-market losses are not necessarily intangible). Market losses are losses to goods and services that * Centre International de Recherche sur l’Environnement et le Développement, Paris and Ecole Nationale de la Météorologie, Météo-France, Toulouse. ** Ecole Nationale de la Météorologie, Météo-France, Toulouse. This research is supported by the European Community's Seventh Framework Programme (FP7/2007-2013), ConHaz Project, Contract No. 244159. CESifo Forum 2/2010 14 Focus lines are often possible. Moreover, in cases where recovery and reconstruction does not lead to a return to the baseline scenario, there are permanent (positive or negative) disaster effects that are difficult to compare with a non-disaster scenario. are traded on markets, and for which a price can easily be observed. Even though droughts or heat waves affect directly the economic output (especially in the agriculture sector), direct market losses from most disasters (earthquakes, floods, etc.) are losses of assets, i.e. damages to the built environment and manufactured goods. These losses can be estimated as the repairing or replacement cost of the destroyed or damaged assets. Since building and manufactured goods can be bought on existing markets, their price is known. Direct market losses can thus be estimated using observed prices and inventories of physical losses that can be observed (as recorded, e.g. in the EM-DAT database or insurance-industry databases) or modelled (using, e.g. catastrophe models of the insurance industry). For instance, a disaster can lead to a permanent extinction of vulnerable economic activities in a region, because these activities are already threatened and cannot recover, or because they can move to less risky locations. In that case, the disaster is not a temporary event, but a permanent negative shock for a region and it is more difficult to define the disaster cost. Also, reconstruction can be used to develop new economic sectors, with larger productivity, and lead to a final situation that can be considered more desirable than the baseline scenario. This improvement can be seen as a benefit of the disaster. It is however difficult to attribute unambiguously this benefit to the disaster, because the same economic shift would have been possible in absence of disaster, making it possible to get the benefits without suffering from the disaster-related human and welfare losses. Non-market direct losses include all damages that cannot be repaired or replaced through purchases on a market. For them, there is no easily observed price that can be used to estimate losses. This is the case, among others, for health impacts, loss of lives, natural asset damages and ecosystem losses, and damages to historical and cultural assets. Sometimes, a price for non-market impacts can be built using indirect methods, but these estimates are rarely consensual (e.g. the statistical value of human life always leads to heated controversies). Most importantly, defining the cost of a disaster cannot be done independently of the purpose of the assessment. Different economic agents, indeed, are interested in different types of cost. Insurers, for instance, are mainly interested in consequences that can be insured. Practically, this encompasses mainly the cost of damages to insurable assets (e.g. damaged houses and factories), and short-term business interruption caused by the disaster (e.g. the impossibility to produce until electricity is restored). Indirect losses (also labelled ‘higher-order losses’ in Rose (2004)) include all losses that are not provoked by the disaster itself, but by its consequences. Often, the term ‘indirect losses’ is used as a proxy for ‘output losses’, i.e. the reduction in economic production provoked by the disaster. Output losses include the cost of business interruption caused by disruptions of water or electricity supplies, and longer-term consequences of infrastructure and capital damages. Indirect losses can also have ‘negativecost’ components, i.e. gains from additional activity created by the reconstruction. Sometimes, non-monetary indirect consequences of disasters are also included, like the impact on poverty or inequalities, the reduction in collected taxes, or the increase in national debt. For affected households, insurable assets are also a major component, but other cost categories are as important. Primarily, loss of lives, health impacts and perturbation to their daily life are crucial. But in addition, households are concerned about their assets but also about their income, which can be reduced by business interruption or by loss of jobs, and about their ability to consume, i.e. the availability of goods and services. At the society scale, all these aspects are important, but local authorities, governments and international institutions are also interested in other points. First, to manage the recovery and reconstruction period and to scale the necessary amount of international aid, they need information on the aggregated impact on economic production, on unemployment and Another difficulty in disaster cost assessment lies in the definition of the baseline scenario. The cost of the disaster has indeed to be calculated by comparing the actual trajectory (with disaster impacts) with a counterfactual baseline trajectory (i.e. a scenario of what would have occurred in absence of disasters). This baseline is not easy to define and several base- 15 CESifo Forum 2/2010 Focus so, Figure 1 (a), (b) and (c) show simplified representations of a post-disaster situation. Figure 1(a) depicts the situation in which only output losses are estimated: in this situation the disaster leads to a temporary reduction in output during the reconstruction phase. We assume here that reconstruction is a return to the baseline scenario (i.e. a no-disaster counterfactual scenario). As already stated, this is not always the case, but making an assumption on the final state is necessary to define the cost of the disaster, and the assumption of a return to the nondisaster baseline scenario is likely to be the most neutral one for this type of assessment. jobs, on the impact of inequality and poverty, on local-businesses market-shares, on commercial balance, on collected taxes, etc. Second, to assess whether investment in prevention measures are desirable, they need the broadest possible assessments of the total disaster cost to the population, i.e. an estimate of welfare losses. Moreover, disaster impacts can have positive or negative ripple-effects at the global scale, as shown by hurricane Katrina, which led to a significant rise in world oil prices. Depending on the purpose and of the decision-making spatial scale, the perimeter of the cost analysis will be different. For instance, a country may want to assess the losses in the affected region, disregarding all out-of-the-region impacts, to calibrate the financial support it wants to provide to the victims. But it may also want to assess total losses on its territory, including gains and losses outside the affected region, for example to assess the impact on its public finance. The sum of instantaneous output loss is what is often referred to as the indirect loss. But reconstruction needs in the disaster aftermath means that a significant share of the remaining production will have to be devoted to reconstruction, as shown in Figure 1(b). In other terms, the resources used to rebuild damaged houses cannot be used to build new houses, or to maintain existing ones. This reconstruction output is included in total output, and is not a loss of output. But it is a ‘forced’ investment, in addition to the normal-time investment – consumption trade-off. It causes, therefore, a loss of welfare. The value of this forced investment is the replacement value of damaged asset, which is referred to as the direct losses. This is what is represented in Figure 1(c): the sum of the output loss and of the reconstruction output is the amount that cannot be used for consumption and non-reconstruction investment. This is referred to here as ‘total losses’. Clearly, depending on the purpose of the assessment, some of the cost components have to be included or not in the analysis. In the following, we focus on the economic cost for the affected region, with the aim of informing decision-makers on post-disaster financial aid and prevention measure desirability. To do so, it is obvious that the direct cost is an insufficient measure, and that the loss of welfare is much more relevant. Assessing a loss of welfare is complicated, as it includes many economic and non-economic components. Here, we focus on the economic component of welfare losses, and we define the economic cost of disaster as the lost consumption, considered as an important component and a good proxy of economic-related welfare losses.1 Of course, this article does not try to be comprehensive, and major cost components are left out of the analysis, like loss of lives, health consequences and loss of jobs. These additional component are important for the population welfare and therefore for prevention measure assessments. In this framework, total costs are the sum of the indirect cost (i.e. the reduction of the total value added by the economy due to the disaster) and the direct cost (i.e. the portion of the remaining value added that has to be dedicated to reconstruction instead of normal consumption). Capital and output losses can therefore be simply added to estimate consumption losses. Of course, Figure 1 shows a simplified situation in which production has no flexibility. In this case, reconstruction needs cannot be satisfied through increased production and it has to crowd out other consumptions and investments. Figure 2 depicts a different case, in which there is a limited flexibility in the production process: capital destruction leads to a reduction in output; but unaffected capital can increase its own production to compensate this reduction, for instance through an increase in work Consumption losses and output losses This section explains how to assess consumption losses from asset and output losses. More precisely, it explains why the sum of asset losses and output losses is a good proxy for the loss of consumption. To do 1 In an utilitarist framework, what matters is not output and production, but consumption. CESifo Forum 2/2010 16 Focus Figure 1 DIRECT LOSSES, INDIRECT LOSSES AND TOTAL LOSSES WHEN THERE IS NO FLEXIBILITY IN THE PRODUCTION PROCESS a) hours by workers at unaffected factories and businesses. In practice, there are gross indirect losses, and gross indirect gains (due to the stimulus effect of the reconstruction). But there is still a fraction of the remaining production that is used for reconstruction instead of normal consumption, even though this share is smaller than in absence of production flexibility. b) In this situation also, the consumption loss is still the sum of direct (asset) and indirect (output) losses (see Figure 2(c)), making it necessary to estimate output losses. But output losses are not only the lost production from the affected capital, but also the output gains and losses from unaffected capital in the rest of the economy. It makes the assessment of output losses more complicated, since it depends on complex economic mechanisms and trade-offs. c) In practice, moreover, the reduction in consumption can be mitigated or amplified by (i) changes in prices; (ii) flexibility in the production process; (iii) changes in the saving-consumption tradeoff for the remaining production; and (iv) the fact that the rebuilt capital will be more recent than before the disaster, with potential benefits (Hallegatte and Dumas 2009). The following section will describe methodologies to assess output losses and highlight the most important processes to take into account. How to assess output losses? If output losses represent an important component of total losses, it becomes essential to develop methodologies to assess them. To do so, we propose to Source: Authors’ conception. 17 CESifo Forum 2/2010 Focus Figure 2 DIRECT LOSSES, INDIRECT LOSSES AND TOTAL LOSSES WHEN THERE IS A LIMITED FLEXIBILITY IN THE PRODUCTION PROCESS a) start by assessing the lost output from the directly affected capital. In the second subsection, we investigate the systemic impacts of disasters, including the effect on the capital that is not directly affected by the disaster. From asset losses to output losses The first step in an assessment of output losses is to estimate how much output is lost because of direct asset losses. Economic theory states that, at the economic equilibrium and under certain conditions, the value of an asset is its expected future production, and this equality has been widely used to assess disaster output losses. Assuming this equality is always verified, the output loss caused by capital loss is simply equal to the value of the damages, capital losses and output losses are simply equal, and the sum of asset and output losses is the double of asset losses. b) The assumption that output losses are equal to capital losses is however based on strong assumptions, which are not always verified. In estimates of disaster consequences, ‘asset loss’ is the replacement value of the capital. To have the equality of asset loss and output loss, a double equality needs to be verified: replacement value has to be equal to market value; and market value has to be equal to the net present value of expected output. In an optimal economy at equilibrium, these two equalities are valid: first, the market value of an asset is by definition the net value of its output; second, if market value were higher (lower) than replacement value, then investors would increase (decrease) the amount of capital to restore the equilibrium. c) Source: Authors’ conception. CESifo Forum 2/2010 18 Focus Another example is the health care system in New Orleans. Beyond the immediate economic value of the service it provided, a functioning health care is necessary for a region to attract workers. After Katrina landfall on the city, the absence of health care services made it more difficult to reconstruct, and the cost for the region was much larger than the economic direct value of this service. Therefore, in theory, there is no difference between capital losses and the reduction in output from this capital. But the assumption of the economics being optimal and at equilibrium is questionable. First, for the replacement value and the market value to be equal, the economy needs to be at its optimum, i.e. the amount of capital is such that its return is equal to the (unique) interest rate. This is unlikely for the capital that is affected by natural disasters, especially as infrastructure and public assets are heavily affected. Since these assets are not exchanged on markets, they have no market prices. Moreover, they are not financed by private investors, but decided about through a political process under the consideration of multiple criteria (e.g. land-use planning objectives), and there is no reason for their purelyfinancial return to be equal to the (private) interest rate. Practically, some assets may have an output value lower than their replacement value (e.g. a secondary road that is redundant and does not provide a significant gain of time or distance), while some may have an output value much larger than their replacement value (e.g. a bridge that cannot be closed without large consequences for users). The systemic impact of natural disasters The equality between output losses and asset losses is questionable for any economic shock, small or large. The most important issues appear when considering very large shocks, or systemic events, which are the events that perturb the functioning of the entire economic system and affect relative prices. In this case, output losses may be damped or amplified by several mechanisms. (a) Changes in prices Figures 1 and 2 show output in real terms, i.e. with no monetary effects. But output losses can be estimated assuming unchanged (pre-disaster) prices or con-sidering the impact of the disaster on prices. Both assumptions lead to the same result if the disaster has only a marginal impact on the economy, with little impact of prices, but can be very different in the opposite situation. In other terms, one can assume that if a house is destroyed, the family who owns the house will just have to rent another house at the pre-disaster price. But this assumption is unrealistic if the disaster causes more than a marginal shock. In post-disaster situations, indeed, a significant fraction of houses may be destroyed, leading to changes in the relative price structure. In this case, the price of alternative housing can be much higher than the pre-di-saster price, as a consequence of the disaster-related scarcity in the housing market. Estimating the value of lost housing service should then be done using this higher cost instead of the pre-disaster one, which can lead to a significant increase in the assessed disaster cost. Unfortunately, it is difficult to predict ex ante the change in prices that would be caused by a disaster, making loss assessment more complicated. Second, for market values to be equal to net present value of expected output, expectations have to be unbiased and markets need to be perfect. This is not always the case especially in sectors affected by disasters, where expectations can be heavily biased (e.g. in housing market). Also, output losses are most of the time estimated from a social point of view. The equality between market value (for the owner) and expected output (for the society) is valid only in absence of externalities. Some assets that are destroyed by disasters may exhibit positive externality. It means that their value to the society is larger than the value of the owner’s expected output. Public goods have this characteristic, among which most infrastructures. An example is provided by the San Francisco Oakland Bay Bridge, which is essential to the economic activity in San Francisco and had to be closed for one month after the Loma Prieta earthquake in 1989. Its replacement value has no reason to be equal to the loss in activity caused by the bridge closure, because the bridge production is not sold on a market, the bridge has no market value, and the social return on capital of the bridge is unlikely to exhibit decreasing returns and is likely to be much higher than the interest rate. The same reasoning is possible in all other sectors, including transportation, energy, water, health, etc. In extreme cases, reconstruction may even be impossible, at all prices. This is because markets are not at equilibrium in disaster aftermath (i.e. price is not 19 CESifo Forum 2/2010 Focus households are able to pay for reconstruction, but cannot find workers and contractors to carry out the work. The same is true for businesses and factories. This explains why reconstruction often takes several years, even for limited damages (e.g. the 2004 hurricane season in Florida – see McCarty and Smith 2005). Examples of constraint include the availability of equipment and qualified workers. For instance, the limited availability of glaziers increased the cost of reconstruction and lowered the reconstruction pace after the 2001 chemical explosion in Toulouse (France), despite glaziers coming from all the country to carry out the work. such that demand equals production). The ‘if I can pay it, I can get it’ assumption is not valid in post-disaster situations. In these situations, therefore, the value of lost production cannot always be estimated as the product of lost produced quantity and pre-disaster prices. Providing an unbiased estimate requires an assessment of the disaster impact on prices. Often considered as resulting from unethical behavior from businesses, which are thought to benefit from the disaster, post-disaster price inflation can also have positive consequences. This inflation, indeed, helps attract qualified workers where they are most needed and creates an incentive for all workers to work longer hours, therefore compensating for damaged assets and accelerating reconstruction. It is likely, for instance, that higher prices after hurricane landfalls are useful to make roofers from neighboring unaffected regions move to the landfall region, therefore increasing the local production capacity and reducing the reconstruction duration. Demand surge, as a consequence, may also reduce the total economic cost of a disaster, even though it increases its burden on house owners. (c) Output gains and losses from the non-affected capital Damages in crucial intermediate sectors may lead to negative ‘network effects’ in the economy, leading to production losses even for businesses that are not directly affected by the disaster. Water, electricity, gas and transportation are the most critical sectors, and their production interruption has immediate consequences on the entire economic system. In past cases, it has been shown that the indirect consequences of utility services had larger consequences than direct asset losses, both on households (McCarty and Smith 2005) and on business (Tierney 1997). Of course, when capital cannot produce because of a lack of input (e.g. electricity, water), input substitution, production rescheduling, and longer work hours can compensate for a significant fraction of the losses (see Rose et al. 2007). These mechanisms can damp the output losses, and can especially reduce the crowding-out effects of reconstruction on normal consumption and investment (see Figure 2). But their ability to do so is limited, especially when losses are large. (b) Length of the reconstruction phase Importantly, there is a large difference between losing a home for one day (in this case the total loss is the reconstruction value, i.e. the direct loss) and losing a home for one year (in this case the total loss is the reconstruction value, i.e. the direct loss, plus the value of one year of housing services, i.e. the output loss). Of course, the longer the reconstruction period, the larger the total cost of the disaster. The reconstruction phase, and the economic recovery pace, will ultimately determine the final cost of the natural disasters. The reconstruction pace is linked to the constraints to the reconstruction phase, which are of two types. First, they can be financial. This concerns situations in which households and businesses can simply not finance the reconstruction. This is of particular importance in countries with limited resources (Freeman et al. 2002; Mechler et al. 2006). There are many sources of flexibility in the economic system. First, production capacity is not fully used in normal times and idle production capacity can be mobilized in disaster aftermath to compensate for lost production from lost assets. Second, behaviors can change in disaster aftermath and workers can increase their work hours in unaffected businesses to help society cope with disaster consequences (and sometimes benefit from increased prices). As a consequence, unaffected capital can often increase production to compensate for output loss from affected capital. After mild disasters, net output gains can even be observed, explained by the non-zero price elasticity of production, and by the under-optimality Constraints are also technical. Technical limits to the ability to increase production are obvious in the construction sector, which experience a dramatic increase in demand after the disaster. In spite of this demand, production does not follow, because there are strong constraints on reconstruction. Many CESifo Forum 2/2010 20 Focus substitution can take place in the production system. On the opposite CGE models are considered as too optimistic, since they assume that markets function perfectly (even in post-disaster situations), and that optimal prices balance production and demand and, act as signals to incentivize production of the most needed goods and services. The reality probably lies somewhere in between these two extremes, prompting the work on intermediate models. These intermediate models are either IO models with flexibility like those in Hallegatte (2008) or CGE models with reduced substitution elasticity like those in Rose et al. (2007). of the pre-disaster situation that leaves some room for increased production. In an economy that fully uses all resources and cannot increase its production over the short-term (whatever the price level), such a gain would be impossible. In a more realistic economy that does not use efficiently all resources (with underemployment, and imperfect allocation of capital), additional demand does not lead only to inflation, but also to increased output. The ‘adaptability’ and ‘flexibility’ of the production system and its ability to compensate for unavailable inputs is largely unknown and largely depend on the considered timescale. Over the very short term, the production system is largely fixed and the lack of one input can make it impossible to produce. Moreover, over short timescales, local production capacity is likely to be highly constrained by existing capacities, equipments and infrastructure. Only imports from outside the affected region and postponement of some non-urgent tasks (e.g. maintenance) can create a limited flexibility over the shortterm. This is what is represented in economic InputOutput model (e.g. Okuyama 2004), in which producing one unit of output requires a fixed amount of all input categories. (d) The stimulus effect of disasters Disasters lead to a reduction of production capacity, but also to an increase in the demand for the reconstruction sector and goods. Thus, the reconstruction acts in theory as a stimulus. However, as any stimulus, its consequences depend on the preexisting economic situation, or the phase of the business cycles. If the economy is in a phase of high growth, in which all resources are fully used, the net effect of a stimulus on the economy will be negative, for instance through diverted resources, production capacity scarcity and accelerated inflation. If the pre-disaster economy is depressed, on the other hand, the stimulus effect can yield benefits to the economy by mobilizing idle capacities. This complex interplay between business cycles and natural disasters economics is analyzed in detail in Hallegatte and Ghil (2008), who support the counter-intuitive result that economies in recession are more resilient to the effect of natural disasters. This result appears to be consistent with empirical evidence. For instance, the 1999 earthquake in Turkey caused destructions amounting to 1.5 to 3 percent of Turkey’s GDP, but consequences on growth remained limited, probably because the economy had significant unused resources at that time (the Turkish GDP contracted by 7 percent in the year preceding the earthquake). In this case, therefore, the earthquake may have acted as a stimulus, and have increased economic activities in spite of its terrible human consequences. In 1992 also, when hurricane Andrew made landfall on southern Florida, the economy was depressed and only 50 percent of the construction workers were employed (West and Lenze 1994). The reconstruction needs had stimulus effects on the construction sectors, which would have been impossible in a better economic situation. Over the longer term and the entire reconstruction period which can stretch over years for large-scale events, the flexibility is much higher: relative prices change, incentivizing production in scarce sectors; equipments and qualified workers move into the affected region, accelerating reconstruction and replacing lost capacities; and different technologies and production strategies can be implemented to cope with long-lasting scarcities. The production system organization can also be adjusted to the new situation: one supplier that cannot produce or cannot deliver its production (because of transportation issues, for instance) can be replaced by another suppliers; new clients can be found to replace bankrupt ones; slightly different processes can be introduced to reduce the need for scarce inputs (e.g. oil-running backup generator can be installed if electricity availability remains problematic). These types of substitution are represented in Calculable General Equilibrium models (e.g. Rose et al. 2007), in which the scarcity of one input translates into higher price, and reduced consumption of this input, compensated by larger consumption of other inputs. IO models are often considered too pessimistic, since they assume that prices are fixed and that no 21 CESifo Forum 2/2010 Focus replace the destroyed capital by the same capital, in order to restore production as quickly as possible, even at the price of a lower productivity. In extreme case, one may even imagine that reconstruction is carried out with lower productivity, to make reconstruction as fast as possible, with a negative impact on total productivity. Second, even when destructions are quite extensive, they are never complete. Some part of the capital can, in most cases, still be used, or repaired at lower costs than replacement cost. In such a situation, it is possible to save a part of the capital if, and only if, the production system is reconstructed identical to what it was before the disaster. This technological ‘inheritance’ acts as a major constraint to prevent a reconstruction based on the most recent technologies and needs, especially in the infrastructure sector. (e) The productivity effect When a disaster occurs, it has been suggested that destructions can foster a more rapid turn-over of capital, which could yield positive outcomes through the more rapid embodiment of new technologies. This effect, hereafter referred to as the ‘productivity effect’, has been mentioned, for instance, by AlbalaBertrand (1993), Stewart and Fitzgerald (2001), Okuyama (2004), and Benson and Clay (2004). Indeed, when a natural disaster damages productive capital (e.g. production plants, houses, bridges), the destroyed capital can be replaced using the most recent technologies, which have higher productivities. Examples of such upgrading of capital are: (i) for households, the reconstruction of houses with better insulation technologies and better heating systems, allowing for energy conservation and savings; (ii) for companies, the replacement of old production technologies by new ones, like the replacement of paperbased management files by computer-based systems; and (iii) for government and public agencies, the adaptation of public infrastructure to new needs, like the reconstruction of larger or smaller schools when demographic evolutions justify it. Capital losses can, therefore, be compensated by a higher productivity of the economy in the event aftermath, with associated welfare benefits that could compensate for the disaster direct consequences. This process, if present, could increase the pace of technical change and accelerate economic growth, and could therefore represent a positive consequence of disasters. This effect is investigated in Hallegatte and Dumas (2008) using a model with embodied technical change. In this framework, disasters are found to influence the production level but cannot influence the economic growth rate, in the same way as the saving ratio in a Solow-like model. Depending on how reconstruction is carried out (with more or less improvement in technologies and capital), indeed, accounting for the productivity effect can either decrease or increase disaster costs, but is never able to turn disasters into positive events. (f) Poverty traps It is crucial to also take into account the possibility that natural disasters increase poverty. In particular, because they destroy assets and wipe out savings, they can throw households into ‘poverty traps’, i.e. situation in which their productivity is reduced, making it impossible for them to rebuild their savings and assets.These micro-level poverty traps can also be created by health and social impacts of natural disasters: it has been shown that disasters can have long-lasting consequences on psychological health (Norris 2005), and on children development (from reducing in schooling and diminished cognitive abilities – see, for instance, Santos (2007); Alderman et al. (2006)). As an empirical support for this idea, AlbalaBertrand (1993) examined the consequences of 28 natural disasters on 26 countries between 1960 and 1979 and found that, in most cases, GDP growth increases after a disaster and he attributed this observation, at least partly, to the replacement of the destroyed capital by more efficient one. However, the productivity effect is probably not fully effective, for several reasons. First, when a disaster occurs, producers have to restore their production as soon as possible. This is especially true for small businesses, which cannot afford long production interruptions (see Kroll et al. 1991; Tierney 1997), and in poor countries where people have no mean of subsistence while production is interrupted. Replacing the destroyed capital by the most recent type of capital implies in most cases to adapt company organization and worker training which takes time. Producers have thus a strong incentive to CESifo Forum 2/2010 These poverty traps at the micro-level (i.e. the household level) could even lead to macro-level poverty traps, in which entire regions could be stuck. Such poverty traps could be explained by the amplifying effect reproduced in Figure 3. Poor regions have a limited capacity to rebuild after disasters: if they are regularly affected by disasters, they do not 22 Focus output model that indirect ecoAMPLIFYING EFFECT ILLUSTRATING HOW NATURAL DISASTERS COULD nomic losses in Louisiana after Katrina amounted to 42 billion BECOME RESPONSIBLE FOR MACRO-LEVEL POVERTY TRAPS US dollars compared to 107 billion US dollars of direct ecoLimited reconstruction nomic losses. More generally, capacity this analysis concludes that regional indirect losses increase nonlinearly with direct losses, Reduced economic Long reconstruction Amplifying development period after disasters suggesting the existence of effect threshold in the coping capacity of economic systems. In this analysis of Louisiana, indirect Reduced accumulation of Large economic cost of losses remain negligible (or even capital and infrastructure natural disasters negative) for direct losses below 50 billion US dollars, and then Source: Authors’ conception. increase nonlinearly to reach 200 billion US dollars for direct losshave enough time to rebuild between two events, es of the same amount (see Figure 4). Also, indirect and they end up into a state of permanent reconlosses decrease rapidly if it is possible to ‘import’ struction, with all resources devoted to repairs reconstruction means (workers, equipment, finance) instead of addition of new infrastructure and equipfrom outside the affected region. This result highments. These obstacles to capital accumulation and lights the importance of considering the interregioninfrastructure development lead to a permanent disal interactions. aster-related under-development. This effect has been analyzed by Hallegatte et al. (2007) with a reduced-form model showing that the average GDP Conclusions impact of natural disasters can be either close to zero if reconstruction capacity is large enough, or very This article highlights the main difficulties in definlarge if reconstruction capacity is too limited (which ing, measuring and predicting the total cost of disasmay be the case in less developed countries). ters. It focuses on indirect (or output) losses, considered as a major component of the total loss of popuThis type of feedback can be amplified by other lation welfare. There are several methodologies to long-term mechanisms, like changes in risk percepassess these indirect losses, but they are all based on tion that reduces investments in the affected regions questionable assumptions and modelling choices, or reduced services that make qualified workers leave the regions. Because of these mechFigure 4 anisms, the consequences of a INDIRECT (OUTPUT) LOSSES AS A FUNCTION OF DIRECT (ASSET) LOSSES disaster can last much longer IN LOUISIANA FOR KATRINA-LIKE DISASTERS than what is normally considFigure 3 ered to be the recovery and reconstruction period. Indirect losses in billion US dollars 300 250 An example of assessment on Katrina in New Orleans For the landfall of Katrina on New Orleans, the availability of a large amount of data allowed many modelling analyses. Hallegatte (2008), for instance, estimated using a regional input- 200 150 100 50 0 - 50 0 50 100 150 200 250 300 Direct losses Source: Hallegatte (2008). 23 CESifo Forum 2/2010 Focus McCarty, C and S. K. Smith (2005), Florida’s 2004 Hurricane Season: Local Effects, Florida Focus, University of Florida, http://www.bebr.ufl.edu/system/files/FloridaFocus1_3_2005_0.pdf. and they can lead to very different results. The main conclusion is of this article twofold. Mechler, R., J. Linnerooth-Bayer and D. Peppiatt (2006), Microinsurance for Natural Disasters in Developing Countries: Benefits, Limitations and Viability, ProVention Consortium, Geneva, http://www.proventionconsortium.org/themes/default/pdfs/Microin surance_study_July06.pdf. First, it is impossible to define ‘the cost’ of a disaster, as the relevant cost depends largely on the purpose of the assessment. The best definition and method obviously depend on whether the assessment is supposed to inform insurers, prevention measure costbenefit analyses, or international aid providers. A first lesson from this article is that any disaster cost assessment should start by stating clearly the purpose of the assessment and the cost definition that is used. Following this recommendation would avoid misleading use of assessments, and improper comparison and aggregation of results. Norris, F. H. (2005), Range, Magnitude, and Duration of the Effects of Disasters on Mental Health: Review Update 2005, Dartmouth Medical School and National Center for PTSD, Hanover and Boston. Okuyama, Y. (2004), “Modeling Spatial Economic Impacts of an Earthquake: Input-Output Approaches”, Disaster Prevention and Management 13, 297–306. Pelling, M., A. Özerdem and S. Barakat (2002), “The Macro-economic Impact of Disasters”, Progress in Development Studies 2, 283–305. Rose, A. (2004), “Economic Principles, Issues, and Research Priorities in Hazard Loss Estimation”, in: Okuyama, Y. and S. Chang (eds.), Modeling Spatial and Economic Impacts of Disasters, Berlin: Springer, 14–36. Second, there are large uncertainties on indirect disaster costs, and these uncertainties arise both from insufficient data and inadequate methodologies. Considering the importance of unbiased estimates of disaster cost, for instance to assess the desirability of prevention measures, progress in this domain would be welcome and useful. To do so, much more research should be devoted to this underworked problem. Rose, A., G. Oladosu and S. Y. Liao (2007), “Business Interruption Impacts of a Terrorist Attack on the Electric Power System of Los Angeles: Customer Resilience to a Total Blackout”, Risk Analysis 27, 513–531. Santos, I. (2007) Disentangling the Effects of Natural Disasters on Children: 2001 Earthquakes in El Salvador, Doctoral Dissertation, Kennedy School of Government, Harvard University. Tierney, K., (1997),“Business Impacts of the Northridge Earthquake”, Journal of Continencies and Crisis Management 5, 87–97. West, C. T. and D. G. Lenze (1994), “Modeling the Regional Impact of Natural Disasters and Recovery: A General Framework and an Application to Hurricane Andrew”, International Regional Science Review 17, 121–150. References Albala-Bertrand, J. M. (1993), The Political Economy of Large Natural Disasters with Special Reference to Developing Countries, Oxford: Clarendon Press. Alderman, H., J. Hodditnott and B. Kinsey (2006), “Long-term Consequences of Early Childhood Malnutrition”, Oxford Economic Papers 58, 450–474. Cochrane, H. (2004), “Economic Loss: Myth and Measurement”, Disaster Prevention and Management 13, 290–296. Freeman, P. K., L. A. Martin, J. Linnerooth-Bayer, R. Mechler, S. Saldana, K. Warner and G. Pflug (2002), Financing Reconstruction: Phase II Background Study for the Inter-American Development Bank Regional Policy Dialogue on National Systems for Comprehensive Disaster Management, Washington DC: InterAmerican Development Bank. Lindell, M. K. and C. S. Prater (2003), “Assessing Community Impacts of Natural Disasters”, Natural Hazards Review 4, 176–185. Hallegatte, S. (2008), “An Adaptive Regional Input-Output Model and Its Application to the Assessment of the Economic Cost of Katrina”, Risk Analysis 28, 779–799. Hallegatte S., J. C. Hourcade and P. Dumas (2007), Why Economic Dynamics Matter in Assessing Climate Change Damages: Illustration on Extreme Events”, Ecological Economics 62, 330–340. Hallegatte, S. and P. Dumas (2008), “Can Natural Disasters Have Positive Consequences? Investigating the Role of Embodied Technical Change”, Ecological Economics 68, 777–786. Hallegatte, S. and M. Ghil (2008), “Natural Disasters Impacting a Macroeconomic Model with Endogenous Dynamics”, Ecological Economics 68, 582–592. Kroll, C. A., J. D. Landis, Q. Shen and S. Stryker (1991), Economic Impacts of the Loma Prieta Earthquake: A Focus on Small Business, Studies on the Loma Prieta Earthquake, University of California, Transportation Center. CESifo Forum 2/2010 24 Focus A recent pertinent example is the devastation that recent earthquakes wrought in Haiti and Chile. The January 2010 earthquake that struck Haiti’s densely populated capital, Port-au-Prince, caused significant loss of human life (between 200,000 and 250,000 fatalities), the displacement of more than a million and severe damage to the country’s economic infrastructure (estimated over 100 percent of the country’s GDP) – see Cavallo, Powell and Becerra (2010). In contrast, the February 2010 earthquake in Chile which was physically stronger and also struck a densely populated area caused many fewer fatalities (less than 500 people killed according to most recent official estimates). And although direct economic damages are expected to be substantial due to the amount of wealth exposed, they are expected to be far less than Haiti’s in relation to the size of the economy.1 Clearly, these dissimilar outcomes originated from different policies, institutional arrangements and economic conditions. THE AFTERMATH OF NATURAL DISASTERS: BEYOND DESTRUCTION EDUARDO CAVALLO* AND ILAN NOY** Introduction Recent catastrophic natural disasters, such as the Indian Ocean tsunami of 2004, and the Haitian earthquake of 2010, have received more international attention than previous disasters, yet our rapidly evolving understanding regarding their relevance to economic development and growth is still in its infancy. Much research in the social sciences, and even more in the natural sciences, has been devoted to increasing our ability to predict disasters and prepare for them. Interestingly, however, the economic research on natural disasters and their consequences is fairly limited. We summarize here the state of this literature and point to questions that we believe need further probing. Pelling et al. (2002) and ECLAC (2003) introduce a typology of disaster impacts that we adopt here. They distinguish between direct and indirect damages. Direct damages are the damage to fixed assets and capital (including inventories), damages to raw materials and extractable natural resources, and of course mortality and morbidity that are a direct consequence of the natural phenomenon. Indirect damages refer to the economic activity, in particular the production of goods and services, that will not take place following the disaster and because of it. These indirect damages may be caused by the direct damages to physical infrastructure, or because reconstruction pulls resources away from production. These indirect damages also include the additional costs that are incurred because of the need to use alternative and potentially inferior means of production and/or distribution for the provision of normal goods and services. At the household level, these indirect costs also include the loss of income resulting from the non-provision of goods and services or Sen (1981), in his seminal economic history of famines, famously observed that starvation is the characteristic of some people not having enough food to eat. It is not the characteristic of there being not enough food to eat. In Sen’s work, the central emphasis is that the costs associated with what we define as natural disasters are largely determined by economic and social forces rather than predetermined by natural processes. Sen’s observation suggests that economics is important not only in understanding what happens after a disaster occurs, but rather that the very occurrence of disasters is an economic event. * Inter-American Development Bank. ** University of Hawaii. The views and interpretations in this document are those of the authors and should not be attributed to the Inter-American Development Bank, or to any individual acting on its behalf. This paper is an abridged version of Cavallo and Noy (2009). We thank Oscar Becerra for excellent research assistance. 1 Chile’s vast experience with prior earthquakes, its prudent macroeconomic policies in the last two decades and its copper sovereign wealth fund have all been used to motivate predictions about a speedy recovery in the aftermath of the earthquake (Barrioneuvo 2010). 25 CESifo Forum 2/2010 Focus only of direct damages (e.g. damage to infrastructure, crops and housing). An alternative but similar source that is less extensive, and only parts of which are publicly available, is the Munich Re dataset at http://mrnathan.munichre.com/. A similar data collection effort with similar coverage but more limited access is maintained by another reinsurer, Swiss Re. For an analytical review of selected data sets on natural disasters, see Tschoegl et al. (2006). from the destruction of previously used means of production. These costs can be accounted for in the aggregate by examining the overall performance of the economy, as measured through the most relevant macroeconomic variables. They can also be further divided, following the standard distinction in macroeconomics, between the short run (up to several years) and the long run (at least five years but sometimes also measured in decades). We use this distinction in the discussion that follows. A few papers use other data sources. Most notable are those that aim to estimate the impact of storms/hurricanes. These papers use data on storm intensity, typically measured by wind speed or storm radius that are taken from the US National Oceanic and Atmospheric Administration (NOAA) and the Pielke et al. (2008) database. The second section begins with a brief review of the main data sources used in this largely empirical literature. The third section discusses the determinants of the direct effects, while the fourth section examines the indirect effects. The fifth section focuses on policy, while the sixth section describes several case studies of specific disasters and the insights gained from them. The final section 7 summarizes and points to several significant gaps in this literature. Before reviewing the evidence on the impacts of natural disasters, it is useful to describe the stylized facts. First, natural disasters, as defined in the EMDAT database, are fairly common events and their reported incidence has been growing over time. Figure 1 plots the average number of natural events (including hydro-meteorological and geophysical events) per country over the span of the last four decades. The figure shows that the incidence of disasters has been growing over time everywhere in the world. For example, in the Asia-Pacific region which is the region with the most events, the incidence has grown from an average of 11 events per country in the 1970s to over 28 events in the 2000s.2 In other regions, while the increase is less dramatic, the trend is similar. However, these patterns appear to be driven to some extent by improved recording of milder events, rather than by an increase in the frequency of occurrence. Furthermore, truly large events – i.e. conceivably more catastrophic – are rarer. Both of these facts are shown in Figure 2, where the sample is restricted to large events only, and where ‘large’ is defined in relation to the world mean of direct damage caused by natural events.3 Data on disasters Almost all the empirical work we survey here relies on the publicly available Emergency Events Database (EM-DAT) maintained by the Center for Research on the Epidemiology of Disasters (CRED) at the Catholic University of Louvain, Belgium (http://emdat-be/). The database is compiled from various sources, including UN agencies, non-governmental organizations, insurance companies, research institutions and press agencies. EM-DAT defines a disaster as a natural situation or event which overwhelms local capacity and/or necessitates a request for external assistance. For a disaster to be entered into the EM-DAT database, at least one of the following criteria must be met: (a) ten or more people are reported killed; (b) 100 people are reported affected; (c) a state of emergency is declared; or (d) a call for international assistance is issued. Disasters can be hydro-meteorological including floods, wave surges, storms, droughts, landslides and avalanches; geophysical including earthquakes, tsunamis and volcanic eruptions; and biological covering epidemics and insect infestations (these are much more infrequent in this database). As is evident from the figure, there is no time trend for the subset of large events in any region. Moreover, the frequency of occurrence of ‘large’ disasters is significantly smaller than for all events. For example, while there are more than 28 events The data report the number of people killed, the number of people affected and the dollar amount of direct damages in each disaster. The amount of material damage reported in the database consists CESifo Forum 2/2010 2 The numbers corresponding to the decade of 2000 were adjusted to account for the fact that there is one fewer year of reported data in this decade. 3 A large disaster occurs when its incidence, measured in terms of people killed as a share of population, is greater than the world pooled mean for the entire sample period. 26 Focus Figure 1 INCIDENCE OF NATURAL DISASTERS BY REGION 1970–2008 Total number of disasters by region Hidro-meteorological and geological 30 Number of events per country Africa Asia-Pacific C&E Europe W Europe LAC the 1970s, and excluding the most recent 2009–2010 events, almost three million people were reportedly killed by natural disasters in the three most vulnerable regions. 25 20 15 10 5 0 1970s 1980s 1990s 2000s Note: 2000s figures were adjusted to account for the fewer number of years in the decade. Source: Authors' calculations based on data from EM-DAT database. per country on average in the Asia-Pacific region in the 2000s, the frequency of occurrence of large events is only 0.5 episodes per country. This suggests that the threshold for what constitutes a disaster (and hence gets recorded in the dataset) is quite low. In summary, natural events are frequent although ‘large’ events – the ones that would typically be considered catastrophic – are rarer. The direct costs associated with these events are huge, and developing countries bear the lion’s share of the burden, in terms of both casualties and direct economic damages. Determinants of initial disaster costs A spate of papers in the last several years has attempted to understand the determinants of the initial direct costs of disasters. When evaluating the determinants of disasters, most papers estimate a model of the form: The overwhelming majority of people affected and killed by natural disasters reside in developing countries, particularly in the Asia-Pacific region. Figures 3 and 4 show that 96 percent of the people killed and 99 percent of the people affected by natural disasters over the period 1970–2008 were in the Asia-Pacific region, Latin America and the Caribbean, or Africa, whereas the combined population share of these three regions is approximately 75 percent of the world population. Since DISit = + Xit + it . (1) where DISit is a measure of direct damages of a disaster in country i and time t; using measures of primary initial damage such as mortality, morbidity or capital losses. Xit is a vector of control variables of interest with each paper distinguishing different independent variables; typically Xit will include a measure of the disaster magnitude (i.e. Richter scale for earthFigure 2 quakes or wind speed for hurricanes) and variables that capINCIDENCE OF 'LARGE' NATURAL DISASTERS BY REGION 1970–2008 Total number of disasters by region ture the ‘vulnerability’ of the Over the mean – hidro-meteorological and geological country to disasters (i.e. the conNumber of events per country 1.0 ditions which increase the susAfrica Asia-Pacific C&E Europe W Europe LAC ceptibility of a country to the 0.8 impact of natural hazards). Instead of estimating these pan0.6 els, several papers aggregate the data across time and estimate 0.4 cross sections of country observations. 0.2 0.0 1970s 1980s 1990s 2000s Note: 2000s figures were adjusted to account for the fewer number of years in the decade. Source: Authors' calculations based on data from EM-DAT database. 27 One of the conditions that may increase a country’s susceptibility to the impact of natural disas- CESifo Forum 2/2010 Focus Figure 3 DISTRUBUTION OF FATALITIES BY NATURAL DISASTERS 1970–2008 All disasters are rare in less developed countries (see, for example, Freeman et al. 2003). Notwithstanding this, Kellenberg and Mobarak (2008) suggest a more nuanced, nonlinear relationship between economic LAC 8% development and vulnerability to natural disasters, with risk initially increasing with higher incomes as a result of changing behaviors, such as residents locating to more desirable but Africa 27% more dangerous sites near coasts and floodplains. Sadowski and Sutter (2005) provide some confirmation for this view by examining hurricanes in the United States and the ways in which better preparedness leads to higher residential coastal concentrations (where the risk from hurricane-associated wave surges is actually higher). C&E Europe 1% W Europe 3% North America 1% Asia-Pacific 60% Source: Authors' calculation based on data from EM-DAT database. ters is its level of economic development. Kahn (2005) estimates a version of equation (1) and concludes that while richer countries do not experience fewer or less severe natural disasters, their death toll is substantially lower. In 1990, a poor country (per capita GDP < 2000 US dollars) typically experienced 9.4 deaths per million people per year, while a richer country (per capita GDP > 14,000 US dollars) would have had only 1.8 deaths. This difference is most likely due to the greater amount of resources spent on prevention efforts and legal enforcement of mitigation rules (e.g. building codes). In particular, some of the policy interventions likely to ameliorate disaster impact, including land-use regulations, building codes and engineering interventions, Other papers focus on the political and institutional factors that affect disaster impact. A consistent finding of several studies (i.e. Kahn 2005; Skidmore and Toya 2007; Plümper and Neumayer 2009; Raschky 2008) is that better institutions – understood, for instance, as more stable democratic regimes or greater security of property rights – reduce disaster impact. Anbarci et al. (2005) elaborate on the political economy of disaster prevention. They conclude that inequality is important as a determinant of prevention efforts: more unequal societies tend to have fewer resources spent on prevention, Figure 4 as they are unable to resolve the DISTRIBUTION OF AFFECTED PEOPLE BY NATURAL DISASTERS collective action problem of 1970–2008 All disasters implementing preventive and mitigating measures. In a similar vein, Besley and Burgess (2002) C&E Europe 0.5% observe that flood impacts in W Europe 0.3% India are negatively correlated North America 0.4% with newspaper distribution; LAC 3% they attribute this effect to the fact that when circulation is Africa Asia-Pacific 6% 90% higher, politicians are more accountable and the government is more active in both preventing and mitigating the impacts of disasters. Eisensee and Strömberg (2007) reach similar concluSource: Authors' calculation based on data from EM-DAT database. CESifo Forum 2/2010 28 Focus sions regarding the response of US disaster aid to media reports. occurrence and sometimes a measure of the disaster magnitude – either using physical criteria such as wind-speed or earthquake magnitude or using measures of primary initial damage such as mortality, morbidity or capital losses. Xit is a vector of control variables that potentially affect Yit. Healy and Malhotra (2009) add to this literature by identifying the lack of political accountability for elected public officials in the United States as an explanation for inefficient allocation decisions. Voters reward candidates for post-disaster aid but not for well-funded prevention. Thus, the public sector under-invests in preventing these catastrophic events, but readily spends on post-disaster reconstruction and aid. In order to facilitate investigations into the interaction of the initial disaster impact with country-specific conditions, equations such as: Yit = + Xit + DISit + DISit Vit + Vit + it are used, where the Vit variables are the hypothesized interactions of disaster impact with macroeconomic, institutional or even demographic or geographic characteristics. In these specifications, the coefficients of interest are typically H and the vector E. In summary, thinking of natural disasters as economic phenomena and not as purely exogenous events has led researchers to seek to explain the fundamental structural determinants of the direct damages incurred from disasters. While the damage caused by disasters is naturally related to the physical intensity of the event, the literature has identified a series of economic, social, and political characteristics that also affect vulnerability. A by-product of this analysis, of course, is that these characteristics are therefore potentially amenable to policy action. Noy (2009) estimates a version of equation (3) and finds that natural disasters have an adverse shortrun impact on output dynamics. In addition he describes some of the structural and institutional details that make this negative effect worse. He concludes that countries with a higher literacy rate, better institutions, higher per capita income, higher degree of openness to trade, higher levels of government spending, more foreign exchange reserves, and higher levels of domestic credit but with less open capital accounts are better able to withstand the initial disaster shock and prevent further spillovers. Subsequently, Raddatz (2009) extends the investigation to the impact of various types of natural disasters on countries in different income groups. He concludes that smaller and poorer states are more vulnerable, especially to climatic events, and that most of the output cost of climatic events occurs during the year of the disaster. His evidence also suggests that, historically, aid flows have done little to attenuate the output consequences of climatic disasters. More recent work adds more detail by differentiating between different types of events and different economic sectors (e.g. Hochrainer 2009; Loayza et al. 2009). Cross-country studies of indirect impacts A disaster’s initial impact causes mortality, morbidity and loss of physical infrastructure (residential housing, roads, telecommunication and electricity networks as well as other infrastructure). These initial impacts are followed by consequent impacts on the economy (in terms of income, employment, sectoral composition of production, inflation, etc.). Macroeconomics generally distinguishes between the short run (usually up to three years) and the long run (anything beyond five years is typically considered the long run). In what follows we summarize the literature on the indirect economic effects of natural disasters. When evaluating the determinants of these consequent impacts of disasters in a regression framework, most recent papers estimate a model of the form: Yit = + Xit + DISit + it . (3) Several papers pursue similar investigations, but instead of relying on cross-country panels, they rely on more detailed panels at the firm, county, region, or the state level. Strobl (2008) uses differences in hurricane impact on coastal counties in the United States; Noy and Vu (2009) use provincial disaster data from Vietnam; and Leiter et al. (2009) uses European firm-level data. (2) where Yit is the measured consequent impact of interest (e.g. per capita GDP). DISit is a measure of the disaster’s immediate impact on country i at time t; it is sometimes a binary indicator of disaster 29 CESifo Forum 2/2010 Focus of disasters have been under-investigated. Rodriguez-Oreggia et al. (2009) and Mechler (2009) innovate by examining poverty and human development (the World Bank’s Human Development Index, HDI) and consumption, respectively, instead of the standard growth variables. The first paper shows a significant increase in poverty and a decline in the HDI in disaster-affected municipalities in Mexico; poverty increases by 1.5–3.6 percentage points. The second paper finds a small decrease in household consumption for low-income countries hit by disasters. In summary, the emerging consensus in the literature is that natural disasters have, on average, a negative impact on short-term economic growth. Yet, the channels that are responsible for this economic slowdown have not been described methodically at all. In investigations into the long-term impact of natural disasters, Skidmore and Toya (2002), and Noy and Nualsri (2007) reach diametrically opposite conclusions, with the former identifying expansionary and the latter contractionary disaster effects. More recently, Jaramillo (2009) finds qualified support for the Noy and Nualsri (2007) conclusion. Skidmore and Toya (2002) explain their somewhat counterintuitive finding by suggesting that disasters may be speeding up the Schumpeterian ‘creative destruction’ process that is at the heart of the development of market economies. Cuaresma et al. (2008) attempt to investigate this creative destruction hypothesis empirically by closely examining the evolution of R&D from foreign origin and how it is affected by catastrophic risk. They conclude that the creative destruction dynamic most likely only occurs in countries with high per capita income. For developing countries, disaster occurrence is associated with less knowledge spillover and a reduction in the amount of new technology being introduced. Hallegatte and Dumas (2009) critically examine the creative destruction hypothesis using a calibrated endogenous growth model. They conclude that disasters are never positive economic events and find that large disasters that overwhelm local reconstruction capacity may actually lead to poverty traps. The fiscal impact of natural disasters has also been under-investigated. On the expenditure side, publicly financed reconstruction costs may be very different than the original magnitude of destruction of older capital that occurred (Fengler et al. 2008). On the revenue side of the fiscal ledger, the impact of disasters on tax and other public revenue sources has also seldom been quantitatively examined. Using panel VAR methodology, Noy and Nualsri (2008) estimate the fiscal dynamics likely in an ‘average’ disaster; however, they acknowledge that the impacts of disasters on revenue and spending depend on the country-specific macroeconomic dynamics occurring following the disaster shock, the unique structure of revenue sources (income taxes, consumption taxes, custom dues, etc.), and large expenditures.4 Borensztein et al. (2009) utilize data from Belize to estimate in a calibrated model the likely fiscal insurance needs of a government. Barnichon (2008) calculates the optimal amount of international reserves for a country facing external disaster shocks using a similar methodology.5 Yang (2008) and Bluedorn (2005) investigate the evolution of capital flows following disasters, and both conclude that disasters generate some inflows (mostly international aid but also other types of flows like remittances). When compared to the short-run research, the literature on the long-run effects of natural disasters is scant and its results inconclusive. Cavallo, Galiani, Noy and Pantano (2010) provide the most recent attempt to bridge that gap. They implement a new methodological approach based on a comparative event study approach. The idea is to construct an appropriate counterfactual – i.e. what would have happened to the path of gross domestic product (GDP) of the affected country in the absence of a natural disaster and to assess the disaster’s impact by comparing the counterfactual to the actual path observed. The paper concludes that unless a natural disaster triggers a radical institutional change; it is unlikely to affect economic growth in the long run. Case studies of disaster impacts Several research projects have examined the economic impact of specific disaster events. Examples are the 1995 Kobe earthquake in Japan (Horwich 2000), the 1999 earthquake in Turkey (Selcuk and Yeldan 2001) and hurricane Katrina in 2005 (Hallegatte 2008; Vigdor 2008). Most of these are descriptive, though some also construct calibrated models that simulate the dynamics of the economy Almost all existing research focuses on domestic production (GDP) or on incomes; other impacts CESifo Forum 2/2010 4 5 30 Lis and Nickel (2009) examine similar questions. See also Cárdenas et al. (2007) and Mechler et al. (2009). Focus Besides policies that can reduce initial disaster damage, policies that can reduce the longer-term economic damage that disasters can wreak should also be contemplated. We have already observed that large disasters typically lead to reduced production and incomes, even if the exact distribution of these effects and their causes are not yet clear. Yet, as Freeman et al. (2003) observe, some of the other likely macroeconomic impacts of disasters may be a deteriorating trade balance, downward pressure on the exchange rate, and upward pressure on prices. How to deal with these likely dynamics is a policy question that also needs to be asked. after it is hit by the disaster and are therefore able to tentatively evaluate various policy responses. More recently, Cavallo, Powell and Becerra (2010) estimate Haiti’s economic damage to fixed assets, extractable natural resources and raw materials in the aftermath of the earthquake that struck the Caribbean country on 12 January 2010 – by far the most catastrophic natural disaster in modern records in terms of fatalities (relative to the country’s population). These analyses were typically written not very long after the event considered. In contrast, Coffman and Noy (2009) investigate the long-term impact of a 1992 hurricane on the economy of a Hawaiian island. In this case, the long horizon available, the unexpectedness of the event, and the existence of an ideal control group subjected to almost identical conditions but not the hurricane itself, enables them to argue that in spite of massive transfers, it took nearly seven years for the island’s economy to return to its pre-hurricane per capita income level. The hurricane also resulted in an out-migration of residents from which the island’s population has not fully recovered. The island permanently ‘lost’ about 15 percent of its population as a result of the hurricane, even though very few deaths were associated with the storm. Ex-ante insurance vs. ex-post disaster financing Kunreuther and Pauly (2009) survey some of the problems associated with ex-ante insurance coverage for large natural events: uncertainty with regard to the magnitude of potential loses, highly correlated risk among the insured, moral hazard that leads to excessive risk taking by the insured, and an adverse selection of insured parties caused by imperfect information. Their work also distinguishes between unknown disasters (those for which the likelihood and the distribution of probable magnitudes are at least partially known) and the unknowable (those for which no information is available). Even though natural disasters are typically not unknowable, these problems still clearly lead to under-insurance. In all recent disasters, even in ones that happened in heavily insured countries like the United States, only a relatively small portion of actual damages was insured. For example, hurricane Katrina led to insurance claims totaling 46.3 billion US dollars; while the estimated damage of the storm was 158.2 billion US dollars.7 Policies and disasters Perrow (2007), in a recent book on reducing catastrophic vulnerabilities in the United States, argues that public policy should focus on the need to ‘shrink’ the targets: lower population concentration in vulnerable (especially coastal) areas, and lower concentration of utilities and other infrastructure in disaster-prone locations. This advice stems from the awareness that more ex-post assistance to damaged communities generates a ‘Samaritan’s dilemma’, i.e. an increase in risk-taking and a reluctance to purchase insurance when taking into account the help that is likely to be provided should a disaster strike.6 However, apart from these ex-ante ‘shrink-the-target’ policies, many other ex-ante and ex-post policies that can alleviate or worsen the economic impact of disasters will necessarily be weighed before and after any large event. Insurance for the public sector, in order to secure the availability of reconstruction expenditures, is also an important policy question. There is broad consensus on the need to design fiscal management policies to resist the stress caused by the occurrence of disasters. Freeman et al. (2003) consider ways to create the necessary fiscal space to deal with catastrophic risk. Among various alternatives, they advocate treating natural disasters as a contingent liability for the national government (although they are skeptical about this suggestion’s practical feasibility, par7 Katrina insurance claim data are from Kunreuther and Pauly (2009), while the figure for total damages is taken from EM-DAT. The Congressional Budget Office estimates 70 to 130 billion US dollars as direct damages (excluding the cost of clean-up and repairs) for hurricanes Katrina and Rita. 6 This is similar to the moral hazard problem common in insurance markets. Raschky and Weck-Hannemann (2007) define it as ‘charity hazard’. 31 CESifo Forum 2/2010 Focus measures, such as purchasing market insurance, to offset some of the costs. Healy and Malhotra (2009) present evidence to support these conjectures even for the transparent and fairly stable political system of the United States. However, since governments are typically held accountable for their response to disasters, they have strong incentives to massively invest in ex-post assistance. ticularly in low-income countries). A more substantive initiative would be to implement an annual budgetary allocation to provide for natural disaster expenditure when needed. Mexico’s FONDEN (Fondo Nacional de Desastres Naturales) provides this kind of fiscal provisioning against the risk of natural disasters. But these measures, while prudent, amount to forms of self-insurance, which may be very costly in the case of an economy with substantial credit constraints. Of the three obstacles that deter the development of a catastrophic risk insurance market, the one related to market unavailability has been the most studied. The consensus is that governments in countries that are vulnerable to natural disasters appear to have only a limited set of options available to insure public finances against those risks, although progress is slowly being made. Hofman and Brukoff (2006), Cárdenas (2008), Andersen (2007), and Miller and Keipi (2005) survey some recent initiatives in this regard. The risk profile of catastrophe insurance claims differs from that of other insurance products. A company providing car insurance can easily diversify if it has many clients, since the volume of claims would then be highly predictable. In contrast, natural disasters are low-probability events that can cause extremely large losses when they occur and are thus not easily diversifiable in the same way as car insurance. This low level of diversification increases the cost of insurance. Its price is very volatile and fluctuates sharply every time there is a major catastrophic event that depletes reserves. Primary insurers need to transfer a considerable share of their catastrophe exposure to large reinsurers, and this increased reliance on reinsurers increases the cost of primary insurance, reducing its attractiveness and scope. Borensztein et al. (2009) argue that, in the case of developing countries exposed to large natural disasters, insurance – or debt contracts with insurancelike features – provides an attractive alternative to self-insurance. For example, they examine the vulnerability of Belize’s public finance to the occurrence of hurricanes and the potential impact of insurance instruments in reducing that vulnerability. Through numerical simulations they show that catastrophic risk insurance significantly improves Belize’s debt sustainability. Implementing disaster insurance in developing countries, however, faces three types of obstacles: paucity of markets, political resistance and inadequate institutional framework. For a number of reasons, markets have traditionally been insufficiently developed or simply nonexistent (more on this below). More recently, however, advances such as the development of parametric insurance policies have expanded the availability of coverage for countries and households (Cárdenas 2008).8 Political reluctance to engage in insurance purchase derives from the fact that there is little short-run benefit to be gained from entering into insurance contracts. Insurance involves costs today and a possible payoff in the undetermined future, when the government may have already changed hands. In addition to these incentive problems, disasters are widely considered as ‘acts of God’ (or natural phenomena), and politicians are not often blamed for their occurrence. Politicians and policy-makers therefore face very weak incentives for adopting relatively complex Private capital markets offer some complementary alternatives that may increase the availability of financing options as they continue to develop. The first capital market instrument linked to catastrophe risk (‘cat bonds’) was introduced in 1994 as a means for reinsurers to transfer some of their own risks to capital markets. Since then, their success has prompted governments and international institutions to explore their use as a mean of shielding government budgets from the impact of natural disasters (Andersen 2007). A catastrophe bond is a tradable instrument that facilitates the transfer of the risk of a catastrophic event to capital markets. In May 2006 and again in October 2009, the Mexican government obtained earthquake and hurricane insurance by 8 Instead of basing payments on an estimate of the damage suffered, parametric insurance contracts establish the payout as a function of the occurrence or intensity of certain natural phenomenon, as determined by a specialized agency such as the US National Hurricane Center. In this way, the transaction costs and uncertainty associated with insurance payments are considerably reduced. There is no need to verify and estimate damages, and no potential disagreement or litigation about the payouts. Moreover, the country has immediate access to the resources when the disaster takes place. CESifo Forum 2/2010 32 Focus Pakko (2007) argue that this result arises because the anti-inflationary justification for the contractionary policy will trump any desire to temporarily expand output. means of cat bonds and a direct purchase of coverage from international reinsurers.9 While these are encouraging developments, the private catastrophic risk market is still in its infancy. And even if the supply side of risk financing instruments becomes fully developed, important questions remain unanswered. For example: what is the optimal level of insurance that countries should purchase given the cost of insurance, the menu of alternative financing options (self-insurance, ex-post debt accumulation, foreign aid, etc.), and country characteristics (access to external credit, macroeconomic environment, institutional quality, etc.)? What is the appropriate institutional set-up that ensures the proper functioning of insurance schemes while minimizing moral hazard and adverse selection? What is the appropriate role of the government vis-à-vis the private sector in catastrophe insurance markets? These are still open questions that warrant further analysis. In possibly the only empirical paper on exchange rates and disasters, Ramcharan (2007) examines exchange rate policy and its affect on the damage inflicted by disasters. He finds consistent evidence that flexible exchange rate regimes provide a cushion that ameliorates the disaster’s negative impact on growth. Conclusions and remaining questions The economics of natural disasters are important. In order to facilitate further necessary research on this topic, we summarized the state of this literature. We believe that large gaps in this literature remain. The EM-DAT, the only internationally comparable and available data on disasters, collects only limited information on conceivably too many events.10 A more detailed accounting of the physical destruction wrought by large disasters and their human toll may prove to be very useful. We would especially like to be able to distinguish among residential damage, crop devastation, infrastructure damage and destruction of manufacturing facilities in order to better address many of the questions that remain unanswered. Monetary and exchange rate policy There has been very little research on the monetary aspects of disaster dynamics. As far as we are aware, even elementary questions such as, for example, the inflationary impact of a large disaster and the aid surge in its aftermath, have not been carefully examined. Open-economy questions, such as the impact of disasters on exchange rates (real or nominal) or the terms of trade have also not been examined empirically or analytically. While the literature we reviewed examines the short- and long-run effects of disasters and provides detailed, if inconclusive, accounting of post-disaster dynamics, it does not provide any description of the channels through which disasters cause these effects. An understanding of the channels of causality, in both the short and the long run, will surely enable more informed ex-post policymaking and possibly better ex-ante preparation and mitigation. Keen and Pakko (2007) construct a dynamic stochastic general equilibrium model calibrated for the US economy and the impact of Katrina, and evaluate the optimal response of monetary policy to a Katrina-like shock. They find, intriguingly, given public discussion and market perceptions at the time, that optimal monetary policy design should involve raising interest rates following a large disaster. They show that this result holds for both a Taylor-rule setting of interest rates, for optimal policy setting that replicates the efficient markets solution, and when the model includes nominal rigidities in both prices and wages. Keen and We have presented some provisional evidence that the extent of adverse impact is related to the ability to mobilize significant funding for reconstruction. We have also shown that poorer countries are likely to suffer more from future disasters, but these countries are also unlikely to be able to adopt the counter-cyclical fiscal policies that can pay for reconstruction. This constraint will make disasters’ 9 The cat bond issued in 2006 (for a total of 150 million US dollars in coverage) was the first to cover disaster risk in Latin America. The Mexican government has followed this initiative and introduced a new cat bond issue in October 2009 sponsored by FONDEN. This USD 290 million three year cat bond provides cover for earthquakes on the Pacific coast (140 million US dollars), Pacific hurricanes (100 million US dollars) and Atlantic hurricanes (50 million US dollars). Coverage will last for three years. 10 Since the threshold used to determine what constitutes a disaster is quite lenient, the dataset contains limited information on a large variety of events. 33 CESifo Forum 2/2010 Focus Coffman, M. and I. Noy (2009), Hurricane Iniki: Measuring the Long-Term Economic Impact of a Natural Disaster Using Synthetic Control, University of Hawaii Working Paper 09-05. adverse consequences more severe in poorer developing countries. A better-targeted reconstruction that is informed by the identified channels of transmission can potentially alleviate some of these resource constraints. Cuaresma, J. C., J. Hlouskova and M. Obersteiner (2008), “Natural Disasters as Creative Destruction? Evidence from Developing Countries”, Economic Inquiry 46, 214–226. Dercon, S. (2004), “Growth and Shocks: Evidence from Rural Ethiopia”, Journal of Development Economics 74, 309–329. A further significant lacuna in the current state of our knowledge is the absence of any agreement regarding the long-run effects of these disasters. Whether these disagreements have any substantial real relevance to policy decisions can only be assessed when the channels of transmission and propagation for these effects become more evident. ECLAC (2003), Handbook for Estimating the Socio-economic and Environmental Effects of Disasters, United Nations Economic Commission for Latin America and the Caribbean. Eisensee, T. and D. Strömberg (2007), “News Floods, News Droughts, and U.S. Disaster Relief”, Quarterly Journal of Economics 122, 693–728. Fengler, W., A. Ihsan and K. Kaiser (2008), Managing Post-Disaster Reconstruction Finance: International Experience in Public Financial Management, World Bank Policy Research Working Paper 4475. Freeman, P. K., M. Keen and M. Mani (2003), Dealing with Increased Risk of Natural Disasters: Challenges and Options, IMF Working Paper 03/197. We have not reviewed the micro-development literature that has been examining the ways in which households (typically rural households) deal with sudden disaster events (e.g. Townsend 1994; Udry 1994; Dercon 2004). Whether these shed light on the channels of transmission is a possibility that needs to be further explored. Nor have we reviewed the literature on aid allocations following disasters and their impact. This small literature was recently surveyed by Strömberg (2007) who also provides stylized facts on who gives relief, how much is given and who receives it. Hallegatte, S. (2008), “An Adaptive Regional Input-Output Model and Its Application to the Assessment of the Economic Cost of Katrina”, Risk Analysis 28, 779–799. Hallegatte, S. and P. Dumas (2009), “Can Natural Disasters Have Positive Consequences? Investigating the Role of Embodied Technical Change”, Ecological Economics 68, 777–786. Healy, A. and N. Malhotra (2009), “Myopic Voters and Natural Disaster Policy”, American Political Science Review 103, 387–406. Hochrainer, S. (2009), Assessing the Macroeconomic Impacts of Natural Disasters – Are There Any?, World Bank Policy Research Working Paper 4968. Hofman, D. and P. Brukoff (2006), Insuring Public Finances against Natural Disasters: A Survey of Options and Recent Initiatives, IMF Working Paper 06/199. Horwich, G. (2000), “Economic Lessons of the Kobe Earthquake”, Economic Development and Cultural Change 48, 521–542. References Jaramillo, C. R. H. (2009), Do Natural Disasters Have Long-Term Effects on Growth?, Universidad de los Andes, mimeo. Anbarci, N., M. Escaleras and C. A. Register (2005), “Earthquake Fatalities: The Interaction of Nature and Political Economy”, Journal of Public Economics 89, 1907–1933. Kahn M E. (2005), “The Death Toll from Natural Disasters: The Role of Income, Geography, and Institutions”, Review of Economics and Statistics 87, 271–284. Andersen, T. J. (2007), Developing and Supporting the Use of Disaster-Linked Financial Instruments: The Role of the IDB in Latin America and the Caribbean, Inter-American Development Bank, Working Group on Disaster Risk Financing. Keen, B. and M. Pakko (2007), Monetary Policy and Natural Disasters in a DSGE Model: How Should the Fed Have Responded to Hurricane Katrina?, St. Louis Fed Economics Working Paper 2007-25. Barrioneuvo, A. (2010), “Chile Braces for a Major Economic Slowdown”, New York Times, 15 March. Kellenberg, D. K. and A. M. Mobarak (2008), “Does Rising Income Increase or Decrease Damage Risk from Natural Disasters?”, Journal of Urban Economics 63, 788–802. Besley, T. and R. Burgess (2002), “The Political Economy of Government Responsiveness: Theory and Evidence from India”, Quarterly Journal of Economics 117, 1415–1451. Bluedorn, J. C. (2005), Hurricanes: Intertemporal Trade and Capital Shocks, Nuffield College Economics Paper 2005-W22. Kunreuther, H. and M. Pauly (2009), “Insuring against Catastrophes”, in: Diebold, F. X., N. J. Doherty and R. J. Herring (eds.), The Known, the Unknown and the Unknowable in Financial Risk Management, Princeton: Princeton University Press. Borensztein, E., E. Cavallo and P. Valenzuela (2009), “Debt Sustainability under Catastrophic Risk: The Case for Government Budget Insurance”, Risk Management and Insurance Review 12, 273–294. Leiter, A. M., H. Oberhofer and P. A. Raschky (2009), “Creative Disasters? Flooding Effects on Capital, Labor and Productivity within European Firms”, Environmental and Resource Economics 43, 333–350. Cárdenas, V., S. Hochrainer, R. Mechler, G. Pflug and J. LinneroothBayer (2007), “Sovereign Financial Disaster Risk Management: The Case of Mexico”, Environmental Hazards 7, 40–53 Loayza, N., E. Olaberría, J. Rigolini and L. Christiansen (2009), Natural Disasters and Growth-Going beyond the Averages, World Bank Policy Research Working Paper 4980. Cárdenas, V. (2008), Financiamiento de Riesgos Catastróficos Naturales, IADB Research Department Working Paper 663. Mechler, R. (2009), Disasters and Economic Welfare: Can National Savings Help Explain Post-disaster Changes in Consumption?, World Bank Policy Research Working Paper 4988. Cavallo, E., A. Powell and O. Becerra (2010), “Estimating the Direct Economic Damage of the Earthquake in Haiti”, Economic Journal (forthcoming). Mechler R., S. Hochrainer, A. Aaheim, Z. Kundzewicz, N. Lugeri, and M. Moriondo (2009), “A Risk Management Approach for Assessing Adaptation to Changing Flood and Drought Risks in Europe”, in: Hulme, M. and H. Neufeldt (eds.), Making Climate Change Work for Us: European Perspectives on Adaptation and Mitigation Strategies, Cambridge: Cambridge University Press, 200-229. Cavallo, E. and I. Noy (2009), The Economics of Natural Disasters: A Survey, IDB Working Paper 124. Cavallo, E., S. Galiani, I. Noy and J. Pantano (2010), Catastrophic Natural Disasters and Economic Growth, Inter-American Development Bank, mimeo. CESifo Forum 2/2010 Miller, S. and K. Keipi (2005), Strategies and Financial Instruments for Disaster Risk Management in Latin America and the 34 Focus Caribbean, Inter-American Development Bank Document ENV145. Noy, I. (2009), “The Macroeconomic Consequences of Disasters”, Journal of Development Economics 88, 221–231. Noy, I. and A. Nualsri (2007), What Do Exogenous Shocks Tell Us about Growth Theories?, University of Hawaii Working Paper 07–28. Noy, I. and A. Nualsri (2008), Fiscal Storms: Public Spending and Revenues in the Aftermath of Natural Disasters, University of Hawaii Working Paper 08-09. Noy, I. and T. Vu (2009), “The Economics of Natural Disasters in Vietnam”, Journal of Asian Economics (forthcoming). Pelling, M., A. Özerdem and S. Barakat (2002), “The Macroeconomic Impact of Disasters”, Progress in Development Studies 2, 283–305. Perrow, C. (2007), The Next Catastrophe: Reducing Our Vulnerabilities to Natural, Industrial, and Terrorist Disasters, Princeton: Princeton University Press. Pielke, Jr., R. A., J. Gratz, C. W. Landsea, D. Collins, M. Saunders and R. Musulin (2008), “Normalized Hurricane Damages in the United States: 1900-2005”, Natural Hazards Review 9, 29–42. Plümper, T. and E. Neumayer (2009), “Famine Mortality, Rational Political Inactivity, and International Food Aid”, World Development 37, 50–61. Raddatz C. (2009), The Wrath of God: Macroeconomic Costs of Natural Disasters, World Bank Policy Research Working Paper 5039. Ramcharan, R. (2007), “Does the Exchange Rate Regime Matter for Real Shocks? Evidence from Windstorms and Earthquakes”, Journal of International Economics 73, 31–47. Raschky, P. A. (2008), “Institutions and the Losses from Natural Disasters”, Natural Hazards Earth Systems Science 8, 627–634. Raschky, P. A. and H. Weck-Hannemann (2007), “Charity Hazard – A Real Hazard to Natural Disaster Insurance?”, Environmental Hazards 7, 321–329. Rodriguez-Oreggia, E., A. de la Fuente and R. de la Torre (2009), The Impact of Natural Disasters on Human Development and Poverty at the Municipal Level in Mexico, mimeo. Sadowski, N. C. and D. Sutter (2005), “Hurricane Fatalities and Hurricane Damages: Are Safer Hurricanes More Damaging?”, Southern Economic Journal 72, 422–432. Selcuk, F. and E. Yeldan (2001), “On the Macroeconomic Impact of the August 1999 Earthquake in Turkey: A First Assessment”, Applied Economics Letters 8, 483–488. Sen, A. (1981), Poverty and Famines: An Essay on Entitlement and Deprivation, Oxford: Oxford University Press. Skidmore, M. and H. Toya (2002), “Do Natural Disasters Promote Long-run Growth?”, Economic Inquiry 40, 664–687. Skidmore M. and H. Toya (2007), “Economic Development and the Impacts of Natural Disasters”, Economic Letters 94, 20-25. Strobl, E. (2008), The Economic Growth Impact of Hurricanes: Evidence from U.S. Coastal Counties, IZA Discussion Papers 3619. Strömberg, D. (2007), “Natural Disasters, Economic Development, and Humanitarian Aid”, Journal of Economic Perspectives 21, 199–222. Townsend R. (1994), “Risk and Insurance in Village India”, Econometrica 62, 539–591. Tschoegl, L. (2006), An Analytical Review of Selected Data Sets on Natural Disasters and Impacts, Paper Prepared for the UNDP/CRED Workshop on Improving Compilation of Reliable Data on Disaster Occurrence and Impact, Bangkok, 2-4 April 2006. Udry, C. (1994), “Risk and Saving in Northern Nigeria”, American Economic Review 85, 1287–1300. Vigdor, J. (2008), “The Economic Aftermath of Hurricane Katrina”, Journal of Economic Perspectives 22, 135–154. Yang, D. (2008), “Coping With Disaster: The Impact of Hurricanes on International Financial Flows”, B.E. Journal of Economic Analysis and Policy 8, 1–43. 35 CESifo Forum 2/2010 Focus begun to tap these opportunities – indeed, only 3 percent of potential losses in developing countries are insured compared to 45 percent in advanced countries – and more frequent and intensive use of insurance markets may be desirable. This article discusses available insurance modalities and a few promising initiatives in developing and emerging market countries, along with some key challenges for the insurance community, donors and international financial institutions. MITIGATING THE IMPACT OF NATURAL DISASTERS ON PUBLIC FINANCES DAVID HOFMAN* In September 2004, the small Caribbean island of Grenada was severely hit by hurricane Ivan. The category 3 windstorm, afterwards nicknamed ‘Ivan the Terrible’, caused an estimated 200 percent of GDP in damage on the island. The disruptive impact of the storm caused the local economy to contract sharply, while at the same time public spending needs soared. Faced with the overwhelming costs of the event, soon after the storm, the Grenadian authorities saw themselves forced to approach their creditors for a voluntary restructuring of the island’s public debts. Preparing for disaster Although natural disasters have taken their toll throughout history, there are strong indications that they have become more frequent and severe in recent decades and that this upward trend is set to continue in the period ahead. In part, this trend can be explained by growing urbanization which has led to an increasing concentration of population in vulnerable areas (see Freeman et al. 2003). For another part, it reflects changes in weather patterns – possibly associated with the rise in global surface temperatures – which appear to have caused an increase in the frequency and intensity of adverse weather events such as hurricanes, floods and droughts (see e.g. Webster et al. 2005). With more frequent and intense natural disasters affecting increasingly densely populated areas, their costs have risen strongly over time. Natural disasters (such as catastrophic hurricanes) can have far-reaching negative effects on macroeconomic conditions in affected countries, including on their public finances. And this is especially the case in developing and smaller countries. Developing countries are often unable to marshal the substantial resources needed in the aftermath of a major disaster. Smaller countries (such as the small island states in the Caribbean and the South Pacific) are typically unable to achieve the geographic redistribution of risk available to larger countries, which can subsidize the costs associated with catastrophic events by using revenues from unaffected regions. In these countries, therefore, the large costs associated with natural disasters can quickly diminish the public sector’s ability to respond effectively. Natural disasters can put considerable pressure on public finances. In the wake of a disaster, governments typically face a weakened revenue base while pressures on spending are likely to soar. Such pressures could come from short-term disaster relief operations, the need to restore key public infrastructure, or from them provision of financial support to the private sector (for example, a government will often be called upon – or even be required by law-to restore damaged or destroyed housing). Catastrophe insurance markets, however, increasingly offer opportunities for the transfer of such risks. Thus far, developing countries have only tepidly * International Monetary Fund. This article is an update based on an earlier paper written with Patricia Brukoff (2006), Insuring Public Finances Against Natural Disasters – A Survey of Options and Recent Initiatives, IMF Working Paper WP/06/199. The views expressed in this article are those of the author and should not be attributed to the IMF, its Executive Board, or its management. CESifo Forum 2/2010 To meet immediate expenditure needs, developing disaster-prone countries often rely on ex post financing in the form of grants and loans from external 36 Focus Table 1 Large natural catastrophes and estimated losses 1950–2008 (billion US dollars, constant 2008 prices) 1950–59 1960–69 1970–79 Number of events 20 27 47 Overall losses 53.6 93.3 161.7 Average loss 2.7 3.5 3.4 Sources: Munich Re; Guy Carpenter & Co.; author’s calculation. donors. Relying on such flows, however, has considerable disadvantages, including because of uncertainty about financing following a disaster. It takes considerable time before donor resources are committed and even more time before the funds are actually made available. And there may be ‘competition’ for donor resources from other countries with relief needs at the same time. Indeed, it is often found that donor contributions following disasters fall short of actual needs (see e.g. Wong et al. 2009). Another disadvantage is that to the extent that help comes in the form of loans, it could add to already high public debt stocks. 1980–89 63 262.9 4.2 1990–99 91 778.3 8.6 2000–08 37 620.6 16.8 Dilemma. With predictable insurance payouts, in contrast, countries retain incentives for fiscal provisioning and preventive structural policies. Choosing the right insurance Governments that seek to shield their public finances from the impact of natural disasters by means of insurance face a few key choices. A first choice for governments pertains to who should be the insurance taker and what should be insured? The inability of the private sector to cope with the impact of a disaster is often a key source of budgetary pressures following a disaster. Therefore, one useful strategy involves promoting, facilitating or subsidizing the purchase of insurance by private sector parties (for instance, property insurance for homeowners or crop insurance for farmers) in order to limit the government’s contingent liabilities. Alternatively, or as a complementary strategy, a government can also seek to insure itself directly against disaster-related outlays, or budgetary pressures more broadly, in a lump-sum manner. Providing for disasters by means of insurance, in contrast, secures at least some of the needed resources in advance. Such insurance is not a remote theoretical prospect. The experience in high-income countries, in particular the United States and Japan, has shown that many natural perils are insurable, and markets for disaster risk insurance are well established there. Given trends in catastrophe insurance pricing and the available resources in the countries involved, donor contributions will often be needed, ex ante, to contribute to the premia. But such a shift from ex post to ex ante donor financing still has important benefits for both parties. From the perspective of the recipient it introduces an important element of predictability into post-disaster public finance conditions since the available amount of insurance financing would be known in advance. From the perspective of donors it helps smooth cash flow by converting ‘if and when’ outlays into predictable insurance premia. It might also give donors greater leverage over preventive policies (such as building codes). Last, but not least, it reduces the perverse incentives that recipient countries face in their dependence on postevent donor financing. Indeed, vulnerable countries currently often have little incentive to set aside fiscal savings or take preventive measures for natural disasters, since this might reduce donor support following an adverse event – the so-called Samaritan’s A second key choice for governments regards the degree to which the risk is transferred and the entity that ultimately comes to bear the risk. The various modalities differ crucially in the size of the pool of risk capital among which the risk is spread. There are several options: • Pooling. At one end of the spectrum, countries can pool their disaster risk with other countries – thus creating a form of cooperative insurance. Such a mechanism can be effective when the number of countries sharing the risk is large enough, and the correlation of risks between participating countries is low. • Commercial insurance and reinsurance. Insurance companies, however, may be better placed to absorb risks because they typically maintain a well-diversified portfolio of risks. Further, second tier insurance is available through reinsurers, who act as the insurance 37 CESifo Forum 2/2010 Focus ed on the basis of actual and verified losses. The key advantage of this type of trigger is that the insurance payout is typically close to the actual loss incurred. There are, however, also important disadvantages, such as time-consuming claims settlement and moral hazard issues. The use of alternative parametric insurance triggers can alleviate some of these disadvantages, while also offering greater scope for the standardization of contracts and thereby facilitating the transfer of risks to capital markets. companies of the insurers, allowing the latter to pass on risks that exceed their absorptive capacity. In fact, because of its peculiar loss-distribution – with low payouts in most years, but sudden spikes in disaster years – a large portion of catastrophic risk ends up with reinsurers. However, reinsurers, too, have at times had difficulty coping with peaks in insurance claims, which is reflected in a high volatility of reinsurance premia (for instance, insurance premiums, as measured by the ‘rate-on-line’, rose sharply following costly disasters such as hurricane Andrew in 1992 and hurricane Katrina in 2005). • Capital markets. There where risks are testing reinsurers’ capacity, capital markets are progressively providing risk capital that can be tapped by both reinsurers and countries themselves through the use of insurance-linked securities.This is an encouraging development because by allocating risks – and potential losses – efficiently over a large pool of investors, insurance through capital markets offers promising prospects of reducing the premium volatility associated with traditional reinsurance. Parametric insurance uses objective variables that are exogenous to the policy holder but have a strong correlation with losses against which insurance is desired. The payout is determined upfront and is conditional on the chosen exogenous variable reaching a preset threshold within a certain time period. An example of parametric insurance are so-called weather derivatives, which link payouts to the occurrence of a certain weather event (such as wind speeds exceeding, or precipitation falling short of, certain pre-agreed thresholds). Parametric insurance could be seen as essentially an informed bet against the elements. As such, parametric insurance contracts are kindred to the options and futures contracts traded on financial markets and distinct from traditional indemnity-based insurance. Advances in catastrophe insurance The possibilities for passing risk to capital markets have been greatly enhanced by two related innovations: the use of parametric insurance triggers and the growth of the ‘cat bond’ market. In contrast to indemnity-based insurance, parametric insurance tends to have a benign incentives structure. Since payout and actual damage are not directly linked, moral hazard is limited and the insured party retains incentives for prevention and mitigation of risks. Parametric insurance – keeping it simple Another key advantage of parametric insurance contracts is their relative simplicity and transparency. The use of an exogenous variable greatly reduces the information Figure 1 asymmetries associated with traditional insurance and eliminates CATASTROPHE INSURANCE RATE-ON-LINE: 1990 TO 2009 the need for an assessment or 1990 = 100 450 verification of actual damage. 400 Consequently, transaction costs 350 are relatively low. A related advantage is the potential speed of 300 payout, which, in contrast to 250 indemnity-based insurance, can 200 be a matter of weeks or even days 150 after the contract is triggered. Traditionally, insurance has relied on indemnitybased triggers where insurance payouts are calibrat- 100 50 0 1990 1992 1994 1996 1998 2000 2002 2004 Source: Guy Carpenter & Co. CESifo Forum 2/2010 38 2006 2008 Since parametric insurance uses objective and often publicly available information, it also allows for contract standardization, Focus thereby facilitating risk transfer to international capital markets. Indeed, as more sophisticated systems (including satellite imagery) become available to monitor and measure natural events, parametric insurance contracts have the potential to become increasingly palatable to international capital markets. Moreover, such technological advances also increasingly facilitate the reliable monitoring of events in developing countries, thereby expanding their possibilities to successfully tap international insurance and capital markets. Figure 3 STRUCTURAL OVERVIEW OF A CAT BOND ISSUANCE A. Transaction Principal Premium Special Purpose Sponsor Sponsor Vehicle (SPV) Investors Coupon Coupon B. Possible end positions Insurance Coverage Sponsor Sponsor Principal Special Purpose Vehicle (SPV) (if catastrophe occurs) Investors (if no no catastrophe catastrophe (if occurs) Source: Adapted from Chacko et al. (2004) (2004). issuance has suffered from the global financial crisis, the market has been recovering swiftly over the past year. The main inherent disadvantage of parametric insurance triggers is the so-called basis risk: since there is no relation (at least ex post) between the predetermined payout and actual damage, the insurance claim may either exceed or undershoot the actual loss. Refinements in loss modeling, however, can potentially reduce basis risk. The typical cat bond issue involves the establishment, by the ‘sponsor’ (usually a reinsurance company but conceivably another entity), of a Special Purpose Vehicle (SPV). The task of this SPV is to issue the bond and to invest the capital in low-risk securities Cat bonds – tapping a wider market (such as treasuries). The returns on these investments are paid to the holders of the bonds, together with a A key example of an innovative instrument which premium that is paid by the sponsor (see Figure 3, emergence was facilitated by the use of parametric panel A). If the bonds mature without a prespecified insurance triggers is the catastrophe (or ‘cat’) bond. event (i.e. a narrowly defined type of catastrophe) Cat bonds have been an important vehicle for the having taken place, the principal is repaid to the transfer of catastrophe risks to capital markets. investors, similar to regular bonds (panel B). Indeed, the market for cat bonds has grown rapidly However, in the event that the prespecified catastrosince its inception in the second half of 1990s, and phe does occur within the life time of the bond, while – like many other financial instruments – investors agree to forfeit part or all of their claims, and the SPV Figure 2 will pay out to the sponsor instead. The catastrophe risk is CATASTROPHE BOND ISSUANCE: 1997 TO 2009 Volume thus transferred to the investors. million US dollars Number of issues 40 8 000 35 7 000 30 6 000 25 5 000 20 4 000 15 3 000 10 2 000 5 1 000 0 0 1997 1999 2001 2003 2005 2007 Source: Guy Carpenter & Co. 39 2009 Because assets and liabilities related to the bond issue are allocated with the SPV, cat bonds function as a pure insurance arrangement for the sponsor, and are not debt creating. The key advantage of cat bonds is that it allows for the break up and transfer of risks to a large group of investors in cases where insurance with a single counter party might not be CESifo Forum 2/2010 Focus against specific outlays, governments can seek general, lump-sum support that is conditional on a certain disaster taking place. Such funds could then be spent at the government’s discretion. Schemes of this type have been gaining some popularity in recent years. For instance, the World Bank has implemented a scheme along these lines in the Caribbean from May 2007. This ‘Caribbean Catastrophe Risk Insurance Facility (CCRIF)’, is the first multi-country risk pool in the world and helps insure 16 islands in the region – including Grenada, which was mentioned above – to insure against the risk of earthquakes and hurricanes, using parametric insurance triggers. The pool is funded by resources from participating governments and contributions from donors, while risks that exceed the capacity of the pool are being transferred to reinsurance markets. This two-tier structure allows the facility to cope with large losses and also provides participating governments with insurance coverage at about half the price they would have paid if they had purchased insurance individually (Wong et al. 2009). The Caribbean facility has so far proven successful and it has made several payouts over the past 3 years. Most recently, a payout was made to Haiti, which received 8 million US dollars from the fund within two weeks after a devastating earthquake hit the island in early 2010. Based on the positive experiences, the CCRIF is currently considering the possibility of insuring more frequent events and widening its coverage to include flood coverage and agricultural damage, while the World Bank is preparing a similar initiative for Pacific island countries. available or be more expensive. From the perspective of the investor, cat bonds yield above-market rates (since a premium is paid on top of the lowrisk/risk-free return), while offering a unique opportunity for portfolio diversification as a catastrophe risks tend to be uncorrelated with trends in stock or bond markets. Key initiatives in low and middle-income countries In recent years, there have been several promising initiatives in low- and middle-income countries, some of which have benefitted from the recent innovations in insurance. The initiatives can be divided into three broad categories: • Schemes aimed at limiting government contingent liabilities. These schemes target the private sector so as to reduce the need for government support following disasters. A good example is the Turkish Catastrophe Insurance Pool (TCIP), which is supported by the World Bank and pools and reinsures risks from a compulsory earthquake insurance scheme for private home-owners. Similarly, there have been World Bank and International Finance Corporation (IFC) supported projects that helped offer drought insurance to individual farmers in several low-income countries, including India and Malawi. • Schemes to provide resources for disaster relief and reconstruction. With these schemes, the government seeks to secure resources to cover relief operations in the event of a catastrophe. An example is the 2006 World Food Program (WFP) project in Ethiopia that used a weather derivative to ensure resources in the case of a catastrophic drought. In this case, the insurance money was designed to be spent by the government and the WFP was responsible to relieve the plight of affected farmers, while donors contribute to the premia. Another example is FONDEN in Mexico. This fund started as a means of earmarking resources for future disaster relief, to be spent by local governments on an as-needed basis. In May 2006, the fund got on more secure financial footing when Mexico became the first middle-income country to issue a cat bond to secure sufficient funds in the event of a major earthquake, with a verifiable parametric trigger. • Schemes to provide lump sum support to the government budget. Instead of purchasing insurance CESifo Forum 2/2010 Amid these encouraging initiatives, the key area where exploring is still in its early stages, is the transfer of risk to capital markets. Thus far, only Mexico has significant experience with tapping the international capital market by means of cat bonds. Two promising new World Bank projects, however, are likely to enable a broader range of low and middle income countries to tap a range of financial market counterparties and capital markets. • Catastrophe bond issuance platform. Building on Mexico’s experience, in October 2009, the World Bank launched the ‘MultiCat program’, a catastrophe bond issuance platform that will make it easier for governments and public entities in low 40 Focus ricane Katrina in 2005 – have been raising doubts about the way forward. Indeed, the insurance industry has been paying increasing attention to climate change and its implications for their risk modeling and risk management. The increasing risk of natural disasters, or persistent uncertainty with respect to the effects of climate change, may have an adverse effect on catastrophe insurance availability and premia going forward. income countries to access the cat bond market. Under the platform, the World Bank will act as arranger for the transactions and all bonds issued will carry the common MultiCat brand name and benefit from a common legal structure and documentation. This standardization reduces the set up costs to the issuing countries, and also makes the bonds more palatable to investors. • Weather derivative intermediation. In 2008, the World Bank has also begun to offer intermediation services to low-income countries that want to use weather derivatives. Here, the World Bank intermediates the risk of weather-based catastrophes by entering into mirroring transactions with the client country and a financial market counterpart. In the event of a severe weather event, the country would receive a payout from the World Bank, the total value of which would be based on a parametric index used as an estimate of the financial impact. The payout would be funded with the payout that the World Bank would receive from the financial market counterpart in the mirroring transaction. Malawi has been the first country to use this new facility, purchasing insurance cover against a drought-related shortfall in maize production, with Swiss Re as the insurance provider. Malawi was sponsored by Britain (DFID) to cover the costs of the insurance premium. A second source of uncertainty lies with the appetite for catastrophe risk in international capital markets. Up to the global financial crisis that broke in the fall of 2008, issuers have had relatively few problems in selling the innovative and relatively risky cat bonds to international investors seeking risk diversification. But the success of these new (and relatively low volume) instruments was spurred by favorable global liquidity conditions and a quest for yield on the part of investors, which led to a gradual decline in risk premia. Although early indications of recovery in the cat bond market are encouraging, it remains to be seen whether a similar favorable environment will prevail in the years ahead. These issues aside, affordability of catastrophe insurance for developing countries will remain an issue even under more favorable scenarios. Indeed, in light of the frequent high cost and volatility in insurance premia, the viability of catastrophe insurance mechanisms for developing countries may crucially depend on the contribution of donors, particularly in the lowincome context. Mobilizing further, and continued, donor support for disaster insurance schemes is therefore another challenge. While donor involvement so far is encouraging, it is uncertain whether there is a willingness to increasingly engage in structural support arrangements at the expense of post-disaster relief. The latter remains the norm and may offer greater benefits in terms of public recognition and in satisfying the urge to show support after a catastrophe has taken place. Thus, further developing sustainable models for collaboration among donors and recipients in disaster insurance schemes remains key. Weathering storms on the horizon Transferring risks to international capital markets has substantial benefits because it greatly expands the pool of insurance capital available to developing countries, and significant progress has been made in recent years. Nonetheless, there remain a number of uncertainties associated with the insurance of natural disaster risk. Importantly, even though there are well-established markets for insuring certain catastrophe risks, it cannot be taken for granted that all natural disaster risks can be insured in the market at an affordable cost. Specifically, the catastrophe insurance market faces two sources of uncertainty: the first is climate change and its possible effect on the frequency and intensity of natural disasters. While the insurance industry has coped so far, the record insurance losses in recent years – including high losses from a multitude of events in 2008 and the record-breaking USD 45 billion losses from hur- The potential benefits of a change from ex post to ex ante insurance financing are considerable. While natural disasters are likely to remain a painful fact of life, such a shift would at least help reduce the second round fiscal effects, thereby limiting economic disruption and facilitating faster recovery, while also providing better incentives for the adoption of preventive policies. 41 CESifo Forum 2/2010 Focus References Freeman, P., M. Keen and M. Mani (2003), Dealing with Increased Risk of Disasters: Challenges and Options, IMF Working Paper WP/03/197. Heller, P. and M. Mani (2002), “Adapting to Climate Change”, Finance and Development 39, 29–31. Rasmussen, T. (2006), “Natural Disasters and Their Macroeconomic Implications”, in: Ratna Sahay et al. (eds.), The Caribbean – From Vulnerability to Sustained Growth, Washington DC: IMF, 181–203. Webster, P. J., G. J. Holland, J. A. Curry and H. R. Chang (2005), “Changes in Tropical Cyclone Number, Duration, and Intensity in a Warming Environment”, Science 309, 1844–1846. Wong, Y. C., A. Lemus and N. Wagner (2009), Insuring Against Natural Disasters in the Caribbean, IMF Country Report 09/176, Washington DC: IMF. CESifo Forum 2/2010 42 Focus caused by natural disasters for many countries for years 1972 through 2005. Extensive information on disasters that has been underutilized by economists is available from the Office of US Foreign Disaster Assistance/Center for Research on the Epidemiology of Disasters (OFDA/CRED). We use these data to estimate the relationship between fiscal decentralization and the effects of natural disasters, while controlling for a range of other factors found to be important determinants of disasterinduced human fatalities. NATURAL DISASTER IMPACTS AND FISCAL DECENTRALIZATION HIDEKI TOYA* AND MARK SKIDMORE ** Introduction It is generally understood that as a country develops, it devotes greater resources to safety, including implementing precautionary measures designed to reduce the impacts of natural disasters. The recent onslaught of hurricanes/typhoons and earthquakes in the Caribbean and Asia along with the accompanying devastating human and economic impacts has spurred interest in the factors that determine the patterns and types of resulting losses. Previous research (Anbarci, Escalaras and Register 2005; Kahn 2005; Toya and Skidmore 2007; Kellenberg and Mobarak 2008) demonstrates that there is a distinguishable and predictable pattern between losses from natural disaster events and economic development. Paralleling efforts to spur development around the world has been a growing interest among policymakers and economists in fiscal decentralization.1 While the existing research on the impacts of decentralization are generally positive in terms of public service delivery, as pointed out by Bardham (2002) existing studies are ‘largely descriptive, not analytical, and often suggest correlations rather than causal processes’. Because government plays such vital roles in both the preparation for and response to disaster events, and because naturally occurring disaster events are not systematically related to levels of development (Kahn 2005), natural disasters may provide an opportunity to evaluate the effectiveness of governmental structure in protecting human life. In this study, we merge fiscal, economic, demographic and geographic data with information on total deaths To preview the main finding, our analysis shows that while controlling for a variety of factors, nations with governments that are more decentralized experience fewer disaster-related deaths. However, we also document important interrelationships between decentralization, educational attainment and disaster impacts. Places with more decentralized government systems also tend to have higher average educational attainment. The analysis suggests that the one route by which decentralization reduces disaster-induced deaths is through human capital. Generally, our findings suggest that decentralized governments are more effective in disaster preparations and/or responses relative to more centralized governmental systems. The following section provides a review of the literature and a discussion of fiscal decentralization and disaster mitigation. This section also offers a theoretical discussion of the effects of fiscal decentralization on disaster mitigation decisions. In sections three and four we present the empirical framework and analysis, respectively. Section five concludes. Literature review and theoretical discussion We review two relevant strands of literature: the research on fiscal decentralization and the economics of natural disasters. In these contexts, we further limit our review to those studies that examine the performance of fiscal decentralization and research on the role of economic development in mitigating disaster-related fatalities. * Nagoya City University. ** Michigan State University. 1 See Bardham (2002) for a review of the extensive literature on fiscal federalism in developing countries. 43 CESifo Forum 2/2010 Focus Fiscal decentralization Another related line of research has focused on the role of decentralization in promoting economic growth. The limited number of existing studies on this topic provides mixed evidence. Davoodi and Zou (1998) use a panel data set of 46 countries over the 1970-1989 period to examine the relationship between fiscal decentralization and growth, reporting evidence of a negative relationship between decentralization and growth for developing countries. They attribute this finding to the potential inefficient use of resources at the local level in developing countries. Xie, Zou and Davoodi (1999) look at again at this same issue only in the context of the United States. This analysis suggests that existing spending shares of state and local governments are consistent with growth maximization, and that further efforts at decentralization in the United States might be counterproductive. Akai and Sakata (2002) use data for the 50 US states over the 1992 through 1996 period to determine the relationship between several measures of decentralization and growth. In contrast to previous work, they report some evidence that decentralization may encourage economic growth. Thornton (2007) uses data from OECD countries to reexamine this issue, finding decentralization has no statistically significant impact on growth. In terms of theory, Brueckner (2006) develops an endogenous growth model to more carefully explore the connection between decentralization and economic growth. The model offers a formal analysis to show that more units of government allows for differing levels of public goods across jurisdictions in order to better meet differing community demands for public services. This creates an incentive to increase savings and investment in human capital, and this in turn generates a higher rate of economic growth. Of special relevance to the present study is the recent work of Arze del Granado, MartinezVasquez and McNab (2005), which provides empirical support for Brueckner’s conjecture by showing that decentralization may increase public education spending. This line of research is relevant to the issue of the role of decentralization in protecting human life for two reasons. First, it demonstrates that there is an important interconnection between decentralization and economic well-being. This suggests that if we are to isolate the effect of decentralization on preserving human life, we will want to control for measures of economic development. Second, there may important interactions between decentralization and educational attainment that require consideration in assessing the determinants of disaster-induced fatalities. Of the substantial literature on fiscal decentralization there is a strand that focuses on assessing the effectiveness of fiscal decentralization efforts in transition and developing economies. As discussed in Bardham (2002), even though decentralization efforts are occurring in a number of countries around the world, quantitative evidence of effectiveness is limited. Studies that do exist utilize several methodologies, but generally attempt to evaluate government service delivery in a ‘beforeafter’ framework. For example, Santos (1998) evaluated the decentralization initiative in Bolivia, finding that access to basic sanitation services (water and sewage) and utilization of elementary and secondary schools increased two-fold following decentralization. Alderman (1998) utilized household survey data to evaluate a social assistance program in Albania that was decentralized in 1995. He finds evidence of modest gains in efficiency and cost-effectiveness as a result of decentralization. Azfar, Kähnkönen and Meagher (2000) surveyed households and government officials in the Philippines to ascertain the matching of public investment priorities between government officials and local residents. They find that the stated priorities of municipal authorities more closely matched those of local residents than did provincial authorities, suggesting that decentralization may improve public investment decision-making. The 1994 World Development Report on Infrastructure cited cases of cost savings as well as quality improvement in public infrastructure projects following the transfer of management responsibility to local authorities. The study, which included data from 42 countries, cited numerous cases in which decentralized governments were more effective in providing infrastructure such as roads and water supply at a lower cost. These and a number of other studies suggest that decentralized governmental systems provide public services more efficiently and at a lower cost than more centralized systems. However, Bardham (2002) asserts that many of the studies are unable to identify causal processes. Further, in our review of this literature we found no studies that utilized cross-country data to evaluate the effectiveness of decentralization. The lack of crosscountry analysis is largely due the unavailability of comparable data on costs and effectiveness of government activity. CESifo Forum 2/2010 44 Focus designed to reduce the risk of the most hazardous factors in the environment. In the context of the even more specific literature on disaster management and response, Wildasin (2008) points out that the particular institutional structures within fiscal federalism may create incentives for local governments to limit financial and policy preparations. In the United States, for example, much of the incidence of local disasters is shifted to the rest of society through intergovernmental transfers. Wildasin argues that it may be necessary for central government to implement new forms of federal control of subnational governments, including requirements for the creation of ‘rainy day’ funds targeted at disaster management/recovery. Effective public-sector ex ante avoidance measures as well as ex post disaster response requires coordination and sharing of financial costs between national and subnational governments. Subnational governments are perceived to have a comparative advantage over national governments in the management of land use, economic development, safety and other regionally-based policies that affect disaster risk. On the other hand, there is a role for national governments in setting certain disaster-management policies. This suggests that there may be an optimal mix of responsibility between national and subnational governments in disaster management activity, and more generally in the devolution of public responsibilities. The decision as to which of the existing hazards should be mitigated depends on the marginal benefit and marginal cost of hazard reduction for each of the potential hazards. For example, in the United States reducing malaria, measles and small pox were high priority issues in the early to mid twentieth century because they were prime killers at the time. As these diseases were mitigated via vaccines and other means, other lower priority hazards came to the forefront: cancer and heart disease became high priority research issues much later. The implementation of seat-belt laws, child seats and other improvements in automobile safety also occurred much later. This sequence of hazard reducing policy implementation is closely related the level of economic development. As income rises, it becomes possible to reduce risks, and of course the most dangerous hazards ought to be mitigated first. We can place risk from natural events within this continuum. The implementation of warning systems, building codes, emergency response plans, etc. will only occur when income levels are high enough to support them and when other more hazardous factors have first been addressed. While both developed and developing countries have some degree of disaster protection initiated by the public sector, the degree to which economic agents benefit from and are able to comply with and employ their own established safety standards depends on the level of income. For example, whether or not new construction complies with code depends on the costs of compliance relative to income. In addition, at some threshold level of income private disaster protection emerges (Horwich 2000) – e.g. emergency and risk management departments in commercial and other enterprises, private disaster consultants, disaster property insurances, including self-insurance through private saving (Skidmore 2001). Economics of natural disasters A critical underlying factor in any economy’s response to disaster events is its level of wealth. Horwich (2000) argues that increased income translates to a general increase in the level of safety. Wildavsky (1988) interprets the degree of safety enjoyed by citizens of a country as a natural product of a growing market economy. Wildavsky broadly defines as protection against hazardous things and circumstances (e.g. less dangerous machinery, improved construction quality, more reliable automobile braking and steering mechanisms, and more reliable means of transportation and communication). He describes a learning-process by which individual buyers weigh the cost of each technically feasible increment of safety against the expected benefit. In this framework, since demand for safety rises with income, a nation’s per capita income is a good initial indication of its degree of safety. An increase in income provides not only leads to improvements in general safety, but also additional protection against natural disasters. As a society becomes more developed it sequentially implements policies Tol and Leek (1999) and Burton et al. (1993) also discuss the potential for reduced vulnerability as income increases. Burton et al. (1993) show a modest inverse relationship between deaths due to natural disasters and income for twenty countries for years 1973 and 1986. As noted by Tol and Leek (1999), there is probably a rapid transition between relatively vulnerable and invulnerable that occurs somewhere in the modernization process. According 45 CESifo Forum 2/2010 Focus ing resources when and where they were most needed. In contrast, government officials suffered from paralysis immediately following the quake, taking days to mobilize and provide meaningful assistance. Free market economists have used the term ‘decentralization’ as a synonym for privatization (Bardham 2002), arguing for the benefits of reducing the power of a strong centralized government. to Albala-Bertrand (1999), the people most affected by direct disaster events are primarily those who have weaker economic and political bases. While disasters occur in both industrialized and developing countries, about 95 percent of the deaths occur in the developing world (Alexander 1993). This discussion suggests that income and wealth are highly correlated with the number of deaths caused by natural disasters. As an illustration, the United States seems to have made such a transition during the 20th century. The annual average number of deaths caused by hurricanes on the Atlantic coast during the 1900–1940 period was 327. However, over the 1972–2005 there was only an average of about 58 deaths annually, including the 1,319 deaths caused by hurricane Katrina. In recent years governments have been criticized for lack of preparation and inability in response to extreme large magnitude disaster events. For example, in the aftermath of hurricane Katrina both state and local officials in Louisiana were criticized for not enhancing the flood control infrastructure, which ultimately led to massive flooding. Public responsibilities regarding safety, land use and economic development decisions, etc. play important roles in limiting the impacts of natural catastrophes. The first level of assistance in response to a disaster event will come from police and fire authorities. Such services account for a significant portion of public service expenditures regardless of fiscal structure. Within a decentralized governmental system, public safety services are typically provided by more autonomous subnational authorities. Importantly, the ex ante public sector preparations (establishing and enforcing land use and building code regulations, maintaining infrastructure, etc.) as well as ex post response (public safety) is crucial in terms of protecting human life. It would then seem that data on deaths from natural disaster events provides a good test case for examining the role of government structure on public service delivery as it relates to protecting the populace from the potentially devastating impacts of catastrophic events. Further, given evidence suggests that decentralized fiscal systems increase educational attainment, and education enables citizens to better prepare for and respond emergency circumstances. In a recent study that utilizes disaster data from OFDA/CRED, Kahn (2005) shows that income and institutional quality are important determinants of human casualties from natural disasters. Of special note, Kahn (2005) also shows that, while the probability of disaster occurrence is not related to the level of development, the number of deaths, injured and homeless are reduced as income rises. His work also suggests that more democratic countries experience fewer human losses than do less democratic countries. Using data similar to that of Kahn (2005), Anbarci and Escaleras (2005) examine the relationship between earthquake fatalities and income inequality, finding that countries with greater inequality experience greater losses. Toya and Skidmore (2007) extend the research on the development-disaster relationship by examining additional factors such as human capital accumulation and the degree of openness, finding that both greater human capital and openness reduce losses from natural disaster events. Toya and Skidmore (2007) suggest that distinct from the private disaster-incomesafety relationship is the existence of an underlying social/economic fabric that increases safety for all of society. Even more recently, Kellenberg and Mobarak (2008) demonstrate that there may be important nonlinearities between the level of development and disaster impacts. Wildasin (2008) identifies another important consideration: intergovernmental transfer mechanisms may weaken the incentives for subnational governments to engage in ex ante disaster preparations. Under the current US federal government emergency management policy, assistance has effectively shifted much of the burden of disaster losses (particularly floods) to the rest of society. While such a policy relieves the financial stress on the affected region, it also reduces the incentive for subnational governments to invest in costly but effective disaster avoidance activities. Wildasin (2008) suggests anoth- As highlighted by Horwich (2000), disaster mitigation efforts (ex ante and ex post) are sometimes most effectively implemented by the private sector. For example, Horwich (2000) found that the most responsive organization following the 1995 earthquake in Kobe was the Japanese mafia. This marketoriented group was especially effective at distribut- CESifo Forum 2/2010 46 Focus er approach to strengthen subnational incentives: mandate subnational governments to build disaster reserve funds. Figure 1 FISCAL DECENTRALIZATION AND NATURAL DISASTER LOSSES Number of killed/population for 1990–2005 0.9 0.8 This discussion outlines two 0.7 0.6 opposing forces in decentraliza0.5 tion with regard to disaster man0.4 agement and response. First, the 0.3 literature on the effectiveness of 0.2 decentralization efforts in the 0.1 0.0 developing world suggests that -0.1 subnational governments may 0 10 20 30 40 50 60 provide many public services Sub-national government expenditures/total government expenditures for 1990–2000, average more efficiently, including eduSource: Authors' calculation. cation, and may be more responsive to heterogeneous local association between disaster-related fatalities and needs. An opposing view is the certain institutional decentralization. While this slope coefficient is genstructures within fiscal federalism may weaken the erated without controlling for other factors that incentives for subnational units of government in may affect the degree to which natural disasters terms of ex ante preparation as well as ex post recovlead to death, the figure motivates a more carefully ery from disaster events. examine of the issue. We add to both of these lines of research by examining the relationships between fatalities induced by natural disaster events, education and decentralization while controlling for a number of other variables that characterize the level of economic development. Our analysis adds new insight to the research the effectiveness of fiscal decentralization as well as to the research on disaster mitigation. We acknowledge that our empirical analysis provides a more general evaluation: clearly, more focused country-specific analyses such as that of Wilsdasin (2008), Chernick and Haughwout (2006) and Horwich (2000) also yield important insights. In order to rigorously evaluate the impact of decentralization on mitigating disaster losses, we control for other factors found to be important in previous studies (Kahn 2005; Anbarci, Escalaras and Register 2005; Toya and Skidmore 2007) such as income, human capital, openness and size of government. We examine these issues by including per capita GDP, average years of secondary and higher schooling completed, openness ((exports + imports)/GDP), government size (government expenditure/GDP) into our empirical analysis. We also control for other factors such as a time indicator variables, population, land area, OECD dummy, disaster type that determine human fatalities induced by catastrophic events. We present some initial evidence regarding the relationship between disasters and economic growth in Figure 1. This figure shows the simple linear relationship between the natural logarithm of the number of annual disaster-induced deaths and the ratio of subnational to total government expenditures for 61 countries over the 1990–2005 period. The vertical axis represents the natural logarithm of natural disaster-induced deaths. Along the horizontal axis is the ratio of subnational to total government spending. The disaster data illustrated in Figure 1 represents current and detailed information on natural disaster fatalities from the Center for Research on the Epidemiology of Disasters (CRED) (EMDAT 2004). The figure indicates a clear negative and statistically significant To provide a more formal framework for our empirical analysis, consider the following Cobb-Douglas production function which maps the relationship between the production of safety that society enjoys and the factors that determine safety: (1) Si = A ji K ái Lâi where S measures the quantity of ‘safety’ produced by society i, K is capital and L represents labor and is equal to ψhN where h is average schooling years and N is population. Following Topel (1999), we specify human capital as an exponential function of schooling in the production function. This implies 47 CESifo Forum 2/2010 Focus lation as a control variable. From this model we expect higher levels of GDP per capita and educational attainment to reduce death tolls, and higher levels of population to increase death tolls. The degree of trade openness is expected to reduce deaths as well (Toya and Skidmore 2007). However, greater fertility and inequality are expected to increase disaster-induced fatalities. We test these notions in the empirical analysis which is presented next. that schooling will enter the ‘safety’ production function linearly.2 Last, Aji is a productivity parameter specific to disaster type j (e.g. climatic or geologic). Dividing both sides by population N yields: á â S K N (2) = A jt e h N á + â 1 N t N t N t Simplifying equation (2) results in: (3) S á h + -1 = A jt k t (et ) N t N t Empirical analysis where k is equal to physical capital per capita. To convert the notion of ‘safety’ into a more tangible measure, deaths (D) resulting from natural disasters, consider the following relationship: (4) D = f(S)N = Data on natural disasters come from the OFDA/CRED International Data Base (2006), and macroeconomic data are available from several sources (Barro and Lee 1996; International Financial Statistics website; Heston, Summers and Aten 2002; World Development Indicators 2003). Government fiscal data are taken from the World Bank website. The OFDA/CRED database is a result of collaboration between the Office of US Foreign Disaster Assistance and the Center for Research on the Epidemiology of Disasters. Efforts to establish better preparedness for and the prevention of disasters have been a primary concern for donor agencies, implementing agencies and affected countries. For this reason, demand for complete and verified data on disasters and their human impact, by country and type of disasters has been growing. The OFDA/CRED initiative to develop a validated database on disaster impacts is a response to this need. N S where f is the probability of disaster induced death, f’<0 _ and simplifying further yields: Substituting D for N S (5) h + -á Dt = A -1 Nt jt k t et Finally, taking the natural logarithm of both sides and combining lnA and lnψ together into Z, an overall ‘technology’ parameter, produces an equation that is the basis for our empirical analysis: (6) ln (D )t = Z jt áln (k )t ht + (á + â )lln(N)t Using this merged data set we conduct empirical analyses to determine the relationship between decentralization and disaster-induced fatalities, while controlling for a range of other factors. OFDA/CRED uses specific criteria in classifying a natural disaster (ten or more people killed, 100 or more people were affected/injured/homeless, significant damages were incurred, a declaration of a state of emergency and/or an appeal for international assistance was made (http://www.cred.be/ emdat). Although the data set provides information on a number of natural disaster types, we restrict our analysis to earthquakes, floods, slides, volcanic eruptions and extreme winds.3 Summary statistics and data sources are in presented in the Appendix (Tables A1 and A2). The productivity parameter, Zj, is then a function of decentralization, government size (government expenditure/GDP), as well as factors such as openness ((exports + imports)/GDP), fertility and a measure of inequality. We also control for other factors such as land area, OECD dummy, time indicator variables and disaster type that determine human fatalities induced by catastrophic events. Given that GDP is highly correlated with k, we use GDP per capita as a proxy for (k). Consistent with the model, we also include popu2 For example, consider a standard Cobb-Douglas production function: y=Akαh1-α, where y is per capita GDP, A is the level of technology, k is per capita capital stock, and h is per capita human capital.Transforming this function into log form yields: lny = lnA + αlnk + (1-α)lnh. With a Mincer-type model, h equals Ψes with s = average years of schooling. Taking the log yields: lnyt = (lnAt) + α(lnkt) + (1-α)(lnht). Substituting in for h yields: lnyt = lnAt + α(lnkt) + (1-α)(lnΨ + st). CESifo Forum 2/2010 3 Hurricanes, tornadoes, typhoons, etc. are included in this category. 48 Focus where deathsjit is the total number of deaths5 caused by natural disaster type j (hurricane, earthquake, flood, etc.) in country i during period t; decentjit is defined as sub-national own source expenditures/total government expenditures; viit is the ratio of national intergovernmental transfers to subnational expenditures; yjit represents a vector of j variables that may determine the deaths caused by the natural disaster (e.g. natural logarithm of per capita GDP in real US dollars, a measure of human capital (years of secondary and higher education schooling), openness ((exports+imports)/ GDP), population, land area, OECD dummy, a series of indicator variables characterizing the type of disaster); and t represents a series of time indicator variables. In addition to controlling for various aspects of development, it is critical to control for the size of government to isolate the impact of government structure. We therefore include the ratio of government spending to GDP as an additional control. An average 193 deaths resulted from each recorded disaster events over the 1970–2005 period.4 In our sample, the most common types of disasters were floods and extreme wind, accounting for 39 and 38 percent of the total, respectively. Seven percent of the total resulted from slides, 12 percent were earthquakes, and volcanic eruptions accounted for just three percent of the total. It is also important to provide a careful definition of our key independent variable, the subnational share of total government expenditures. First, expenditure data include intergovernmental transfers in addition to functional expenditures. Thus, caution is warranted in making comparisons across government tiers. Second, these data only provide a proxy for expenditure autonomy because a large portion of subnational expenditures may be mandated by the central government. Despite these limitations, this is probably the best and most utilized measure of decentralization available. It includes the following expenditure categories: general public services; defense; public order and safety; education; health; social security and welfare; housing and community amenities; recreational, cultural, and religious affairs and services; fuel and energy; agriculture, forestry, fishing, and hunting; mining and mineral resources, manufacturing and construction; transportation and communication; other economic affairs and services; and other expenditures. Expenditures related to disaster preparation and management occurs in a number of functional categories. Clearly, the public order and safety category is critical, but other functional areas like health, transportation and communication, and economic affairs are likely to also play important roles. We also include a measure of vertical imbalance, which is the ratio of intergovernmental transfers from national government to subnational government expenditures. Our analysis estimates effects of the government structure in terms of spending at the subnational level while controlling for the degree subnational reliance on national authorities for financial resources. In some specifications, we also interact decentralization with educational attainment to determine how human capital alters government productivity in providing safety. As shown in Figure 2, roughly one-third of our observed disaster events record zero deaths. Our dependent variable is therefore truncated at zero: (8) ln( deaths jit ) = max(0, ln( deaths jit )) We therefore use a Tobit random effects specification to properly treat the censored variable within a panel data framework.6 One last potentially important econometric issue warrants our attention: it is possible that the likelihood of a disaster event being recorded depends, in part, on the level of development. However, in a careful analysis Kahn (2005) demonstrates that the probability of a disaster event occurring and being recorded is not dependent on the level of development: with the exception of floods, high and low income countries are equally likely to experience a naturally occurring disaster event. Relying on Kahn’s result, we move directly to an analysis of the determinants of disaster-related fatalities. Results We estimate a series of regressions to determine the relationship between disaster-induced fatalities and decentralization. Our basic regression is characterized by the following equation: (7) Table 1 presents a series of regressions using data for all natural disasters recorded for all countries over 4 The average is pulled up by the catastrophic tsunami that occurred in Asia in 2004. Omitting this event reduces the average number of deaths to 124. 5 Since we use the natural logarithm of deaths, to avoid arithmetic error we use ln(deaths+1) as our dependent variable. 6 The Tobit model within the fixed effects framework could potentially be used, but this econometric approach generates biased parameter estimates. ln(deaths jit ) = 1 ( decentit ) + 2 ( viit ) + n ( y jit ) n ( y jit ) + tt + e jit 49 CESifo Forum 2/2010 Focus in reducing disaster-induced deaths. One possible interpretaFREQUENCY DISTRUBUTION OF DISASTER-INDUCED FATALITIES tion is that a route by which Frequency decentralization leads to fewer 1 000 deaths is through providing a more educated population that 800 is better able to prepare for and 600 respond to catastrophic events. Another possibility is a more 400 highly educated population enhances the effectiveness of a 200 decentralized government structure. Consider also the coeffi0 0 5 10 cients on government size and In(deaths+1) the degree of vertical imbalance. Source: Authors' calculation. The coefficients on government size and vertical imbalance are the 1970–2005 period. In column 1, we present a base never significant in the regressions. regression in which measures of decentralization are excluded from the analysis. Column 2 presents a Before turning to additional regressions in Table 2, regression that includes a primary measure of decenconsider the coefficients on the other control varitralization (decent), but excludes educational attainables. The coefficient on GDP per capita is negative, ment. The column 3 regression includes both educabut only statistically significant in three of the five tional attainment and decentralization measures regressions. As expected, greater trade openness together simultaneously. A key purpose in presentreduces disaster-induced fatalities. Openness is ing these first three regressions is to demonstrate thought to enhance commodity distribution networks important interrelationships between decentralizaso that international assistance can be allocated to tion, education and death tolls from disasters. Column 1 Table 1 results show negative relationFiscal decentralization and natural disaster losses ship between educational attainDependent variable: Log (1+Number of killed) ment and death tolls, although 1 2 3 the coefficient in only significant Log (GDP per capita) – 0.474 – 0.441 – 0.515 at the 90 percent level of (– 1.905) (– 2.468) (– 2.249) Secondary and higher schooling years – 0.392 – 0.119 confidence. In column 2, we see (– 2.757) (– 0.938) that the coefficient on decentralLog (Openness) – 0.499 – 0.647 – 0.688 ization is negative and high(– 2.600) (– 4.188) (– 4.202) ly significant. Now consider Fertility 0.006 0.020 0.012 the regression presented in co(0.060) (0.237) (0.121) lumn 3. Here, we include both Gini coefficients 0.002 0.008 0.004 (0.157) (0.928) (0.431) educational attainment and Log (Size of government) 0.324 0.091 – 0.002 decentralization together in a (1.087) (0.421) (– 0.006) single regression. The coefficient Local Gov total / Total Gov total – 2.057 – 1.837 on educational attainment is (– 2.967) (– 2.324) smaller than in column 1 and it is Vertical imbalance – 0.171 – 0.300 now insignificant. Also, the coef(– 0.483) (– 0.787) No. of countries 59 69 55 ficient on decentralization is No. of observations 2761 2712 2581 smaller than in column 2, but its Log-likelihood – 4956.1 – 4858.2 – 4632.9 statistical significance is mainNotes: Numbers in parentheses are z-values. Other independent variables tained. These three regressions not reported here are Constant, Log (Population), Log (Area), OECD, demonstrate an important relaEarthquake, Flood, Volcano, Wind, Wave and a series of year indicator variables. tionship between decentralizaSource: Authors’ calculation. tion and educational attainment Figure 2 CESifo Forum 2/2010 50 Focus areas in need more effectively. In addition, countries with greater openness may have access to technologies and practices that improve safety. Countries with higher rates of fertility and greater income disparities tend to have more disaster-induced deaths, although the coefficients on these variables are only sometimes significant. These findings are generally consistent with Kahn (2005), and Toya and Skidmore (2007). In Table 2, we present additional regressions to examine robustness of our key finding to the inclusion of government ‘quality’ measures, and to further explore the decentralizationeducational attainment relationship. In column 1 we repeat the estimates presented in column 3 of Table 1, except we include a measure of the degree of political freedom and a measure of civil liberty. Note that our core result remains: the coefficient on the overall measure of decentralization maintains its statistical significance. Civil liberty and political rights are not significant determinants of disaster deaths. Table 2 Fiscal decentralization, human capital and natural disaster losses Dependent variable: Log (1+Number of killed) 1 2 3 – 0.590 – 0.420 – 0.497 (– 2.941) (– 2.322) (– 2.645) Secondary and higher schooling years – 0.075 0.184 (– 1.043) (1.498) Log (Openness) – 0.712 – 0.589 – 0.581 (– 4.987) (– 4.820) (– 4.747) Fertility 0.093 0.111 0.092 (1.171) (1.517) (1.239) Gini coefficients 0.011 0.013 0.011 (1.399) (1.720) (1.503) Log (Size of government) – 0.129 – 0.308 – 0.192 (– 0.530) (– 1.553) (– 0.900) Local Gov total / Total Gov total – 1.575 (– 2.661) (Local Gov total / Total Gov total) – 0.357 – 0.620 Secondary and higher (– 3.283) (– 2.996) schooling years Vertical imbalance – 0.276 – 0.133 – 0.194 (– 0.941) (– 0.476) (– 0.686) Political right 0.057 (0.862) Civil liberty – 0.037 (– 0.420) No. of countries 54 55 55 No. of observations 2527 2581 2581 Log-likelihood – 4518.3 – 4479.6 – 4475.3 Notes: Numbers in parentheses are z-values. Other independent variables not reported here are Constant, Log (Population), Log (Area), OECD, Earthquake, Flood, Volcano, Wind, Wave and a series of year indicator variables. Source: Authors’ calculation. Log (GDP per capita) having an educated work force from which to hire capable public employees. In columns 2 and 3, we examine whether decentralization enhances the degree to which education reduces safety by including an interaction between educational attainment and decentralization. Consider column 2, which repeats the column 2 regression in Table 1 except that the decentralization measure is now replaced with the interaction variable. The coefficient on the interaction variable is negative and highly significant. Once we include educational attainment as in column 3, the coefficient on the interaction term is smaller but it maintains its statistical significance. One interpretation of this finding is that the productivity of an educated population in terms of protecting life is enhanced by greater autonomy at the local level. An alternative interpretation is that the ability of local government to operate effectively and thus produce a safer environment is greatly enhanced by How many lives are likely to be saved as a result of decentralization? From column 2 of Table 1, an increase in subnational government expenditures relative to total government expenditures of 0.2 reduces lives lost by about 30 percent. Thus, if a very centralized government with a small ratio of subnational to national expenditures of, say, 0.1 were to decentralize such that this ratio increased to about the average (0.3), the number of disasterinduced fatalities would fall by 40 percent. If we control for educational attainment as in column 3, direct decentralization effect indicates that fatalities would fall by 36 percent. One should, however, be careful not to extend such calculations to hyperbole: countries that are already decentralized are not likely to save more lives as a result of further decentralization. 51 CESifo Forum 2/2010 Focus Robustness Previous research that has sought to assess the effectiveness of fiscal decentralization is limited in terms of identifying causal relationships, and more systematic analysis has been hampered by the lack of consistent cross-country data on government costs and effectiveness (Bardham 2002). Despite the tragic nature of catastrophic events, they in fact provide a good opportunity to assess the role of government structure in limiting the fatalities resulting from such events: death tolls provide a clear and consistent time varying cross-country measure of effectiveness. We have also estimated these regressions using the pooled Tobit7 econometric technique.8 Results from this alternative specification yields qualitatively similar results. We also estimated a series of regression using the fixed effects estimation procedure. However, a word of caution in interpreting these findings is in order. The parameter estimates from the fixed effects estimates are generate from the within country variation in the independent variables. It therefore seems prudent to identify which countries experienced significant changes in the ratio of subnational to national spending over the period of analysis. While many countries experience relatively minor changes in the degree of decentralization, we identified eight countries (Argentina, Bolivia, Brazil, Italy, Mexico, Spain, Peru and South Africa) that had both a significant number of recorded disaster events as well as significant changes over time in fiscal federalism. The fixed effects parameter estimate on the decentralization variable is largely driven by the experiences of these eight countries. Thus, one should interpret the fixed effects results with this in mind. The coefficient on our key decentralization variable is again negative and highly significant: countries that have become more decentralized over time have experienced fewer disasterinduced deaths.9 Our analysis provides evidence that more decentralized countries as measured by the ratio of subnational expenditures to national expenditures experience fewer deaths. Our findings also suggest that one route by which a decentralized system reduces disasterinduced deaths is through educational attainment.This finding is consistent with the work of Brueckner (2006), and Arze del Granado, Martinez-Vasquez and McNab (2005) who provide arguments and evidence for the notion that decentralized systems increase human capital. More generally, these findings are robust to the inclusion (or exclusion) of a variety of other factors that have been found to be important determinants of disaster-related deaths in previous studies. The results are also robust to alternative econometric methods. The research presented here increases our understanding of the role of government in disaster management and response. Disaster death toll data has enabled us to conduct the first time-varying cross-country evaluation of the effectiveness of decentralization efforts, and therefore this research contributes to both the literatures on the fiscal decentralization and the economics of natural disasters. Conclusion Private entities, governments and not-for-profit organizations engage in a variety of actions to reduce the impacts of natural disasters. For example, in areas where seismic activity is present building codes (and compliance) are likely to be more stringent. In hurricane prone areas, certain measures may be undertaken to protect life and property (forecasting, warning systems, planning, building codes, etc.). Further, the public sector preparations and response to natural disasters are critical. Lack of proper preparation and delayed and/or ineffective response may result in lives lost. The primary objective of this study is to determine whether government fiscal structure is important in disaster-induced fatality prevention. References Akai, N. and M. Sakata (2002), “Fiscal Decentralization Contributes of Evidence from State-Level Cross-Section Data for the United States”, Journal of Urban Economics 52, 93–108. Albala-Bertrand, J. (1993), Political Economy of Large Natural Disasters, New York: Oxford University Press. Alderman, H. (1998), Social Assistance in Albania: Decentralization and Targeted Transfers, LSMS Working Paper 134, World Bank. Alexander, D. (1993), Natural Disasters, New York: Chapman and Hall. Anbarci, N., M. Escalaras and C. A. Register (2005), “Earthquake Fatalities: The Interaction of Nature and Political Economy”, Journal of Public Economics 89, 1907–1933. 7 A likelihood ratio test indicates that the panel-level variance component is important, and therefore the random effects estimator is more appropriate than that pooled Tobit estimator. Nevertheless, we examine the pooled Tobit estimator. 8 The number of recorded fatalities can be thought of count data with over-dispersion. The negative binomial is therefore potentially an appropriate alternative estimation technique. 9 These additional estimates are available from the authors upon request. CESifo Forum 2/2010 Arzaghi, M. and V. Henderson (2005), “Why Countries Are Fiscally Decentralizing”, Journal of Public Economics 89, 1157–1189. Arze del Granado, F., J. Martinez-Vasquez, and R. McNab (2005), Decentralization and the Composition of Public Expenditures, 52 Focus Working Paper 05-10, International Studies Program, Georgia State University. Azfar, O., S. Kähnkönen and P. Meagher (2000), Conditions for Effective Decentralized Governance: A Synthesis of Research Findings, IRIS Center Working Paper, University of Maryland. Barankay, I. and B Lockwood (2007), “Decentralization and the Productive Efficiency of Government: Evidence from Swiss Cantons”, Journal of Public Economics 91, 1197–1218. Barro, R. and J. Lee (1996), “International Measures of Schooling Years and Schooling Quality”, American Economic Review 86, 218–223. Bardham, P. (2002), “Decentralization of Governance and Development”, Journal of Economic Perspectives 16, 185–205. Brueckner, J. (2006), “Fiscal Federalism and Economic Growth”, Journal of Public Economics 90, 2107–2120. Burton, K., R. Kates and G. White (1993), The Environment as Hazard, 2nd edition, New York: Guilford Press. Chernick, H. and A. F. Haughwout (2006), Economic Resilience, Fiscal Resilience, and Federalism: Evidence from 9–11, mimeo. Davoodi, H. and H. Zou (1998), “Fiscal Decentralization and Economic Growth: A Cross-Country Study”, Journal of Urban Economics 43, 244–257. EMDAT (2004), The OFDA/CRED International Disaster Database, Unversite Catholicque de Louvain, Brussels, www.md.ucl.ac.be/cred. Heston, A., R. Summers and B. Aten (2002), Penn World Table Version 6.1, Center for International Comparisons at the University of Pennsylvania (CICUP), http://pwt.econ.upenn.edu/. Horwich, G. (2000), “Economic Lessons from the Kobe Earthquake”, Economic Development and Cultural Change 48, 521–542. International Monetary Fund (IMF), International Financial Statistics Online, http://ifs.apdi.net/imf/. Appendix: Tables A1 and A2 International Monetary Fund (IMF), Government Finance Statistics Annual Yearbook, various years, Washington DC. Kahn, M. (2005), “The Death Toll from Natural Disasters: The Role of Income, Geography, and Institutions”, Review of Economics and Statistics 87, 271–284. Kellenberg, D. and A. Mobarak (2008), “Does Rising Income Increase or Decrease Damage Risk from Natural Disasters?”, Journal of Urban Economics 63, 788–802. Santos, Boaventura de Sousa (1998), “Participatory Budgeting in Porto Alegre: Toward a Redistributive Democracy”, Politics and Society 26, 461–510. Skidmore, M. (2001), “Risk, Natural Disasters, and Household Savings in a Life Cycle Model”, Japan and the World Economy 13, 15–34. Thornton, J. (2006), “Fiscal Decentralization and Economic Growth Reconsidered”, Journal of Urban Economics 61, 64–70. Tol, R. and F Leek (1999), “Economic Analysis of Natural Disasters”, in: Downing, T., A. Olsthoorn and R. Tol (eds.), Climate Change and Risk, London: Routledge, 308–327. Toya, H. and M. Skidmore (2007), “Economic Development and the Effects of Natural Disasters”, Economics Letters 94, 20–25. Wildavsky, A. (1988), Searching for Safety, New Brunswick, NJ: Transaction Books. Wildasin, D. (2008), “Disaster Policies: Some Implications for Public Finance in the U.S. Federation”, Public Finance Review 36, 497–518. World Bank (2003), World Development Indicators 2003, http://go.worldbank.org/BDEXK5OE00. Xie, D., H. Zaou and H. Davoodi (1999), “Fiscal Decentralization and Economic Growth in the United States”, Journal of Urban Economics 45, 228–239. 53 CESifo Forum 2/2010 Focus Appendix Table A1 Summary of statistics variables used in the analysis Mean 2.248 Standard deviation 1.985 Number of observations 2761 8.940 2.742 1.003 1.822 2761 2761 3.601 2.792 37.65 -1.218 0.678 1.250 9.446 0.417 2761 2761 2761 2761 Local Gov total / Total Gov total Vertical imbalance (Local Gov total / Total Gov total) Secondary and higher schooling years 0.315 0.405 1.031 0.169 0.184 0.998 2712 2712 2581 Log(Population) Log(Area) OECD Earthquake Slides Volcano Wave Wind Flood Political right Civil liberty 11.49 14.32 0.376 0.106 0.071 0.024 0.005 0.408 0.386 2.676 2.916 1.671 1.711 0.484 0.309 0.257 0.154 0.068 0.492 0.487 2.076 1.857 2761 2761 2761 2761 2761 2761 2761 2761 2761 2527 2527 Log (1+Number of killed) Log (GDP per capita) Secondary and higher schooling years Log (Openness) Fertility Gini coefficients Log (Size of government) Source: Authors’ calculation. CESifo Forum 2/2010 54 Focus Table A2 Definitions and sources of variables Variables Number of killed GDP per capita Secondary and higher schooling years Openness Fertility Gini coefficients Size of government Local Gov total / Total Gov total Vertical imbalance Population Area OECD Wind Flood Earthquake Slides Volcano Wave Political right Civil liberty Definition The number of persons confirmed as dead and persons missing and presumed dead Real GDP per capita Years of secondary and higher schooling in the total population aged 15 and over Ratio of exports plus imports to GDP Total fertility rate Gini coefficients The ratio of total government expenditures to GDP The ratio of total sub-national government expenditures to total government expenditures The ratio of intergovernmental transfers to sub-national expenditures Logarithm of population Logarithm of land area Dummy for OECD countries Dummy for wind Dummy for flood Dummy for earthquake Dummy for slides Dummy for volcano eruption Dummy for wave Political right (range from 1(good) – 7(bad)) Civil Liberty (range from 1(good) – 7(bad)) Source EMDAT HSA BL HSA WDI WIID GDN WB_FDI WB_FDI HSA WDI EMDAT EMDAT EMDAT EMDAT EMDAT EMDAT FH FH Sources: BL = Barro and Lee (1996); EMDAT = EMDAT (2004); FH = Freedom in the World from http://www.freedomhouse.org/template.cfm?page=15; GDN = Global Development Network Growth Database from http://econ.worldbank.org/WBSITE/EXTERNAL/EXTDEC/EXTRESEARCH/0,,contentMDK:20701055~ pagePK:64214825~piPK:64214943~theSitePK:469382,00.html; HAS = Heston, Summer and Aten (2002); WB_FDI = Fiscal Decentralization Indicators from http://www1.worldbank.org/publicsector/decentralization/ fiscalindicators.htm; WDI = World Development Indicators 2006 from http://data.worldbank.org/datacatalog/world-development-indicators/wdi-2006; WIID = World Income Inequality Database from http://www. wider.unu.edu/research/Database/en_GB/wiid/. 55 CESifo Forum 2/2010 Focus Albala-Bertrand (2007) claimed that economic impact of a disaster, which causes localized damages and losses on capital and activities, may not affect negatively the macro-economy in both short and longer term. This appears to contradict with some empirical observations, such as the 1999 ChiChi earthquake in Taiwan which caused a hike in price of computer memory chips in the United States and other countries, and the 2005 hurricane Katrina which led to the increase in oil price domestically and internationally. These observations indicate that while the degree of damages and losses is much severer in the areas hit by such a natural hazard, the impacts of the event appear to spread over many other areas and nations. In this regard, the propagation process of disaster impact in a global sense is examined in this paper using the empirical case of the 2004 Indian Ocean earthquake and tsunami. GLOBALIZATION AND LOCALIZATION OF DISASTER IMPACTS: AN EMPIRICAL EXAMINATION YASUHIDE OKUYAMA* Introduction The damages and losses brought by disasters, such as earthquakes, floods, hurricanes, cyclones and so on, can potentially have significant and intense impacts on a nation’s economy. However, despite the importance of assessing the economic impacts of damages and losses in the aftermath of such events, estimating the impacts is rather challenging. The consequences associated with the event will have many other aspects including damages on demand and supply sides, for example, since the event may affect a wide range of economic activities in many different ways. The difficulties with impact analysis of disasters are, therefore, (1) disentangling the consequences stemming directly and indirectly from the event, (2) deriving possibly different assessments at each spatial level – cities, region, or nation – (Hewings and Mahidhara 1996), and (3) evaluating the reaction of households which are poorly understood (West and Lenze 1994). Data availability for the impact assessment is another important issue. West and Lenze (1994) claim that sophisticated economic impact models requiring precise numerical input have to be reconciled with imperfect measurements of the damages. They proposed a systematic way to estimate the impacts from the available data; however, “impact assessment of unscheduled events is an inexact science” (Hewings and Mahidhara 1996, 216). In the following section, Albala-Bertrand’s ‘Globalization and Localization: An Economic Approach (2007)’ is reviewed and analyzed. The third section defines and describes terminology associated with economic impact assessment of natural disaster. Analysis of empirical case study based on the 2004 Indian Ocean earthquake and tsunami is carried out and discussed. The final section concludes the paper with some remarks on future directions for this line of research. Review of globalization and localization Albala-Bertrand has been actively studying about the economic consequences of natural disasters, especially in the developing country’s context. In his studies, he often claims that economic impacts of natural disasters are rather minor in a macroeconomic sense, even with a catastrophic one. For example, he claimed that the indirect effects of disaster are “more a possibility than a reality” (AlbalaBertrand 1993, 104). He also argued that in a long run the negative impacts from damages made by a disaster and the positive impacts from recovery and reconstruction may potentially cancel out and then * University of Kitakyushu and Tokyo Institute of Technology. This research was supported by the JSPS Grant-in-Aid for Scientific Research (C) [21510199] and partly by the Global Facility for Disaster Reduction and Recovery (GFDRR) and the World Bank. The author would like to express gratitude to Apurva Sanghi and Sebnem Sahin for their support, encouragement and insights, and to Hirokazu Tatano of the Kyoto University for his helpful comments. CESifo Forum 2/2010 56 Focus disequilibrium between negative and positive impacts in various economic spaces and agents, is necessary and essential on the way to display the macroeconomic impacts. the estimation of the total impacts often ends up deriving insignificant values (Albala-Bertrand 1993). While his arguments were based on some empirical evidence of the past disasters (in 1960s and 1970s for his 1993 publication), with the recent progress on globalization and increased interdependency between economies, economic impact of disasters should be examined with the augmented complexity of recent economy. Economic impacts of disasters: concept and definition In order to discuss the economic impacts of disasters, we need to clarify the terminology first, since the use of similar words has created some confusion in many disaster literatures. According to Okuyama and Chang (2004, 2), “hazard is the occurrence of the physical event per se, and disaster is its consequence”. In this context, while the occurrence of hazards cannot be prevented, the extent and intensity of a disaster can be managed. Hence, the measuring the extent and intensity of economic consequences (disaster) caused by a hazard is necessary to evaluate and determine the countermeasures against hazards and is central to understand how the consequences of a hazard become a disaster. In his recent publication (Albala-Bertrand 2007), Albala-Bertrand analyzed the effect of globalization on disaster impacts from an economic perspective. His main conclusions are: 1. Disaster impacts, such as casualties and economic losses, will be economically localized and thus are unlikely to influence negatively the national economy, even in a long run. 2. Positive features of globalization, like access to larger markets and suppliers, etc., may lead to even more localization of disaster impacts, while negative features of globalization, which are fast efficiency and productivity improvements through privatization and deregulations and lead to thinner and weaker social fabric against emergency situations, make localized disaster impact much more condensed into the local community than before. 3. The synchronization of business cycle caused by globalization, especially with the US economy, may regulate the financial capability for disaster response of the world, especially when the leading economies are under recession. In terms of ‘disaster’ economic impacts, many comparable terms, such as damages and losses which are further differentiated between direct and indirect losses, have been employed interchangeably without making any distinction or definition of them, and have led to further perplexity. Oftentimes, the direct loss refers to the damages on stock like buildings, roads, houses, etc., while the indirect loss implies the loss of flow due to business disruptions caused by stock damages. And then, the total loss is often calculated by adding these direct and indirect losses. However, in economics term, stock and flow are two different things and summing these up leads to potential double counting (Rose 2004). Also, in the above way, the distinction between flow losses caused directly by the stock loss and flow losses caused via inter-industry linkage (often referred as ‘ripple’ effect) cannot be made, and this distinction is vital to illustrate the extent of disaster impact. These conclusions reflect his above arguments on disaster impact, while he acknowledges the uncertainty of disaster consequences, shown in 2 and 3, may increase due to globalization. In a macroeconomic or an aggregated sense, his arguments appear plausible for not such significant total impacts. However, the economic structure can affect the extent and significance of disaster impacts in different parts of an economy, geographically and/or socially, and the distribution and volume of negative and positive impacts may differ over space and for different sectors. In this line, AlbalaBertrand’s claim, which urges for future studies to start classifying disaster impacts over localities, is imperative. This may contradict his claim of negligible total impact of disasters in an aggregate sense, but the disaggregation of disaster impacts, showing Consequently, the clear definition of disaster impact should be made. Okuyama and Sahin (2009) proposed the following terminology for disaster economic impacts: damages are by economics definition the damages on stocks, which include physical and human capitals; losses are business interruptions, such as production and/or consumption, caused by damages and can be considered as 57 CESifo Forum 2/2010 Focus first-order losses; higher-order effects, which take into account the system-wide impact based on first-order losses through inter-industry relationships; and total impacts are the total of flow impacts, adding losses (first-order losses) and higher-order effects. Rose (2004) further suggested that listing both damages and losses, but not adding them together, is appropriate for showing the different aspects of economic impact. In the following sections, these terms are used for the analysis. The 2004 Indian Ocean disaster The December 2004 Indian Ocean disaster was caused by an earthquake, and the earthquake generated a tsunami, carrying many million tons of water in a series of very large waves that traversed the Indian Ocean in a matter of hours. These waves hit beaches, flooding low-lying lands coastal areas. The destruction was widespread: the most seriously affected areas were Banda Aceh, Indonesia, as well as in tourism resorts in Thailand, Sri Lanka, and the Maldives. Many small and medium sized rural villages located along the beachside in the five countries were also wiped out (ADPC 2005). What we are going to estimate in this paper is the economic intensity of a natural hazard on flow, while a comprehensive assessment of a natural disaster requires to include both negative impact of a natural hazard and positive effects of recovery and reconstruction activities. More concretely, the results shown in the following section are only the negative impact of a natural hazard over a year, without any restoration, recovery, or reconstruction. This appears to be a very unlikely scenario, but this serves as the worst-case scenario (do-nothingscenario)1 and also provides the extent to which recovery and reconstruction need to be done. In addition, those restoration, recovery and reconstruction strategies will be decided based on the total impacts of a disaster and the distribution of them; thus, the estimation of negative impact only becomes a basis of decision making and is well worth doing. According to the preliminary assessment of damages and losses, total of 281,900 persons died as a result of the earthquake and tsunami; 189,500 persons were injured, physically and psychologically, and required immediate or medium-term treatment; and, 1.2 million persons became homeless and even a year after the tsunami many were still housed in temporary camps, a sizable fraction of which still requires shelter, food and health services. The total economic effects of this event were estimated as USD 5.6 billion of damages and 4.3 billion of losses over five countries – Indonesia, India, Sri Lanka, Maldives, and Thailand (ADPC 2005). In this paper, the total impacts of this event are estimated and analyzed for Indonesia and Thailand using the 2000 Asian International IO Table, since other three countries (India, Maldives and Sri Lanka) was not included in the IO Table. Empirical examination: 2004 Indian Ocean earthquake and tsunami Here are some nation-specific information on the damage and loss for Indonesia and Thailand. The total damage and loss in Indonesia were estimated as 2,664 and 1,136 million US dollars, respectively (ADPC 2005). The housing sector had the largest damage with 1,398 million US dollars (52 percent of total damage). The transport sector had the second largest damage, 409 million US dollars. The productive sector, especially agriculture and industry (manufacturing), also had some sizable damages. On the other hand, the losses were concentrated on these productive sectors, 550 million US dollars for agriculture and 280 million US dollars for industry, and together, they had about 73 percent of total loss. This section examines how economic impacts of a local disaster can (or cannot) spread over internationally, employing the 2004 Indian Ocean earthquake and tsunami as the case study. While this event was a multi-country incident, involving at least five countries (India, Indonesia, Maldives, Sri Lanka and Thailand), the damaged areas in each country were relatively limited geographically. Thus, using AlbalaBertrand’s term, this was a localized event for each country. The economic impacts of this event are evaluated using the 2000 Asian International InputOutput Table for analyzing whether or not any sizable economic impacts were propagated over other countries, i.e. globally. The total damages and losses in Thailand were estimated to reach 509 and 1,690 million US dollars, respectively. The damages were concentrated on 1 There would potentially be some worse scenarios than this, if the recovery and reconstruction activities were misguided to create further negative influence. CESifo Forum 2/2010 58 Focus Solving this relationship for x yields: tourism with 376 million US dollars (74 percent of the total damage), resulted from the washed out resorts and hotels on the beaches. Other noticeable damages were on agriculture. The losses were also mostly on tourism with 1,470 million US dollars (87 percent of the total loss), and agriculture and industry had some losses around 100 million US dollars each. x = (I - A ) f -1 (I-A)-1 is the Leontief inverse matrix. For the impact analysis, the impact of changes in final demand can produce the changes in output in the following manner: x = (I - A ) f -1 Methodology x A C x f y = V 0 y + g x B (I + CKVB ) BCK f y = KVB K g (1) j B=(I-A)-1 is the Leontief inverse matrix; BC is a matrix of production induced by endogenous consumption; VB is a matrix of endogenous income earned from production; L=VBC is a matrix of expenditures from endogenous income; and K=(I-L)-1 is a matrix of the Miyazawa interrelational income multipliers. In this paper, the IO model used is transformed to the Miyazawa’s extended IO framework for the analysis of impact on income generation. (2) In the matrix notation, (2) becomes: x = Ax + f (7) where: where xi is the output of sector i, xij is intermediate demand from sectors j to i, and fi is the final demand for sector i. Direct input coefficient, aij, is calculated by aij = xij /xj, and equation (1) can be transformed as follows: xi = aij x j + fi (6) where x is a vector of output, y is a vector of total income for some r-fold division of income groups, A is a block matrix of direct input coefficients, V is a matrix of value-added ratios for r-fold income groups, C is a corresponding matrix of consumption coefficients, f is a vector of final demands except households consumption, and g is a vector of exogenous income for r-fold income groups. Solving this system yields: Input-output (IO) framework was developed by Wassily Leontief in the late 1920s and early 1930s. The structure of IO mimics the double-entry style of bookkeeping scheme. For the production side, the output is determined as the sum of intermediate demand and final demand as follows: j (5) Miyazawa’s (1976) extended input-output analysis intends to analyze the structure of income distribution by endogenizing consumption demands in the standard Leontief model. In some sense, Miyazawa’s system is considered the most parsimonious in terms of the way it extends the familiar input-output formulation. Miyazawa considered the following system: There is a wide range of methodologies adopted to estimate the higher-order effects, and thus the total impacts of disasters (further detailed discussion of methodologies for impact estimation can be found at Rose (2004), Okuyama (2007) and Greenberg et al. (2007)). Input-Output (IO) model has been the most widely used methodology for disaster impact estimate for the recent decades (for example, Cochrane 1997; Gordon and Richardson 1996; Rose et al. 1997; Okuyama et al. 1999; Hallegatte 2008). The popularity of IO models for disaster related research is based mainly on the ability to reflect the economic interdependencies within an economy in detail for deriving higher-order effects, and partly on its simplicity. On the other hand, this simplicity of the IO model creates a set of weaknesses, including its linearity, and rigid structure with respect to input and import substitutions as well as a lack of explicit resource constraints, and responses to price changes (Rose 2004). xi = xij + fi (4) (3) 59 CESifo Forum 2/2010 Focus In this decomposition, M1 captures intraregional (or domestic) effects, M2 contains interregional (or international) spillover (a.k.a. open-loop) effects, and M3 records interregional (or international) feedback (a.k.a. closed-loop) effects. This multiplicative decomposition can be transformed into an additive decomposition (Stone 1985), through isolating the net effects as follows: In order to analyze the interregional (or international) spillovers of a particular impact, the method of multiplier decomposition2 is employed. Suppose we have a two-region (or two-nation) system, consisting of regions r and s. The above equation (6) can be rewritten as follows:3 xr A rr s sr x = A y r V rr s sr y V A rs Crr A ss sr V rs 0 V ss 0 C Crs xr f r Css xs f s + 0 y r g r 0 y s gs (8) M 3 M 2 M1 = I + (M1 - I ) + (M 2 - I )M1 + (M 3 - I )M 2M1 We can isolate the intraregional and interregional elements of the coefficient matrix in the following manner: A rr sr A V rr sr V A rs A ss V rs V ss Crr Csr 0 0 Crs Css = 0 0 A rr 0 = rr V 0 0 A ss 0 V ss Crr 0 0 0 0 0 Css A sr + 0 0 0 V sr In the above additive form, (M1-I) indicates the net intraregional effects, (M2-I)M1 shows the net interregional spillover effects, and (M3-I)M2M1 captures the net interregional feedback effects. Analyzing these decomposed multiplier may reveal to what extent the higher-order effects can propagate intraregionally and interregionally. (9) A rs 0 V rs 0 0 Csr 0 0 The empirical model used in this paper is the 2000 Asian International Input-Output Table published by the Institute of Developing Economies (IDE), the Japan External Trade Organization (JETRO). This table includes nine countries and one region (Indonesia, Malaysia, Philippines, Singapore, Thailand, China, Taiwan, Korea, Japan, and the United States) with seven industrial sectors (agriculture, mining, manufacturing, utility, construction, trade and transport and services). This is the only officially available data source for this type of international input-output table, while the data year 2000, is a bit earlier than the year when the event occurred (the end of 2004), implying that some of the international trade relationships as well as the domestic economic structures may have changed between these years, especially with China. In addition, since the original international input-output table is a multiregional table, in which the international final demand transactions and wage transactions are not separated from the domestic final demand and wage values, when transformed to the Miyazawa structure, the consumption coefficient matrix C and the value added coefficient matrix V are converted to blockdiagonal matrices, having zeros in interregional blocks. Crs 0 0 0 Then, the multiplier matrix in equation (7) can be decomposed in the following multiplicative form: B (I + CKVB ) BCK = M 3M 2M1 KVB K (10) where: M1 = I - A -1 -1 2 ; M 2 = I + A* ; and M 3 = I - (A* ) ; while A ª A rr « «0 « V rr « ¬0 Crr 0 A ss 0 V 0 0 ss 0 0 º » Css » and A* = I - A 0 » » 0 ¼ A - A . -1 2 The detailed illustration of multiplier decomposition is articulated in Millar and Blair (2009). 3 For more precise formulation based on the Isard’s fully specified interregional model, the final demand vector in this formula should have the interregional components and thus should become a matrix. Because the damages brought by a hazard will not have interregional damages, this formulation, a multiregional model, is sufficient in this setting. After all, damages caused by a hazard are indeed very much localized. CESifo Forum 2/2010 (11) The sectors in the original model are aggregated as much as possible to fit with the data of damages and losses in order to maintain the detail and reliability of the input data. The IO model is a demand driven 60 Focus Table 1 111 166 186 167 Damages 1,389 409 68 27 132 1,136 9 18 550 280 Losses 39 148 0 3 89 Data 2,664 Analysis Sectors in model Agriculture Mining Manufacturing Utilities Construction Trade & transport Services HH income decrease The economic impacts of the 2004 Indian Ocean earthquake and tsunami for Indonesia and Thailand, and other Asian countries are calculated and evaluated in this subsection. Table 1 shows the input data, damages and losses, and the results, output impact and income impact in Indonesia. The derived total impacts amount to 2,386 million US dollars (0.93 percent of 2004 GDP) for output and 1,219 million for income. The most significant output impact falls on manufacturing with 814 million US dollars (with 280 million of output decrease as loss), followed by agriculture with 672 million. The sectors with large impact tend to be accompanied with large losses, while the other sectors with small or no losses, such as mining, utilities, and construction, have limited higher-order effects. This may lead to the relatively small impact multiplier of 2.10. Converted Output decrease 550 0 280 3 0 148 116 39 1,136 Demand decrease 410 0 158 3 0 113 80 1,219 61 Calculated Output impact Income impact 672 69 814 30 20 370 412 1,219 2,386 The derived impact for Thailand on output and income are 3,205 million US dollars (1.99 percent of 2004 GDP) and 1,240 million, respectively, as seen in Table 2. The total impacts fall mostly on services (including tourism industry) with 1,535 million (48 percent of the total output impact). Meanwhile, manufacturing has a sizable impact of 872 million US dollars (27 percent of the total output impact), indicating that Thailand’s domestic industries are highly interwoven and interdependent so that the total impacts spread across the sectors. However, the calculated impact multiplier is 1.90 – a relatively low value. This implies that while the tourism industry is one of the major industries in Economic impacts of 2004 Indian Ocean earthquake and tsunami – Indonesia (in 2007 million US dollars) Sector Infrastructure Housing Transport Electricity Water & sanitation Urban & municipal Water resources Social Health & nutrition Education Production Agriculture Industry Service Tourism Total Source: Author’s calculation. model so that the input to model should be the form of changes in final demand, and then changes in output will be derived. Therefore, losses (decreased output level) are converted to final demand change in each sector, using Miller and Blair’s (2009) method – dividing the changes in output (output loss) by the diagonal term of the Leontief inverse matrix for IO model. Then, the derived changes in final demand model are multiplied with Leontief inverse matrix to calculate impact by sector. Because of extension to the Miyazawa framework, the model can yield both the output impact (higher-order effects) and the impact on income generation (income impact) as the results. CESifo Forum 2/2010 Focus Table 2 Damages 22 7 4 1 15 3 Losses 0 9 10 3 Sectors in model Agriculture Mining Manufacturing Utilities Construction Trade & transport Services HH income decrease Converted Output decrease 102 0 93 13 0 9 1,473 0 1,690 Demand decrease 89 0 58 10 0 7 946 1,240 62 Calculated Output impact Income impact 228 33 872 132 3 401 1,535 1,240 3,205 So, does this mean that this type of localized but multi-country disaster can have any global economic impact? At this stage of the analysis the answer would be probably ‘No’, since the high- Economic impacts of 2004 Indian Ocean earthquake and tsunami – Thailand (in 2007 million US dollars) 9 102 93 Data 75 1,470 1,690 Table 3 indicates the impacts for these countries. Except those directly affected countries Indonesia and Thailand, Japan receives the largest total impacts (thus the largest higherorder effects, since there are no first-order losses in Japan) in this system, with 428 million US dollars. The United States has the second largest total impacts of 306 million. China follows these two countries and has USD 156 million of the total impacts. Among the sectors, manufacturing has the most significant impact in total (2,307 million US dollars) and for each country in this system. This also is an evidence of increasing interdependence among manufacturing firms through international trades a la vertical specialization. Compared to the total impacts in Indonesia and Thailand and to their own GDPs, these impacts in the other countries can be considered as negligible. At the same time, for the system as a whole, the aggregated total impacts reach 6,761 million US dollars with the impact multiplier of 2.39, and these numbers are noticeably larger than the above two countries’. For the multi-country disaster case such as this Indian Ocean earthquake and tsunami, this type of international analysis is useful to capture the comprehensive picture of the impacts. CESifo Forum 2/2010 376 509 As seen above, the impacts of the event appear not so large within the two countries (0.93 percent of GDP in Indonesia and 1.99 percent of GDP in Thailand). With increased economic interdependency between countries through international trades, this simultaneous damages and losses in multiple neighboring countries may bring the higher-order effects to other surrounding countries or even globally. As described in the previous subsection, the model used for this particular case (2000 Asian International IO Table) includes the above two countries, seven other Asian countries, and the United States so that the impacts to those countries can be estimated. Sector Infrastructure Housing Transport Electricity Water & sanitation Urban & municipal Water resources Social Health & nutrition Education Production Agriculture Industry Service Tourism Total Source: Author’s calculation. Thailand, the losses are concentrated on one industry (tourism) and thus the total impacts are somehow limited and not widely spread to the entire economy. Focus Table 3 Malaysia 2 5 36 1 0 5 9 58 22 Philippines 1 0 7 1 0 2 2 14 5 Singapore 0 0 33 1 0 7 9 50 12 14 156 39 China 19 7 96 6 1 14 15 69 24 Taiwan 2 0 42 1 1 9 19 90 26 Korea 3 0 59 2 0 7 110 428 154 Japan 8 1 230 11 4 64 114 306 143 USA 13 4 120 7 2 47 2,239 6,761 2,855 Total 948 118 2,307 192 30 926 63 Thailand 228 33 872 132 3 401 1,535 3,205 1,240 Now, the decomposition of total impact to intraregional (domestic: Indonesia, and Thailand) effects, interregional (international) spillover effects and interregional (international) feedback effects, based on the multiplier decomposition technique described in the previous subsection, is summarized in Table 4. With the gross multipliers, the domestic effect in both Indonesia and Thailand becomes around 81 percent of the total impact, while international spillover effect and international feedback effect are estimated to be around 18 and 0.4 percent, respectively. When using the net multipliers, subtracting initial demand decrease, these figures change to 77, 23 and 0.5 percent, respectively. Since the initial demand decrease only falls on to the countries where the event occurred, the net percentages become larger than the gross numbers. In either way, the non-domestic effects, summing international spillover effect and international feedback effect, are quite significant, being the range around one fifth of the total impact. This is not a negligible share. Indeed, looking at the actual values, the sum of international spillover effect and international feedback effect and the initial demand decrease are nearly equal, 1.85 and 1.92 billion US dollars, respectively. This is a striking result indicating that the size of initial demand decrease, which is converted from the value of losses, is transmitted to and is replicated in the rest of system. At the same time, the distribution of non-domestic effects across sectors is quite different from the one for the initial demand decrease. While service sector in Thailand is the largest demand decrease, followed by agriculture sector and manufacturing sector in Indonesia, the manufacturing sector in the rest of the system is the largest for the non-domestic effects, and services sector and trade and transport sector are the second and third. This difference in the distribution may come from the two factors: the one is the distribution of losses which determines the origin of impact path and the path itself – forward and backward linkages of inter- Spatial distribution of total impacts of 2004 Indian Ocean earthquake and tsunami (in 2007 million US dollars) Sectors in model Indonesia Output Agriculture 672 impact Mining 69 Manufacturing 814 Utilities 30 Construction 20 Trade & 370 transport Services 412 Total 2,388 Income impact 1,219 Source: Author’s calculation. er-order effects to other surrounding countries are very small in value. As described in the previous subsection, the derived economic impacts do not include the positive impacts from recovery and reconstruction activities in the respective countries. If included, the economic impacts to other surrounding countries may become much smaller than the values in Table 3. Thus, we need to further analyze the derived total impact in detail through the decomposition into domestic and non-domestic (international) effects. CESifo Forum 2/2010 Focus Table 4 Indonesia Thailand Rest of system Total Agriculture Mining Manufacturing Utilities Construction Trade & transport Services HH income Agriculture Mining Manufacturing Utilities Construction Trade & transport Services HH income Agriculture Mining Manufacturing Utilities Construction Trade & transport Services HH income Source: Author’s calculation. Total impact 671 68 812 30 20 370 407 1,202 227 32 859 131 3 397 Domestic effect 667 65 794 30 19 364 4 13 1 1 9 1 0 3 International spillover effect 4 2 16 0 0 5 0.69 2.63 0.26 0.07 2.60 0.14 0.00 0.65 International feedback effect 0.65 0.99 2.38 0.06 0.04 0.76 0.15 0.53 100 100 100 100 100 100 1.07 1.28 0.58 2.25 1.33 0.49 0.34 0.83 Gross % 0.63 4.33 2.24 1.45 1.20 1.53 0.40 0.53 100 100 100 100 100 100 1.33 1.33 0.94 2.25 1.42 0.53 0.34 0.84 Net % 1.62 4.33 2.77 1.59 1.20 2.20 0.23 16.89 9.05 no initial loss 282.96 253.78 no initial loss 144.61 0.43 40.08 0.26 no initial loss 5.36 4.98 no initial loss 2.78 Non-domestic effect/Initial demand decrease (%) 0.84 no initial loss 8.43 3.43 no initial loss 4.71 Decomposition of total impact to domestic and international effects (in 2007 million US dollars) Demand decrease 410 0 158 3 0 113 411 1,218 228 33 871 132 3 401 0.48 1.34 0.58 0.30 7.59 0.41 0.10 2.15 Non-domestic effects Output decreases (loss) 550 0 280 3 0 148 80 39 89 0 58 10 0 7 2 5 45 21 602 32 8 171 Decomposition of total impact 116 39 102 0 93 13 0 9 1,532 1,233 0 0 0 0 0 0 36.52 1301.86 1,535 1,239 45 21 610 33 8 173 100 100 23.42 946 0 0 0 0 0 0 0 100 100 18.85 1,473 0 0 0 0 0 0 0 4.68 6.35 36 0.37 0.45 0 0 1,912 370 501 1,814 18.49 22.96 0 0 2,826 0 0 7,963 81.15 76.58 375 508 9,813 Gross % Net % 64 CESifo Forum 2/2010 Focus ment above, has made such complexity and interdependency of economic activities in the world. More thorough analysis using two (or more) different time points with the same disaster situation, which may reveal how the progress of globalization affects the propagation of disaster impact, is called for. If proper development and domestic policy and appropriate recovery and reconstruction strategies were not practiced, these higher-order effects would spread over globally. industry relationship; and the other is the international trade relationships which lead to the extent of international spillover effect and feedback effect. As globalization is reaching every corner of the world, these domestic and international inter-industry relationships have become so intertwined, and thus they demand a careful inspection. The effects on household income deserve some discussion. The initial household income decrease amounts to just 39 million US dollars in Indonesia due to housing damages, whereas the total impact on household income is estimated as almost 3 billion US dollars, more than 75 times larger than the initial one. The total impact on household income includes wage decrease due to the decreased output, caused not only by the damages and through interindustry production relationships but also by the consumption decrease due to such wage declines, leading to further ripple effect on the wage-consumption relationship. It is also remarkable that the interregional spillover effect on household income becomes around 500 million US dollars and this effect creates further repercussions in the rest of system, bringing further USD 6 million of household income decrease. At the same time, all of the derived results above include only negative impact of losses without having positive impact of recovery and reconstruction activities; thus, they are after all potential total impact. Perhaps, in the real event, the propagation of negative impact to other countries was very minimal, if at all, because the negative impact was cancelled out with (or the propagation was avoided by) the positive impact of recovery and reconstruction activities. However, this fact does not undermine the results in this paper, since without such recovery and reconstruction activities the results of this paper would have been unfolded and materialized. And, some parts of recovery and reconstruction activities were aided and financed by the international organizations and international community. This implies that if proper development and domestic policy to install countermeasures for such hazards and appropriate recovery and reconstruction strategies were not practiced, these higher-order effects would have spread over the world. In other words, the localized risk of natural hazard will be shared with, or extend to global community. This is the true issue of globalization and localization of hazard risk. Summary and conclusions In this paper, the total impacts of the 2004 Indian Ocean earthquake and tsunami were estimated using the 2000 Asian International Input-Output Table. The results show that the higher-order effects and total impacts of disasters are significant and complex domestically. The spread of higher-order effects to other surrounding countries do exist, while the value per se is relatively small compared to the localized higher-order effects and to their respective size of the economy. However, this does not mean that there is little global or international ripple effect of the disaster impact. Rather, with the multiplier decomposition technique, the non-domestic effect including international spillover effect and international feedback effect consists of around 20 percent of total impacts, in both gross and net analyses. The results also display that the distribution of higherorder effect across sectors is quite different from that of initial losses, especially for the non-domestic ones. This is caused by the increased complexity of domestic economic structure as well as of international trade. The effect of globalization, especially the first half of 2 and 3 in the Albala-Bertrand argu- The data for damages and losses used as input for estimation in this paper are based mostly on the ECLAC methodology (UN ECLAC 2003). While the accuracy of these data is the key for the precision of the estimated results and in this regard the data collection methodology needs to be streamlined further (Greenberg et al. 2007), this ECLAC methodology can standardize the assessment of damages and losses of a disaster, and this standardization not only enables inter-disaster comparison but also encourages the discussion of mitigation, preparedness against disasters and vulnerability analysis of economies based on the common framework. An important next step would be to make the estimation methodology of higherorder effects a part of a standardized methodology – such as the ECLAC methodology – evaluating a more accurate measure of disaster impacts. 65 CESifo Forum 2/2010 Focus References Albala-Bertrand, J. M. (1993), The Political Economy of Large Natural Disasters: With Special Reference to Developing Countries, Oxford: Clarendon Press. Albala-Bertrand, J. M. (2007), “Globalization and Localization: An Economic Approach”, in: Rodriguez, H., E. L. Quarantelli, and R. R. Dynes (eds.), Handbook of Disaster Research, New York: Springer, 147–167. Asian Disaster Preparedness Center (ADPC, 2005), Regional Analysis of Socio-Economic Impacts of the December 2004 Earthquake and Indian Ocean Tsunami, Bangkok. Cochrane, H. C. (1997), “Forecasting the Economic Impact of a Midwest Earthquake”, in: Jones, B. G. (ed.), Economic Consequences of Earthquakes: Preparing for the Unexpected, Buffalo, NY: National Center for Earthquake Engineering Research, 223–247. Gordon, P. and H. W. Richardson (1996), The Business Interruption Effects of the Northridge Earthquake, Lusk Center Research Institute, University of Southern California, Los Angeles. Greenberg, M. R., M. Lahr and N. Mantell, (2007), “Understanding the Economic Costs and Benefits of Catastrophes and Their Aftermath: A Review and Suggestions for the U.S. Federal Government”, Risk Analysis 27, 83–96. Hallegatte, S. (2008), “An Adaptive Regional Input-Output Model and Its Application to the Assessment of the Economic Cost of Katrina”, Risk Analysis 28, 779–799. Hewings, G. J. D. and R. Mahidhara (1996), “Economic Impacts: Lost Income, Ripple Effects, and Recovery”, in: Changnon, S. A. (ed.), The Great Flood of 1993: Causes, Impacts, and Responses, Boulder, CO: Westview Press, 205–217. Miller, R. E. and P. D. Blair (2009), Input-Output Analysis: Foundations and Extensions, Second Edition, New York: Cambridge University Press. Miyazawa, K. (1976), Input-output Analysis and the Structure of Income Distribution, New York: Springer. Okuyama, Y. (2007), “Economic Modeling for Disaster Impact Analysis: Past, Present, and Future”, Economic Systems Research 19, 115–124. Okuyama, Y. and S. Sahin (2009), Impact Estimation of Disasters: A Global Aggregate for 1960 to 2007, World Bank Policy Research Working Paper 4963. Okuyama, Y., G. J. D. Hewings and M. Sonis (1999), “Economic Impacts of an Unscheduled, Disruptive Event: A Miyazawa Multiplier Analysis”, in: Hewings, G. J. D., M. Sonis, M. Madden and Y. Kimura (eds.), Understanding and Interpreting Economic Structure, Berlin: Springer, 113–144. Rose, A. (2004), “Economic Principles, Issues, and Research Priorities in Hazard Loss Estimation”, in: Okuyama, Y. and S. E. Chang (eds.), Modeling Spatial and Economic Impacts of Disasters, New York: Springer, 13–36. Rose, A., J. Benavides, S. E. Chang, P. Szczesniak and D. Lim (1997), “The Regional Economic Impact of an Earthquake: Direct and Indirect Effects of Electricity Lifeline Disruptions”, Journal of Regional Science 37, 437–458. Stone, S. R. (1985), “The Disaggregation of the Household Sector in the National Account”, in: Payatte, G. and J. I. Round (eds.), Social Accounting Matrices: A Basis for Planning, Washington DC: The World Bank Group, 145–185. United Nations Economic Commission for Latin America and the Caribbean (UN ECLAC, 2003), Handbook for Estimating the Socio-Economic and Environmental Effects of Disasters, Santiago, Chile. West, C. T. and D. G. Lenze (1994), “Modeling the Regional Impact of Natural Disaster and Recovery: A General Framework and an Application to Hurricane Andrew”, International Regional Science Review 17, 121–150. CESifo Forum 2/2010 66 Focus A HURRICANE HITS HAWAII: A TALE OF VULNERABILITY TO NATURAL DISASTERS ties to these disasters. We then assess the impact of Iniki on the island of Kauai, and finish by describing the current state of knowledge on the connection between climate change and storms. MAKENA COFFMAN AND ILAN NOY* The economics of natural disasters The economy of the State of Hawaii, with its unique set of vulnerabilities, will most likely be impacted differently by large disaster events than significantly bigger countries. Storms, unlike geo-physical disasters such as earthquakes and volcanic eruptions, are fairly expected events with some advance warning, even if their ferocity can be unpredictable. This level of certainty, together with the resources that can be mobilized both before and after a storm hits, also differentiate Hawaii’s likely experience with that of, for example, Japan’s experience with the surprise of the Kobe earthquake or hurricane Nargis’ impact on Myanmar where little ex ante preparation occurred. (Several papers identify the importance of institutional characteristics and the type of disaster in determining the post-disaster outcomes in terms of mortality, direct damages, and long-term economic cost – see e.g. Skidmore and Toya 2002; Kahn 2004; Anbarci et al. 2005; Noy and Nualsri 2007; Noy 2009; Cavallo, Galiani, Noy and Pantano 2010.) Introduction Hurricane Iniki, which hit the island of Kauai on 11 September 1992, was the strongest hurricane that hit the Hawaiian Islands in recorded history, and the one that wrought the most damage, estimated at USD 7.4 billion (in 2008 USD) though fortunately mortality was low. Today, with the evident warming of the planet and the changes in the patterns of climatic events that are predicted to accompany such warming, the importance of understanding the longterm economic impact of natural disasters cannot be overstated. Research in both the social and natural sciences has been devoted to increasing our ability to predict disasters and prepare for them; but curiously, there are few analyses of their ex-post economic impact. We were surprised to realize at the onset of this project, for example, that no comprehensive or even cursory attempt has been made to account for the long-term impact of hurricane Iniki on the economy of the island of Kauai; nor, as far as we know for any other natural disaster that has previously impacted the Hawaiian islands. Two research projects have investigated the impact of hurricanes on economies in the Caribbean. Given similarities between island economies, these studies are likely to provide more insight into the case of Hawaii. Rasmussen (2004) conducts a tabulation of the data for the island members of the Eastern Caribbean Currency Union (ECCU). He finds that: “among these […] the median number of affected persons amounted to 9 percent of the country’s population and the median value of damage was equivalent to 14 percent of the country’s annual GDP” (Rasmussen 2004, 7).1 Here, we would like to focus on Iniki’s impact on the economy of Kauai. Observing Iniki’s impact is easier both because of the availability of ex post, long-term data and because of the existence of an obvious control group (the island of Maui). Because Hawaii’s experience with disasters is not in any way unique, we first describe the current state of the literature that examines the economics of disasters in small island (mostly nation-) states, and discuss a recent attempt by the United Nations to assess vulnerabili- 1 Though, as Rasmussen (2004) points out, some events can be significantly worse. “For example, in 1979 hurricane David hit Dominica killing 42 people, damaging 95 percent [of GDP] and completely destroying 12 percent of buildings, damaging or destroying the entire banana crop and 75 percent of the country’s forests, rendering virtually the entire population homeless, and leading to the temporary exodus of about a quarter of the population” (Rasmussen 2004, 7). * University of Hawaii-Manoa. 67 CESifo Forum 2/2010 Focus Because Hawaii is a State and not a country, Baritto’s set of indicators do not necessarily translate to the case of Hawaii. Nonetheless, the general themes of his vulnerability assessment remain: (1) diversification of export products and destinations, (2) levels of wealth, (3) net food import ratio, (4) manufacturing and services value-added proportion, and (5) characteristics of imports. We briefly discuss each in turn. Heger et al. (2008) also focus on Caribbean islands (not limiting themselves to ECCU countries only). Their results also do not agree with the earlier largely optimistic research which concluded that disasters are typically followed by a period of higher growth. They find that as growth collapses, the fiscal and trade deficits both deteriorate and the island economies of the region find it difficult to rebound from the short-run impact of the disaster. They relate this deepening recession to the reliance of island economies in the region on very few sectors. Regions with a large export sector will generally be less vulnerable to disasters because the demand markets for products will presumably be unaffected. At the same time, an economy with a less diversified set of export products is generally more vulnerable to external shocks. Hawaii has a very small manufacturing export base, with 2.4 percent of the value of Hawaii’s USD 90.2 billion economy, roughly 2.2 billion US dollars. By far the largest export sector in the state is tourism. Although tourism activities take place within the State, goods and services are ‘exported’ to out-of-State consumers. Tourism, with its heavy reliance on domestic infrastructure and public perceptions, is different than other export sectors in terms of its vulnerability to disasters. Tourism activity typically decreases significantly following disasters, as was the case after hurricane Iniki (see next section). Hawaii’s tourism sector accounts for 22 percent of Hawaii’s state gross product or seven times the value of all other exported goods. As is often the case, this sector is not even diversified in terms of destinations. Nearly 70 percent of visitor expenditures are from the continental United States. Japanese visitors comprise 15.5 percent of spending and Canadian visitors only 5 percent. Vulnerabilities to disasters Regions are vulnerable to disasters for many reasons. Besides traditionally conceived geographical characteristics such as proximity to coastal areas, volcanoes or tectonic fault lines, there is a growing understanding of economic conditions that make regions vulnerable as well. Economic circumstances may lead to resiliency in the aftermath of a disaster or, alternatively, exacerbate its impacts. Vulnerability has been defined in many ways. The United Nations International Strategy for Disaster Reductions describes it as the conditions determined by physical, social, economic and environmental factors or processes, which increase the susceptibility of a community to the impacts of hazards. Resiliency, the antonym of vulnerability, is described as the capacity of a system, community or society potentially exposed to hazards to adapt by resisting or changing in order to reach and maintain an acceptable level of functioning and structure (United Nations 2010). Vulnerability (or conversely resiliency) to hazards can be categorized both ex-ante and ex-post. Ex-ante vulnerability is described by indicators such as frequency and magnitude of disaster events, susceptibility of the economy to be impacted by external shocks, and existence of disaster management plans such as adequate shelters. Ex-post vulnerability is characterized by the ability to recover from the aftermath of a disaster. Relevant factors include success in the deployment of disaster management plans, access to inflows of outside aid, and the ability of different economic sectors to rebound. For the purposes of this note, and as a useful example, we briefly discuss the economic characteristics of vulnerability in Hawaii. Per capita income in Hawaii in 2007 was 39,239 US dollars, which is relatively high for an island economy. High income better enables reconstruction activity. Nonetheless, in terms of distribution, nearly 11 percent of the population is considered to be living under the poverty line. The poor are generally much more vulnerable during disasters, as the events following hurricane Katrina amply and painfully demonstrate. Baritto (2008) also suggests that regions with high levels of food imports are more vulnerable to disasters, particularly depending on the infrastructure required to bring in food. Over 85 percent of the food consumed in Hawaii is imported through one primary port (Leung and Loke 2008). This suggests Baritto (2008) assesses which factors can make an economy sensitive to the impact of external shocks. CESifo Forum 2/2010 68 Focus that Hawaii’s food ‘infrastructure’ may be quite vulnerable in the case of disaster. Figure 1 UNEMPLOYMENT RATE IN KAUAI AND MAUI 1990 TO 2008 not seasonally adjusted 20 % Kauai’s hurricane Iniki 15 Kauai County Hurricane Iniki hit land on the south shore of Kauai on the 10 afternoon hours of 11 September 1992: for a more detailed 5 description of Iniki’s trajectory Maui County and consequences, see Coff0 man and Noy (2009). CRED1990 1992 1994 1996 1998 2000 2002 2004 2006 2008 EMDAT, the most comprehenSource: University of Hawaii Economic Research Organization (UHERO) database. sive and readily available international data source on natural Japanese economy was suffering from the aftermath disasters, estimates that 4 people were killed, 25,000 of its real estate and stock market bubbles. However, were affected, and there was USD 7.4 billion (2008 immediately after the hurricane, unemployment on USD) destruction of infrastructure and property. Kauai shot up to 17 percent. Maui, our control According to the National Oceanic and Atmosgroup, also experiences a rise in unemployment as a pheric Administration (NOAA), 14,350 homes result of the Japanese financial crisis, but on Maui were damaged or destroyed on Kauai, and electric unemployment peaked at only 9 percent. Clearly, the power and telephone service were lost throughout drastic rise in unemployment was primarily due to the island and only 20 percent of the power had Iniki. been restored four weeks later. Crop damage was likewise extensive. Maybe more striking is that it took Kauai seven years for its labor market to recover to its previous Iniki was not the only hurricane to hit Kauai in the pre-Iniki unemployment rate of 7 percent (by that past 50 years but the direct destruction that Iniki time, Maui’s unemployment was less than 5 percent). wrought was unprecedented. These direct impacts, This pattern of a recovery that takes seven to eight however, do not necessarily represent the longer-run years, while evident in several other statistics, is also indirect economic effects of the hurricane. misleading because there was a striking influx of resDistinguishing these long-term economic effects is, ident out-migration. Figure 2 presents population however, not easy since Kauai, like the other figures for Kauai and Maui. Hawaiian Islands, was hit at about the same time by a prolonged and painful recession in Japan. The similarities Figure 2 between Kauai and Maui (another Hawaiian island that RESIDENT POPULATION OF KAUAI AND MAUI 1970 TO 2008 in thousands was not hit by the hurricane), Maui County Kauai County 150 70 enable us to identify more definitively the hurricane’s economic 126 58 effects. The massive destruction of property and infrastructure resulted in a dramatic rise in unemployment as is shown in Figure 1. Unemployment was already inching up from a low of around 3 percent in 1990 to 7 percent just before the hurricane as the 102 46 78 34 54 22 30 10 1970 1975 1980 1985 1990 1995 2000 2005 Source: University of Hawaii Economic Research Organization (UHERO) database. 69 CESifo Forum 2/2010 Focus Figure 3 TOURIST ARRIVALS FOR KAUAI AND MAUI 1970 TO 2008 seasonally adjusted, in thousands Maui County Kauai County 700 400 600 300 tant in spite of the events of 11 September 2001, and visitor arrival numbers only reached the pre-Japanese bubble numbers of 1990 in 2006. A reason why Kauai’s experience with Iniki could have been much worse is evident once one 500 200 examines the amount of funds the county received from state 400 100 and federal sources (see Figure 4). Clearly, the spike in 300 0 funds associated with Iniki 1990 1992 1994 1996 1998 2000 2002 2004 2006 2008 enabled a quicker recovery Source: University of Hawaii Economic Research Organization (UHERO) database. than otherwise would have been the case. However, even with this massive increase in Both islands seem to follow a similar population tratransfers to the state government (about 450 miljectory starting in 1970, with both experiencing a lion US dollars), the economy of Kauai only recovvery constant rate of population increase. However, ered after nearly a decade, and by some measures Kauai’s population trajectory shifts in 1992. For sevit had never recovered. eral years after that (about seven to eight) the population is constant, but the rate of population increase after that is slower than before. Not only does Kauai Climate change and natural disasters not recover the population it ‘lost’ as a result of the hurricane, it has yet to return to its previous growth The Intergovernmental Panel on Climate Change rate. In that sense, Kauai seems to have permanent(IPCC 2007) states that: ‘warming of the climate sysly ‘lost’ about 10 percent of its population. By comtem is unequivocal, as is now evident from observaparing Kauai and Maui’s population trajectories, it tions of increases in global average air and ocean again becomes apparent that the changes in Kauai temperatures, widespread melting of snow and ice were the result of Iniki since both were exposed to and rising global average sea level’. Average global the same external economic conditions beffeting the surface warming is projected to increase by between islands during the 1990s. 1.8 and 4 degrees Celsius depending on the success of emissions mitigation strategies by 2100 (IPCC Figure 3 examines the tourism sector in both islands 2007). The 2007 IPCC report predicts sea levels to by looking at tourist arrival data for the years surrounding the hurricane. The tourism cycle seems to be highly Figure 4 correlated between the two islands, except for the seven to TRANSFER PAYMENTS FOR KAUAI AND MAUI 1969 TO 2007 in million US dollars eight years following Iniki. Maui County Kauai County 800 600 Immediately after the hurricane, tourist arrivals drop by 70 percent, with a temporary spike 600 450 up in tourist arrivals in Maui when previously booked trips 400 300 were re-directed to Maui facilities. Kauai’s tourism based 200 150 economy only recovered almost a decade later when tourist arrivals climbed back up to pre0 0 1969 1973 1977 1981 1985 1989 1993 1997 2001 2005 Iniki numbers in 2000. This number remained fairly consSource: University of Hawaii Economic Research Organization (UHERO) database. CESifo Forum 2/2010 70 Focus dependence on ocean ecosystems, and limited fresh water availability), but also on the economic conditions of islands (tourism dependence, narrow export markets, large import base and limited agricultural production). As the case of Iniki shows, high dependence on tourism made Kauai particularly vulnerable in the aftermath of the storm. It was difficult for Kauai’s economy to rebound quickly as it immediately lost its primary export and income generator: visitors. Kauai did not regain its previous levels of visitor arrivals until 2000, eight years after Iniki hit. That resulted in out-migration of Kauai residents from which the island has never fully recovered. rise between 0.18 and 0.59 meters by 2100. Current predictions of global sea level rise are considerably more drastic, however, as increased information on glacial melting has become available since 2005. In addition, the absorption of carbon in the ocean has lead to increased acidity and has resulted in calcification of coral reefs. Coral bleaching leads to destruction of surrounding ecosystems, both harming fisheries and deteriorating reef systems that protect coastal areas from storm surges. There is limited understanding on how global warming will affect hurricanes (or cyclones). There are five necessary conditions for hurricane formation: (1) ocean water temperature greater than 26 degrees Celsius (80 degrees Fahrenheit) to a depth of about fifty meters, (2) an unstable atmosphere (i.e. thunderstorm activity), (3) high relative humidity in the middle troposphere, (4) a pre-existing disturbance with cyclonic circulation, and (5) little to no change in the wind speed or direction so that warm air is concentrated over one area (Businger 2009). Several studies posit that, as global sea surface temperatures rise, there will either be more or more intense hurricanes (see e.g. Webster et al. 2005). References Anbarci, N., M. Escaleras and C. A. Register (2005), “Earthquake Fatalities: The Interaction of Nature and Political Economy”, Journal of Public Economics 89, 1907–1933. Benson, C. and J. C. Edward (2004), Understanding the Economic and Financial Impacts of Natural Disasters, World Bank Disaster Risk Management Series 4. Businger, S. (2009), Hurricanes in Hawaii, Poster Developed for the Hurricanes and Extreme Weather Phenomena Symposium, http://www.soest.hawaii.edu/MET/Faculty/businger/poster/hurricane. Cavallo, E., S. Galiani, I. Noy and J. Pantano (2009), Disasters and Institutions, mimeo. Coffman, M. and I. Noy (2009), Hurricane Iniki: Measuring the Long-term Economic Impact of a Natural Disaster Using Synthetic Control, University of Hawaii Economics Working Paper 09-05. The science, however, is not entirely conclusive. IPCC (2007) states that: ‘there is observational evidence of an increase in intense tropical cyclone activity in the North Atlantic since about 1970, with limited evidence of increases elsewhere. There is no clear trend in the annual numbers of tropical cyclones. It is difficult to ascertain longer-term trends in cyclone activity, particularly prior to 1970’ (IPCC 2007). Elsner et al. (2008) suggested that warming temperatures allowed for already strong storms to get even stronger; while there may not necessarily be an increased occurrence of storms, there will be an increased occurrence of strong storms. Islands are extremely vulnerable to the expected (and often already occurring) effects of climate change. Sea level rise will exacerbate inundation, storm surge, erosion and other coastal hazards (IPCC Working Group II 2007). Cuaresma, J. C., J. Hlouskova and M. Obersteiner (2008), “Natural Disasters as Creative Destruction? Evidence from Developing Countries”, Economic Inquiry 46, 214–226. Elsner, J., J. Kossin and T. Jagger (2008), “The Increasing Intensity of the Strongest Tropical Cyclones”, Nature 455, 92–95. Heger, M., A. Julca and O. Paddison (2008), Analysing the Impact of Natural Hazards in Small Economies: The Caribbean Case, UNU/WIDER Research Paper 2008/25. Intergovernmental Panel on Climate Change (IPCC, 2007), Climate Change: The Physical Science Basis, Geneva: IPCC. IPCC Working Group II (2007), “Summary for Policymakers”, in: Parry, M. L., O. F. Canziani, J. P. Palutikof, P. J. van der Linden and C. E. Hanson (eds.), Climate Change 2007: Impacts, Adaptation and Vulnerability”, Contribution of Working Group II to the Fourth Assessment Report of the Intergovernmental Panel on Climate Change, Cambridge: Cambridge University Press, 7–22. Kahn, M. E. (2004), “The Death Toll from Natural Disasters: The Role of Income, Geography, and Institutions”, Review of Economics and Statistics 87, 271–284. Landsea, C. W., B. A. Harper, K. Hoarau and J. A. Knaff (2006), “Can We Detect Trends in Extreme Tropical Cyclones?” Science 313, 452–454. Leung, P. and M. Loke (2008), Economic Impacts of Increasing Hawaii’s Food Self-Sufficiency, mimeo. Noy, I. (2009), “The Macroeconomic Consequences of Disasters”, Journal of Development Economics 88, 221–231. Conclusion Noy, I. and A. Nualsri (2007), What Do Exogenous Shocks Tell Us about Growth Theories?, University of Hawaii Working Paper 07-28. Islands are vulnerable to effects of climate change with very high confidence (IPCC Working Group II 2007). This assessment is based not, however, only on the physical implications of climate change on island ecosystems (proportionately larger coastal areas, Perrow, C. (2007), The Next Catastrophe: Reducing Our Vulnerabilities to Natural, Industrial, and Terrorist Disasters, Princeton: Princeton University Press. Raschky, P. A. (2008), “Institutions and the Losses from Natural Disasters”, Natural Hazards Earth Systems Science 8, 627–634. 71 CESifo Forum 2/2010 Focus Rasmussen, T. N. (2004), Macroeconomic Implications of Natural Disasters in the Caribbean, IMF Working Paper WP/04/224. Skidmore, M. and H. Toya (2002), “Do Natural Disasters Promote Long-Run Growth?”, Economic Inquiry 40, 664–687. United Nations (2010), Terminology of Disaster Risk Reduction, http://www.unisdr.org/eng/library/lib-terminology-eng%20home. htm. Webster, P. J., G. J. Holland, J. A. Curry and H. R. Chang (2005), “Changes in Tropical Cyclone Number, Duration, and Intensity”, Science 309, 1844–1846. CESifo Forum 2/2010 72 Focus (National Research Council 1999). 9/11, a manmade disaster, was of similar magnitude. SHORT-RUN ECONOMIC IMPACTS OF HURRICANE KATRINA (AND RITA) Covering the first year after the disaster, several studies on its economic impacts were completed. However, most of this research was from governmental reports mainly focusing on the direct losses or on speculations about future impacts on the area. Louisiana received federal reimbursements for losses of about 105 billion US dollars (Kent 2006). Nordhaus (2006) based an analysis on the economic impacts from US hurricanes since 1950 and came up with an estimate of 81 billion US dollars for hurricane Katrina. PETER GORDON*, JAMES E. MOORE II*, JIYOUNG PARK** AND HARRY W. RICHARDSON* A tropical depression formed over the southeastern Bahamas on 23 August 2005, moved toward the Gulf of Mexico, and strengthened to category 5 on the Saffir-Simpson Hurricane Scale over the central Gulf of Mexico (NCDC 2005). When hurricane Katrina made landfall on the Louisiana coast with category 3 intensity on 29 August 2005, 130mph of sustained winds breached the levees of New Orleans and caused substantial inundation. A flood following the storm, devastated the Crescent City, and the disaster was recorded as the costliest natural disaster ever in US history, resulting in an 80 percent flood in the City of New Orleans and over 1,800 casualties (Louisiana Geographic Information Center 2005). However, the total (direct, indirect and induced) economic losses were higher than these estimates, in part because of the interdependence between economic sectoral activity and household consumption. Park et al. (2006a) estimated the direct and indirect economic losses because of the inoperability of the Port of New Orleans in the seven months after the hurricane as 62.1 billion US dollars. Of course, the sectors that rely heavily on waterborne commerce were more severely affected, although all major economic sectors were negatively impacted during the storm and recovery period. The repercussions of hurricane Katrina (and hurricane Rita that happened soon after) continue until today and beyond into the future. However, most of the efforts now are focusing on housing provision, social reconstruction and community development. Of course, these have an economic impact, but this paper primarily focuses on the business interruption impacts, soon after the disaster. It is useful to examine other economic losses in the region. Several oil and gas refineries were shut down for more than a week. 115 offshore oil platforms were missing, sunk, or went adrift. One-half of 1.3 million evacuees from the New Orleans metropolitan area were not able to return in the first month after the storm, and many key workers were away for much longer (Katz et al. 2006). Prior to hurricane Katrina, the three costliest natural disasters in terms of dollar magnitude of damages recorded in the United States were the drought in 1988 with estimated losses of over 39 billion US dollars, hurricane Andrew in 1992 which cost 30 billion US dollars and the Northridge earthquake in 1994 which resulted in over 44 billion US dollars The Energy Information Administration (EIA 2006a) released a report analyzing historical impacts of tropical cyclones on Gulf of Mexico crude oil and natural gas production over the period 1960 through 2005, and refinery operations over the past 20 years. The analysis showed that tropical storms and hurricanes in the Gulf area typically cause seasonal disruption of shut-in production of 1.4 percent for crude oil and 1.3 percent for natural gas compared to * University of Southern California. ** State University of New York-Buffalo. 73 CESifo Forum 2/2010 Focus normal annual production from Figure 1 wells on the Outer Continental Shelf (OCS). However, these averages are skewed upwards by the 19 percent of oil production and 18 percent of natural gas production that was shut in during 2005. Also, the Government Accountability Office (GAO 2006) released a report addressing the factors causing natural gas price increases, influences on consumers according to the higher prices, and the adequacy of roles of federal government agencies played in ensuring natural gas prices competitive. In September 2005, natural gas spot prices increased to over 15 US dollars per million BTUs, which is roughly twice as high as the average price in July of that US national market because crude oil production as year. The skyrocketed price resulted from a substanwell as petroleum products in the area accounted for tial portion of domestic supply disruption and excesnearly three-fifths of the total US output in this secsive demand because of colder weather than expecttor in 2004 (EIA 2006b). ed (ibid). In research of economic losses because of the employment changes, a report of Bureau of Not surprisingly, the Gulf of Mexico offshore instalLabor Statistics (BLS 2006) presented the impacts of lations have a significant place in the US oil and gas Katrina on employment in the Gulf coast area by industries such that the domestic gasoline price escaexamining over-the-year changes. Employment in lated significantly right after the two storms. Figure 2 the most severely affected parish in Louisiana was indicates the fact that the effects of the hurricanes down by nearly 40 percent in September 2005 comwere not confined to the area. The total volume of pared to a year before. Colgan and Adkins (2006) production for the entire US shows an abrupt drop discussed the proportion of employment and wages in September 2005. The flow parallels the Gulf coast of the affected industries defining them as ‘ocean flow while the rest of the US shows a relatively industries’. Including oil and gas exploration as well as marine transportation and related goods and services, the Figure 2 ocean economy of the region encompassing Florida, Alabama, PETROLEUM PRODUCTION PRE- AND POST-KATRINA AND RITA Mississippi, Louisiana and Texas Million barrels per day 20 employed 291,830 people in Katrina Rita wage and salary jobs paying 15 nearly 7.7 billion US dollars for the wages in 2004. 10 CESifo Forum 2/2010 5 Sources: EIA; authors' calculation. 74 Sep 06 Jul 06 May 06 Mar 06 Jan 06 Nov 05 Sep 05 Jul 05 May 05 Jan 05 Others Mar 05 Nov 04 PADD III Sep 04 Jul 04 May 04 Mar 04 US Total 0 Jan 04 Figure 1 shows the severe impacts of two hurricanes (Katrina and Rita) on oil and gas production platforms on the coast of the Gulf of Mexico, where the inoperability of gas and oil industries severely affected the Focus multi-regional input-output model for the 50 states and the District of Columbia. Both models provide results for 47 industrial sectors (labeled the USC Sectors). NIEMO has a supply-side as well as a demand-side capability. In applications to hypothetical or actual port closures, for example, the loss of exports is best modeled via the demand-side NIEMO, whereas the loss of imports is modeled via the supply-side NIEMO. steady trend. In other words, the rapid decrease in petroleum production of the United States from September 2005 mainly resulted from reduced production in the Gulf coast. Crude oil industries in the Gulf region are closely related to port activity. The analysis conducted by Park et al. (2006a) addressed disruptions of port activity, including oil industries. This study, however, focuses on the oil-refinery industries of the Gulf of Mexico by subtracting foreign and domestic exports from the total output of oil refineries. This type of model is most useful for short-term impact analysis because buyers and sellers can be expected to eventually make substitutions in light of the price changes that follow longer-term major disruptions. Omitting these effects is a well-known limitation of the IO approach. Here, we describe how to use post-event information on concurrent demand and value-added changes to identify the technological (production function) changes that occur after a major disruption. We compare these results to the estimates from the baseline NIEMO to show the detailed impacts of substitutions and adaptations. The Gulf of Mexico region is defined as PADD III (Texas Inland, Texas Gulf Coast, Louisiana Gulf Coast, North Louisiana-Arkansas and New Mexico) shown in Figure 3. This requires spatial aggregation by modifying our National Interstate Economic Output Model (NIEMO), to 47 regions from the original 52 (including the rest-of-theworld) regions. The next section illustrates our approach to estimating direct impacts required as input data for the 47-region NIEMO, and applying what we call the Flexible National Interstate Economic Model (FlexNIEMO). As seen in Table 1, Louisiana experienced an economic decline (by 1.5 percent) in the years 2004 to 2005. According to BEA’s data, except for Louisiana and Alaska, all the other states grew in terms of Gross State Product. Also, the mining sector including oil and gas production was the most negatively impacted component of GDP. Input-output models have been applied to the problem of economic impact estimation for many years. In recent years, our group has developed and applied IO models that include substantial spatial disaggregation. Most decision makers are interested in local effects and our models can estimate these. Our National Interstate Economic Model (NIEMO) is a Methodologies Figure 3 PETROLEUM ADMINISTRATION FOR DEFENSE DISTRICT MAPS The Holt-Winters time-series approach was used to estimate normal economic trends, if the hurricanes had not occurred. These estimates provided the direct impacts necessary for input data into the demand-side NIEMO. We then used the FlexNIEMO to construct monthto-month supply-side versions of NIEMO. The Holt-Winters approach to estimating the normal economic status using times-series methodology is described in several recent articles (Park et al. 2006a; Park et al. 2006b; Richardson et al. 2007; Gordon et al. 2007). The 75 CESifo Forum 2/2010 Focus Table 1 Contributions to Percent Change in Real GSP, 2004–2005 State and region US Southeast Louisiana Agriculture, forestry, fishing and hunting – 0.05 – 0.01 – 0.05 Mining – 0.04 – 0.12 – 1.66 Utilities 0.01 0.00 – 0.07 Construction 0.13 0.27 – 0.07 Durable goods manufacturing 0.40 0.37 – 0.04 Non-durable goods manufacturing 0.08 0.08 0.48 Wholesale trade 0.07 0.13 – 0.04 Retail trade 0.20 0.32 0.03 Transportation and ware-housing 0.11 0.11 0.02 Information 0.34 0.40 0.14 Finance and insurance 0.54 0.54 0.22 Real estate, rental and leasing 0.32 0.67 – 0.41 Professional and technical services 0.48 0.47 – 0.13 Management of companies 0.01 0.04 0.05 Administrative and waste services 0.21 0.32 0.19 Educational services 0.01 0.01 – 0.02 Health care and social assistance 0.33 0.34 – 0.08 Arts, entertainment, and recreation 0.02 0.03 – 0.05 Accommodations and food services 0.13 0.17 0.00 Other services 0.06 0.06 – 0.06 Government 0.18 0.41 0.07 Total 3.60 4.60 – 1.50 Notes: Real GSP is adjusted based on 2000 dollars. The Southeast region includes Alabama, Arkansas, Florida, Georgia, Louisiana, Mississippi, North Carolina, South Carolina, Tennessee, Virginia and West Virginia. Source: US Bureau of Economic Analysis. in the IO model. The model aggregated 52 regions to 47 regions, because the Gulf of Mexico corresponds to six states, and treated the Gulf of Mexico as one region. Therefore, the newly defined NIEMO has (47x47)x(47x47) different coefficients for each month (August 2005 to September 2006) after hurricane Katrina for 47 regions and 47 sectors. approach allows the estimated coefficients to change gradually over time, based on data for previous periods and exponentially declining weights. Based on the estimated coefficients, the forecast oil-refinery industry values are obtained at the end of 2005 (August to December) and for first three quarters of 2006. Direct impacts are calculated from the difference between the actual and predicted production of oil-refinery activities. Results Second, FlexNIEMO was used to construct monthly versions of the supply-side NIEMO. The approach developed by Park et al. (2007b) allows the fixed coefficients in the input-output world to be continuously modified, reflecting previous economic events and interindustry substitutions. Because oil-refinery products are important to supporting the economy in the Gulf of Mexico and the United States, the supply-side NIEMO approach is helpful. One problem is how to adjust the supply-side model to reflect demand-side adjustments during the recovery period. The analysis combines the demand-driven NIEMO described in Park et al. (2007a) with the supply-side NIEMO in Park (2006). This solution overcomes some of the major shortcomings inherent CESifo Forum 2/2010 Figure 4 shows the 13 months of forecasts using the Holt-Winters method, which is adjusted monthly. The R-Square is 87 percent and Theil’s U statistic which summarizes the forecasting accuracy show 0.071. Because the U statistic is close to 0 and the U of no predictive power is 1 (Theil 1966; Maddala 1977), the forecasts are statistically acceptable. The analysis here has concentrated on the total business interruption impacts of the hurricanes on the dominant sector (oil refining) by using a multiregional input-output model (NIEMO). These amounted to 8.28 billion US dollars in the first year after the hurricanes; even in September 2006 actual 76 Focus Figure 4 CHANGES OF ACTUAL AND ESTIMATED OIL-REFINERY VALUES: PADD III 25 000 of input-output structural decomposition analysis (see Rose and Casler 1996). Million US dollars per 1 000 barrels Recent developments 20 000 Prior to the Gulf oil spill of April 2010, New Orleans was finally beginning to recover. This paper does not deal with the most 10 000 Estimated values recent events, but this New York Actual values Times quotation (7 May 2010) 5 000 offers a good summary: “since 2004 2005 2006 the Saints won the upon the Sources: EIA; authors' calculation. backdrop of Mardi Gras, followed by the landslide election output remained below estimated output from a of a popular new mayor, New Orleans had been, by forecasting model. Using the other variant of the all accounts, getting its groove back. Five years model (FlexNIEMO) which allows for input substiremoved from hurricane Katrina, the tangible signs tutions in response to changes in relative prices, the of a real recovery are everywhere: in rebuilt homes total impacts fall to 4.85 billion US dollars. As for the and refurbished parks, in old restaurants come back state-by-state impacts, not surprisingly, most to life and in new businesses thriving”. The conseoccurred in the Gulf states – more than 92 percent. quences of the oil spill are still unclear, especially in Similarly, because oil refining has few interrelationterms of its impact on seafood and tourism, but ships with other sectors, almost all the sectoral appear to get worse day by day. Only 20 percent of impacts (98.04 percent) are restricted to the oil secthe seafood Americans eat is domestic, but most of it tor. The primary policy implication from the analysis comes from either Alaska or Louisiana. The shrimp is that the business interruption costs from the hurriindustry alone, which produced 90 million pounds in canes (and from the more recent Gulf oil spill) pro2008, brings in 1.3 billion US dollars a year. vide an upper threshold on how much policymakers might pay to prevent and/or mitigate similar events. The difference in the results from an application of Other issues NIEMO and an application of FlexNIEMO are dramatic. The original model estimates an overall multiAlthough this paper primarily focuses on the shortplier of 1.83 while the new results indicate a much term (typically 2005–2006) economic impacts of the smaller multiplier, 1.07. hurricanes, especially as they affected the dominant industry of oil refining, there are some other policy Impact modeling using widely available input-output issues that merit attention, even if briefly. approaches routinely includes the caveat about the fixed technologies assumption and how that overOne important item is the reconstruction of the levstates the estimated results. We have adapted a new ees in New Orleans by the US Army Corps of and operational multiregional input-output model of Engineers. Presumably because of budget conthe US NIEMO, to analyze substitutions and have straints, they are rebuilding only to category 3 hurriconsidered their scale and scope for the case of oil cane standards. This makes little sense because a catand gas refinery losses in the Gulf of Mexico followegory 5 hurricane is possible, even likely at some ing hurricanes Katrina and Rita in late 2005. The time. A related problem is the lack of back-up elecresults suggest that a detailed study of substitutabilitricity generators for the pumping stations. The failty is useful because overstated impacts from the ure of these was a primary factor in the severity of application of conventional IO are substantial. the flooding. NIEMO generates millions of multipliers that remain to be explored at the individual sector level, Yet another problem is the defects in the insurance by month, sector and region. This is in the tradition system (Kunreuther and Michel-Kerjan, 2008). The 15 000 77 CESifo Forum 2/2010 Focus 2006, hotel and restaurant employment was about 70 percent of the pre-Katrina level. Nevertheless, the comeback was quite surprising. The explanation was that the high-lying French Quarter escaped serious flood damage, although some hotels and restaurants were damaged by wind and activities were impeded in the short run by power outages and other inconveniences. Attendance in the last weekend of the 2006 Mardi Gras was 70 percent of the 2005 level (about 700,000). In 2007, it was about 100,000 more. By 2010, however, all three major festivals (Mardi Gras, the Essence and Jazz Festivals) achieved record attendances. As suggested above, it is unclear whether these performances will be repeated in 2011 because the short-term future of seafood production (that plays such an important role in New Orleans tourism) is in doubt as a result of the new disaster, the Gulf oil spill of April 2010. scale of hurricane Katrina made the defects in catastrophe insurance obvious. There needs to be a major shift to risk-based premiums, an incentives scheme to encourage firms and households to invest in mitigation measures, and to deal with equity issues via some kind of subsidy program but not by subsidizing insurance premiums. The housing issue which has still not been resolved is critical because it has affected the lives of so many people. More than 200,000 structures were damaged, most of them because of severe flooding resulting from the levees. Of these structures, well more than one-half were housing units, about evenly split between owner-occupied rental housing (approximately 67,000 of each). According to the US Department of Housing and Urban Development (HUD), 71.5 percent of the occupied units in Orleans Parish (the city) were damaged and 41.9 percent were severely damaged or destroyed. In the five most impacted counties 305,000 units were damaged, i.e. 65.1 percent of the occupied housing stock, and 22 percent were severely damaged or destroyed. In New Orleans itself only 3 high-lying neighborhoods out of 14 avoided severe damage to rental housing and not a single neighborhood (Bostic and Molaison 2008). Conclusions This paper’s primary focus has been the economic impacts of hurricane Katrina (and, to a lesser extent, Rita) in the first year aftermath. From then on, the emphasis was on social and economic reconstruction and recovery. Of course, these had economic impacts. A common argument in both natural and manmade disaster discussions is that such disasters are over time a ‘wash’ because the positive subsequent recovery impacts more or less balance out the negative initial disaster impacts. However, the problem with this approach is that it neglects the opportunity costs of the resources used in the recovery efforts. The implication is that including recovery activities among the favorable economic impacts associated with a disaster is misleading, if not downright wrong. Housing damage was the primary factor explaining the population loss of the City of New Orleans from 458,000 prior to Katrina to a post-Katrina low of 137,000 four months later. After that, it began to recover but slowly and still remains below its peak. The population loss was not confined to the city alone. Population declined in other parishes outside the city, in one case – St. Bernard Parish – even more than in New Orleans itself (by 80 percent in the first six months compared with 60 percent in New Orleans itself – see Bostic and Molaison 2008). Not surprisingly, the situation stimulated a surge in repair, reconstruction and new construction and an inundation of workers, many of them Latino. The associated demand of non-resident workers for rental accommodation made the housing problem even worse. References Bostic, R. W. and D. Molaison (2008), “Hurricane Katrina and Housing: Devastation, Possibilities and Prospects”, in: H. W. Richardson, P. Gordon and J. E. Moore II (eds.), Natural Disaster Analysis after Hurricane Katrina, Cheltenham: Edward Elgar, 253–278. Bureau of Labor Statistics (BLS, 2006), “The Labor Market Impact of Hurricane Katrina: An Overview”, Monthly Labor Review 129/8, 3–10, http://www.bls.gov/opub/mlr/2006/08/art1abs.htm. As for tourism (the second most important sector), Mardi Gras made a partial recovery in 2006. Some of the parades were cancelled (six fewer parades in Orleans Parish, with an average of three fewer floats on each parade) and hotel occupancy rates were about 25 percent below the festival rates in 2005 (Deloughery 2008). In March CESifo Forum 2/2010 Colgan, C. S. and J. Adkins (2006), “Hurricane Damage to the Ocean Economy in the U.S. Gulf Region in 2005”, Monthly Labor Review 129/8, 76–78, http://www.bls.gov/opub/mlr/2006/08/art7abs.htm. Deloughery, K. (2008), “Is New Orleans Ready to Celebrate after Katrina? Evidence from Mardi Gras and the Tourism Industry”, in: H. W. Richardson, P. Gordon and J. E. Moore II (eds.), Natural Disaster Analysis after Hurricane Katrina, Cheltenham: Edward Elgar, 134–146. 78 Focus Parks”, in: Richardson, H. W., P. Gordon and J. E. Moore II (eds.), The Economic Costs and Consequences of Terrorism, Cheltenham: Edward Elgar, 235–253. Energy Information Administration (EIA, 2006a), The Impact of Tropical Cyclones on Gulf of Mexico Crude Oil and Natural Gas Production, http://tonto.eia.doe.gov/FTPROOT/features/hurricanes.pdf. Theil, H. (1966), Applied Economic Forecasting, Amsterdam: North Holland. Energy Information Administration (EIA, 2006b), Weekly Petroleum Status Report, http://www.eia.doe.gov/oil_gas/petroleum/data_publications/weekly_petroleum_status_report/wpsr.html. Gordon, P., H. W. Richardson, J. E. Moore, II and J. Y. Park (2007), “The Economic Impacts of a Terrorist Attack on the U.S. Commercial Aviation System”, Risk Analysis 27, 505–512. Government Accountability Office (GAO, 2006), Natural Gas: Factors Affecting Prices and Potential Impacts on Consumers (GAO06-420T), http://www.gao.gov/new.items/d06420t.pdf. Katz, B., M. Fellowes and M. Mabanta (2006), Katrina Index: Tracking Variables of Post-Katrina Reconstruction, Washington DC: The Brookings Institution. Kent, J. D. (2006), 2005 Louisiana Hurricane Impact Atlas Volume 1, Louisiana Geographic Information Center, http://lagic.lsu.edu/lgisc/ publications/2005/LGISC-PUB-20051116-00_2005_HURRICANE_ATLAS.pdf. Knabb, R. D., D. P. Brown and J. R. Rhom (2006), Tropical Cyclone Report Hurricane Rita: 18–26 September 2005, National Hurricane Center, http://www.nhc.noaa.gov/pdf/TCR-AL182005_Rita.pdf. Kunreuther, H. C. and E. O. Michel-Kerjan (2008), Comprehensive Disaster Insurance: Will It Help in a Post-Katrina World?”, in: H. W. Richardson, P. Gordon and J. E. Moore II (eds.), Natural Disaster Analysis after Hurricane Katrina, Cheltenham: Edward Elgar, 8–33 Louisiana Geographic Information Center, (2005), Louisiana Hurricane Impact Atlas, Vol. 1, http://lagic.lsu.edu/images/hurricanes/2005_LAGIC_HURRICANE_ATLAS.pdf. Maddala, G. S. (1977), Econometrics, New York: McGraw-Hill. National Climate Data Center (NCDC, 2005), Climate of 2005: Summary of Hurricane Katrina, http://www.ncdc.noaa.gov/oa/climate/research/2005/katrina.html#top. National Hurricane Center of National Weather Service (2007), Tropical Weather Summary – 2005 Web Final, http://www.nhc.noaa. gov/archive/2005/tws/MIATWSAT_nov_final.shtml. National Research Council (1999), The Impacts of Natural Disasters: A Framework for Loss Estimation, http://www.nap.edu/ catalog/6425.htmlb. Nordhaus, W. D. (2006), The Economics of Hurricanes in the United States, NBER Working Paper 12813. Park, J. Y. (2006), The Economic Impacts of a Dirty-Bomb Attack on the Los Angeles and Long Beach Port: Applying Supply-Driven NIEMO, Paper Presented at 17th Annual Meeting of the Association of Collegiate Schools of Planning, Fort Worth, TX, 9–12 November. Park, J. Y., P. Gordon, S. J. Kim, Y. K. Kim, J. E. Moore II and H. W. Richardson (2006a), Estimating the State-by-State Economic Impacts of Hurricane Katrina, Paper Presented at CREATE Symposium: Economic and Risk Assessment of Hurricane Katrina, University of Southern California, CA, 18–19 August. Park, J. Y., C. K. Park and S. J. Nam (2006b), The State-by-State Effects of Mad Cow Disease Using a New MRIO model, Paper Presented at 2006 American Agricultural Economic Association (AAEA) Annual Meeting, Long Beach, CA, 23–26 July. Park, J. Y., P. Gordon, J. E. Moore II, H. W. Richardson and L. Wang (2007a), “Simulating the State-by-State Effects of Terrorist Attacks on Three Major U.S. Ports: Applying NIEMO (National Interstate Economic Model)”, in: Richardson, H. W., P. Gordon and J. E. Moore II (eds.), The Economic Costs and Consequences of Terrorism, Cheltenham: Edward Elgar, 208–234. Park, J. Y., P. Gordon, J. E. Moore II and H. W. Richardson (2007b), Constructing a New Resilient National Interstate Economic Model, Paper Presented at the 46th Annual Meeting of the Western Regional Science Association, Newport Beach, CA, 21–24 February. Rose, A. and S. Casler (1996), “Input-Output Structural Decomposition Analysis: A Critical Appraisal”, Economic Systems Research 8, 33–62. Richardson, H. W., P. Gordon, J. E. Moore, II, S. J. Kim, J. Y. Park and Q. Pan (2007), “Tourism and Terrorism: The National and Interregional Economic Impacts of Attacks on Major U.S. Theme 79 CESifo Forum 2/2010 Focus it is a measure of the labor market and not of the overall economy, although the two are certainly related (Ewing, Kruse and Thompson 2003 and 2004; Skidmore and Toya 2002). Thus, one shortcoming to using employment or unemployment rate data to infer overall economic impact is that it does not account for payroll or wages, thus treating all jobs equally and inherently treating the consumption functions of various institutions and households as homogeneous. In this respect, the labor market approach, while informative, does not capture the typical multiplier effects that one might find estimated in input-output regional economic models. MEASURING THE REGIONAL ECONOMIC RESPONSE TO HURRICANE KATRINA BRADLEY T. EWING*, JAMIE B. KRUSE** AND MARK A. THOMPSON* Introduction Catastrophic events such as natural disasters have an enormous impact on regional economies. In fact, a vast literature on the economic impact of hurricanes, tornadoes and other disasters exists (Ewing, Kruse and Sutter 2007). A strand of this research utilizes regional labor market and output measures as indicators of regional well-being and recovery. In particular, many time series econometric studies examine the economic impacts by comparing preand post-disaster periods, primarily using variations of event study techniques and intervention analysis. As such, previous researchers have generally focused on obtaining post-event periods that were as long as possible in order to increase the number of post-disaster data points. One drawback of the event study line of research is that it does not provide ‘real time’ assessments of the impact of major disasters. Another issue deals with the choice of the appropriate performance measure to capture the economic condition of the region. In this paper, we illustrate how the use of regional-level (i.e. US state) coincident indexes may be used to infer the extent and magnitude of a natural disaster on a local economy. On the other hand, gross domestic product (GDP) does measure the performance of the overall economy but is released on a quarterly basis at the national (US) level and only annually at state and regional levels (as defined by the US Bureau of Economic Analysis and the US Bureau of Labor Statistics). Quarterly and annual frequencies can be problematic when estimating the economic impact of disasters since differences in the immediate and longer-term effects have been found to exist (Ewing, Kruse and Thompson 2009). Furthermore, GDP metrics at the state and regional level often lag two to three years, further compounding the measurement problem. The lack of timely information could lead policymakers into making poor or suboptimal resource allocation decisions. One approach to resolve these issues combines several regional economic indicators into a composite index that can be tracked through the business cycle. The composite index offers the potential of better and, possibly, more complete information on the condition of the economy than individual economic indicators and would be more current than GDP estimates. Consequently, a properly constructed composite index more closely captures elements of the overall economic well-being of a region than using a single labor market measure and, simultaneously, is timelier than using a single output measure such as gross product. A number of time series studies have examined the impact of tornadoes and hurricanes using monthly labor market data (Ewing and Kruse 2001 and 2002; Ewing, Kruse and Thompson 2003, 2004, 2005a, 2005b and 2009). While employment-related data is timely and regionally defined, by definition * Texas Tech University. ** National Oceanic and Atmospheric Administration, Silver Springs, Maryland. CESifo Forum 2/2010 80 Focus al. 2007). Standard macroeconomic theory highlights how the losses in physical and human capital place a drag on long-term growth and potential output of the region. However, there is an inflow of financial assistance from insurance to federal, state and local aid. Additionally, following a disaster, the rebuilding of infrastructure, networks, and the installation and implementation of new technology may lead to higher growth over time. Moreover, the economic improvement may spread to connecting regions. Ewing, Kruse and Thompson (2005b) document this effect following the 1999 Oklahoma City tornado outbreak. They attribute much of this economic change to improvements to the supply chain. Recently, Crone and Clayton-Matthews (2005) developed a consistent set of US state-level coincident indexes that are now produced by the Federal Reserve Bank of Philadelphia. Thompson (2009) provided an example of how such a state-level index could be used to measure the effect of a disaster and the subsequent regional economic response. In particular, Thompson (2009) focused on Louisiana’s economy and hurricane Katrina, which made its first landfall in southern Florida as a category one storm, moved into the Gulf of Mexico where it intensified, and made its second landfall 29 August 2005 near the LouisianaMississippi border as a category four storm. This paper updates and expands the work of Thompson (2009) and examines what, if any, effect Katrina had on other states along the gulf coast. The approach of this paper is to examine the behavior of the Louisiana state coincident index to determine the change in economic activity immediately following hurricane Katrina. The recovery process is followed through time to capture a sense of the longer-term or ongoing effects of the hurricane on the state. Additionally, the corresponding coincident indexes of the other Gulf Coast states are tracked to see the impact of Katrina and to document the extent to which the impacts, both immediate and ongoing, may have played out in the economic activities of those states. Hurricane Katrina and the economy The Federal Response to Hurricane Katrina: Lessons Learned (2006) reports that the economic cost of hurricane Katrina was nearly 100 billion US dollars making it the most costly US disaster in terms of economic losses. These losses resulted from a major disruption in economic activity and physical damage to infrastructure and homes. While previous studies provided information as to the economic impact on New Orleans (Guimaraes et al. 1993; West and Lenze 1994), the shear size and magnitude of Katrina on such a major city required policymakers to make immediate decisions with respect to recovery. For this type of situation, timely and relevant information is required. Index composition Certainly, a number of factors help to determine the impact of a hurricane on a regional economy including the severity of the storm and its atmospheric characteristics, the built environment and the area’s economic structure. Ewing, Kruse and Sutter (2007) provide a thorough review of the economic research on hurricanes and describe various approaches to modeling disasters. They conclude that valuable information can be derived from a variety of models; however, certain decisions must be made in a short time frame and thus sources of timely information is necessary for efficient resource allocation. Regional policymakers need accurate and timely information on the current state of the economy for planning purposes. According to Crone (2006), state and regional markets may not follow national trends and cycles. Moreover, natural disasters are regionally-specific events placing even greater importance on accurate models of the regional economy for planning purposes. While hurricane Katrina was a major storm, its impact is still relatively regional to the gulf coast states of the United States. As previously mentioned, such comprehensive measures of the economy are often inadequate for timely regional information as to the impact of the storm. Due to these shortcomings, a composite index of several regional economic indicators may provide a better and timelier measure of the regional business cycle and its response to a disaster. The short-term disruption from a hurricane may result in out-migration from the affected region to another area and the resulting loss in human capital may hinder future growth and recovery (Landry et The approach that Crone and Clayton-Matthews take is based on the Stock and Watson (1989) dynamic single-factor model. The dynamic singlefactor model is a variation of principal component or 81 CESifo Forum 2/2010 Focus highlights the severity of hurricane Katrina relative to past recessions. factor analysis, where the resulting index represents the underlying state of the economy. The structure of the model is as follows: (1) xt = + ( L)st + µ t (2) D( L) µ t = t (3) ( L)s t = + t Table 1 provides a comparison between Louisiana’s economic activity and that of the United States during the past five national recessions as noted by the National Bureau of Economic Research (NBER). In addition, note that Louisiana’s economy did not experience a decline in economic activity as the national economy entered two recessions (i.e. the 1980 and the 1990–91 recessions). With respect to the 1981 recession, Louisiana’s economy lagged the national economy by seven months going into the recession and about six months coming out of the recession. While both the Louisiana and national economy entered the 2001 recession at the same time, the Louisiana economy lagged the US economy by six months in coming out of the recession. The NBER indicated that the latest recession started in December 2007; however, Louisiana peaked in January 2009 and has declined in economic activity every month thereafter (to the end of the sample period). Crone (2006) points outs that most states do not always follow the national business cycle – Louisiana does not simply mirror the behavior of the national economy. where xt is the logarithm of the observed variable in period t, st is the logarithm of the state variable to be estimated (i.e. the common factor), and L represents the lag operator. The idiosyncratic components in the measurement equations from (1) follow an autoregressive process and are uncorrelated with one another. In particular to developing a consistent set of state-level indexes, Crone and Clayton-Matthews (2005) use employment, unemployment, hours worked in manufacturing, and real wages as the measurement variables in equation (1). The underlying state of the economy is represented by the state variable st and the final index sets the estimated state variable to 100 (for a given date). Crone and Clayton-Matthews (2005) retrend each index to the respective state GDP trend to allow for comparisons across states. Since states may not necessarily follow the national economy, their response to natural disasters may differ as well. Table 1 illustrates the timing of hurricane Katrina. The Louisiana economy declined for three months following the hurricane. Using the index, we can measure how long it took for the state economy to recover to its pre-hurricane level. Following hurricane Katrina, the Louisiana index dropped to Each month, the Federal Reserve Bank of Philadelphia produces the 50 state coincident indexes. It is also worth noting that the indexes are re-estimated each month with the revised data. Below, we use the state coincident index to examine how Louisiana’s economy responded before and after hurricane Katrina. In addition, we examine how other gulf coast Figure 1 states responded. ECONOMIC GROWTH RATES IN LOUISIANA AND THE US Louisiana’s state coincident index and hurricane Katrina Louisiana growth rates US growth rates 8 6 Figure 1 illustrates the growth in economic activity for Louisiana and the United States using the index produced by the Federal Reserve Bank of Philadelphia. From the figure, it is clear that the state and national economy do not always move together further emphasizing the need to have regional-specific measures of the economy. The figure also CESifo Forum 2/2010 4 2 0 -2 -4 -6 -8 1980 1985 1990 1995 2000 2005 Notes: The grey vertical line shows the hurricane Katrina date. The yellow areas represent NBER recession dates. Sources: Federal Reserve Bank of Philadelphia; NBER. 82 2009 Focus Table 1 Peak to trough dates for Louisiana state coincident index Peak to trough Peak to trough Peak to trough Peak to trough Peak to trough State coincident index – 2/1982 – 5/1983 – 3/2001 – 5/2002 1/2009 – Official US recession 1/1980 – 7/1980 7/1981 – 11/1982 7/1990 – 3/1991 3/2001 – 11/2001 12/2007 – Hurricane Katrina to trough 8/2005 – 11/2005 Trough to pre-Katrina 11/2005 – 1/2007 Sources: Federal Reserve Bank of Philadelphia; NBER. 8/2005 coincident indexes may exhibit different behaviors following the hurricane, indicative of underlying structural changes in the economy. The monthly index values may be used to track how gulf coast states co-move before and after hurricane Katrina. One way to measure the co-movement between states is to compute the proportion of time that the two states spend in the same business cycle phase. The simple non-parametric statistic known as ‘concordance’ may be used for this exercise and is calculated as follows: 120.91 in September from 126.36 in August 2005. The index continued to decline until its trough in November 2005. The magnitude of the decline equates to a 6.7 percent drop in overall economic activity or the equivalent of an index reading from June 1997 (November 2005 index = 117.84). Alternatively, Katrina destroyed approximately eight years of economic progress in Louisiana. Over the next 14 months, the index reverts back to its preKatrina level of 126.62. From trough to pre-hurricane level, it took 14 months to recover. T (4) Hurricane Katrina and the other gulf coast state coincident indexes Ci, j = (( S t=1 i,t S j,t ) + (1 Si,t ) (1 S j,t ) ) T where T is the sample size and Si,t (Sj,t) is a binary Figure 2 shows the state-level coincident indexes for indicator series where the value is one when the each of the gulf coast states: Florida, Alabama, respective i (j) state index is expanding and zero Mississippi, Louisiana and Texas. Using the state when contracting. coincident indexes to examine how the other gulf Table 2 reports the degree of concordance between coast states responded to hurricane Katrina, it is Louisiana and the other gulf coast states before and seen that only Mississippi shows signs of having been after hurricane Katrina. Prior to Katrina, there was a impacted by the hurricane in terms of state economrelatively high degree of co-movement among ic activity. According to the state coincident index, Mississippi’s economic activity dropped 1.11 percent following Figure 2 the hurricane. However, by the COINCIDENT INDEX FOR GULF COAST STATES end of 2005, Mississippi was 190 back to pre-hurricane index levFlorida els. None of the other gulf coast 180 Texas Alabama states experienced significant 170 Mississippi drops in economic activity folLouisiana 160 lowing the hurricane. 150 With the exception of Mississippi, there does not appear to be a significant drop in economic activity for the other gulf coast states. However, Katrina may have altered the structure of the supply chain and/or economic landscape in other ways. If so, then the state 140 130 120 110 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 Note: The grey vertical line shows the hurricane Katrina date. Source: Federal Reserve Bank of Philadelphia. 83 CESifo Forum 2/2010 Focus Table 2 Degree of concordance (Cij) j-States Pre-Katrina Post-Katrina Mississippi 0.76 0.59 Alabama 0.78 0.51 Florida 0.95 0.38 Texas 0.84 0.74 Note: The degree of concordance is the percentage of time that the two states, Louisiana and state j (i.e. j = Mississippi, Alabama, Florida and Texas), are in the same phase. Source: Authors’ calculation. es in tax revenues during the recovery process in Louisiana (Eaton 2006). A state revenue forecaster and subsequent policymakers may be interested in knowing if this increase in tax revenues is a onetime windfall or a longer-term gain due to the implications on fiscal budgeting and planning. Use of regional/state coincident indexes may shed light on this question in a more timely fashion given the use of monthly vs. yearly data. In the case of Louisiana, the index rebounded to its pre-Katrina level and thus the observed surge in tax revenues were probably due to the purchase of replacement goods as opposed to a permanent increase in consumer spending. Louisiana and the other gulf coast states. Even though Florida is not a border state with Louisiana, they tended to move together most of the time (i.e. 95 percent of the time). However, the degree of co-movement among the gulf coast states (with Louisiana) has declined considerably following the hurricane. Most notably, Florida and Louisiana are in the same business cycle phase just 38 percent of the time. The change in co-movements between Louisiana and the other gulf coast states is consistent with a major shift in economic relationships. In fact, the decline in co-movements ranges from 12 to 60 percent. In particular, this finding is in line with the earlier work on disasters altering supply chains. Thus, at least in the relatively short term, the destruction of the economic landscape resulting from hurricane Katrina appears to have isolated the state of Louisiana from the other gulf coast states. It remains to be seen if a re-building of the region will increase the linkages to pre-storm levels. Economic models for assessing the impact and response of a region to a catastrophic event should be both timely and able to capture the broad economic condition of the affected area. However, these two simple goals are not always met as broad measures of economic activity (e.g. GDP) are available only at annual frequencies whereas more timely (i.e. monthly) measures of economic performance are often narrowly defined (e.g. unemployment). Concluding remarks This research demonstrated the use of the Federal Reserve Bank of Philadelphia’s state coincident indexes for modeling economic activity in the gulf coast states for the case of hurricane Katrina. The approach provides a broader and timelier estimate as to the overall economic disruption and subsequent response to a major hurricane than the use of state GDP or single-variable labor market indicators. The findings are encouraging and suggest that regional composite indexes may be used to complement standard measures of economic impact and recovery. This paper examined the use of state level composite indexes for providing timely information as to the economic response of a region to natural disasters. It is shown how the state index can capture the economic condition of a region and subsequently be used to measure the extent and magnitude of a catastrophic event on economic activity. In particular, the economic activity of Louisiana and the gulf coast states were seen to have changed following hurricane Katrina. Moreover, the results are consistent with the devastation of Katrina altering the underlying structure and/or supply chain of the region. Policymakers can make more informed decisions with objective or quantifiable data to facilitate a more efficient recovery process. One such example may be the media and news story about the increas- CESifo Forum 2/2010 References Crone, T. (2006), “What a New Set of Indexes Tells Us about State and National Business Cycles”, Federal Reserve Bank of Philadelphia Business Review, First Quarter, 11–24. 84 Focus Crone, T. and A. Clayton-Matthews, A. (2005), “Consistent Economic Indexes for the 50 States”, Review of Economics and Statistics 87, 593–603. Eaton, L. (2006), “Tax Revenues Are a Windfall for Louisiana”, The New York Times, 26 June. Ewing, B. and J. Kruse (2001), Hurricane Bertha and Unemployment: A Case Study of Wilmington, NC, Proceedings of the Americas Conference on Wind Engineering. Ewing, B. and J. Kruse (2002), “The Impact of Project Impact on the Wilmington, North Carolina Labor Market”, Public Finance Review 30, 296–309. Ewing, B., J. Kruse and D. Sutter (2007), “Hurricanes and Economic Research: An Introduction to the Hurricane Katrina Symposium”, Southern Economic Journal 74, 315–325. Ewing, B., J. Kruse and M. Thompson (2003), “A Comparison of Employment Growth and Stability before and after the Fort Worth Tornado”, Environmental Hazards 5, 83–91. Ewing, B., J. Kruse and M. Thompson (2004), “Employment Dynamics and the Nashville Tornado”, Journal of Regional Analysis and Policy 34, 47–60. Ewing, B., J. Kruse and M. Thompson (2005a), “Empirical Examination of the Corpus Christi Unemployment Rate and Hurricane Bret”, Natural Hazards Review 6, 191–196. Ewing, B., J. Kruse and M. Thompson (2005b), “Transmission of Employment Shocks before and after the Oklahoma City Tornado”, Environmental Hazards 6, 181–188. Ewing, B., J. Kruse and M. Thompson (2009), “Twister! Employment Responses to the 3 May 1999 Oklahoma City Tornado”, Applied Economics 41, 691–702. Guimaraes, P., F. Hefner and D. Woodward (1993), “Wealth and Income Effects of Natural Disasters: An Econometric Analysis of Hurricane Hugo”, Review of Regional Studies 23, 97–114. Landry, C., O. Bin, P. Hindsley, J. Whitehead and K. Wilson (2007), “Going Home: Evacuation-Migration Decisions of Hurricane Katrina Survivors”, Southern Economic Journal 74, 326–343. Skidmore, M. and H. Toya (2002), “Do Natural Disasters Promote Long-Run Growth?”, Economic Inquiry 40, 664–687. Stock, J. and M. Watson (1989), “New Indexes of Coincident and Leading Economic Indicators”, NBER Macroeconomics Annual 4, 351–393. The White House (2006), The Federal Response to Hurricane Katrina: Lessons Learned, Washington DC. Thompson, M. (2009), “Hurricane Katrina and Economic Loss: An Alternative Measure of Economic Activity”, Journal of Business Valuation and Economic Loss Analysis 4, Article 5. West, C. and D. Lenze (1994), “Modeling the Regional Impact of Natural Disasters and Recovery: A General Framework and an Application to Hurricane Andrew”, International Regional Science Review 17, 121–150. 85 CESifo Forum 2/2010 Focus struction in Haiti. Indeed, with the multitude of market failures complicating the process, it is difficult to even contemplate what an optimal reconstruction would look like in Haitian society. At the heart of the uncertainty lies a difficult question: in the face of endemic disaster risk, is a society best off concentrating or dispersing its population? Had the Haitian population been spread more widely throughout its territory, the proportion affected by the earthquake would have undoubtedly been lower. Concentration of the affected population, however, introduces the possibility of exploiting economies of scale in relief and recovery efforts. WHAT SHOULD THE WORLD DO ABOUT PORT-AU-PRINCE? AN ECONOMIC ASSESSMENT JACOB VIGDOR* On 12 January 2010, a major earthquake caused catastrophic damage to the capital of one of the world’s poorest nations. Although many communities in the southern portion of Haiti suffered grievous damage, the devastation wrought upon Port-au-Prince was both massive and almost instantly communicated throughout the world. The nation with the lowest GDP per capita in the Western hemisphere now faces a daunting but sadly familiar dilemma – how to rebuild in the face of vastly insufficient resources, without reintroducing the problems that exacerbated natural risk in the first place. This essay proceeds by describing the economic historical context of Port-au-Prince, and considering the various market- and non-market mechanisms that led the city to become by far the largest in Haiti. It then offers some thoughts on the basic tasks that should be high priorities in reconstruction, and then some additional thoughts on the proper spatial distribution of those tasks. What emerges more clearly than anything else is that the best prospects for an economically rational reconstruction process hinge on foreign cooperation. The Haitian government enjoys – and deserves – an exceptionally poor reputation; government corruption and inefficiency is in fact the primary reason that Port-au-Prince became a large city in the first place. The earthquake, tragic though it was, could provide an opportunity to remedy the consequences of decades, if not centuries, of poor planning decisions. Among the best tools for understanding this dilemma are those found in the economist’s toolbox. For each individual, rebuilding decisions rest upon a calculation of costs and benefits. As such, one could imagine an uncoordinated, laissez-faire vision of rebuilding, with some individuals deciding that reconstructing their home or business in Port-auPrince offered greater value than the next best alternative. On the other hand, though, a host of potential market failures suggest that the decentralized solution to the rebuilding problem might be anything but optimal. Even in the most developed economy, one would be concerned about proper investment in infrastructure and other public goods, the potential role of externalities, and the proper allocation of risk. In the Haitian context, we must add to this list concerns about property rights, underdeveloped capital markets, and the competence of government. A brief economic history of Haiti and Port-au-Prince Port-au-Prince was chosen as the site of the capital of the French colony of St. Domingue in 1738, a few decades before Haiti earned its independence in 1804. For more than a century, the city served as one of several transshipment points and administrative centers in an economically undeveloped country. Geographer Georges Anglade, writing in 1982, identified the period between independence and American occupation in 1915 as the era of ‘regions’, Given all these considerations, it appears highly unlikely that a laissez-faire process will result in anything that could be considered an ‘optimal’ recon- * Duke University. CESifo Forum 2/2010 86 Focus oil or natural gas reserves. Bauxite mining was a fairly prominent industry in the nation’s southeast for a time; the nation produced 650,000 tons of ore per year in the early 1980s and exported most of it (Tata 1982). By 2009, however, trade statistics for the United States – Haiti’s most significant trade partner by a wide margin – show that the nation exported neither ores nor primary metal manufactures. The nation’s sole metal export to the United States amounted to USD 5,000 worth of heavy-gauge metal tanks (US Census Bureau 2010). where the output of coffee plantations, as well as mahogany wood and other forest products, were sent to one of several regional port towns for export (Anglade 1982 as quoted in Lundahl 1992). Although sugar cane has traditionally been an important crop in Haiti, no sugar whatsoever was exported during this period (Girard 2005). Anglade (1982) describes the period after 1915 as one of ‘centralization’, as both political power and economic activity were increasingly concentrated in Port-au-Prince. The typical narrative of urbanization in initially agrarian societies begins with agricultural surpluses sufficient to feed a population that does not work the land. Cities begin as centers of trade, and in some cases evolve into centers of production. As technological change proceeds in the agricultural sector, shifting emphasis from subsistence to export, farm labor eventually becomes urbanized industrial labor. The disastrous performance of resource-based industries in Haiti can be attributed to a combination of fate, poor decision-making and political instability. The nation has few resources to exploit and only 28 percent of its land area is considered arable. Mismanagement of forestry resources and of coffee plantations can be blamed in those sectors. The nation’s political woes have often carried negative economic repercussions. The 1991 military coup which deposed president Jean-Bertrand Aristide, for example, led to a trade embargo associated with simultaneous economic contraction and inflation. In Haiti, the traditional narrative breaks down along several dimensions. Agriculture and other resourcebased industries have declined, in the absence of any clear technological improvements. Haiti has been almost entirely deforested for decades. Subsistence agriculture continues to play a strong role in the economy, while the production of cash crops has dwindled. Coffee has long been the nation’s most important cash crop; however poor agricultural practices have earned the sector’s output a reputation as a low-quality product. In 2009, Haiti exported just USD 35,000 worth of coffee to the United States, while simultaneously importing USD 120,000 worth (US Census Bureau 2010). Consistent with the traditional narrative, the rise of Port-au-Prince can be attributed in part to the emergence of a manufacturing sector in that city. The nation’s apparel industry, which accounts for some 93 percent of the value of exports to the United States, is concentrated in Port-au-Prince. Upon closer inspection, though, the role of industry in the capital’s expansion is quite minor. Haiti’s manufacturing sector overall is astonishingly small. The nation’s total exports to the United States in calendar year 2009 amounted to about 550 million US dollars. By contrast, the Dominican Republic, which occupies the same island and has a population of comparable size to Haiti, exported 3.3 billion US dollars to the same partner in the same year. For every dollar in income received through exports, Haiti receives about USD 2.50 in remittances. In a very real sense, then, Haiti’s most significant export is labor. In the 1960s and 1970s, Haiti produced over 4 million tons of sugar cane per year. This output increased in the 1980s. Sugar refineries were present in several cities, and collectively produced tens of thousands of metric tons around this time. In more recent years, though, the sugar industry has essentially vanished. Haiti exported no sugar to the United States in 2009, while importing USD 378,000 worth. In 2009, Haiti’s primary agricultural exports to the United States were fruit – predominantly mangoes – and tree nuts. Total exports of agricultural products to the United States amounted to 16.5 million US dollars, against USD 53 million worth of agricultural imports (US Census Bureau 2010). Port-au-Prince’s emergence as Haiti’s leading manufacturing center cannot be attributed to any natural advantage.1 Fabric used to create apparel is almost 1 Puzzlement at the location of the capital dates back at least two centuries. British historian Marcus Rainsford, writing in 1805, opined that “It must have been one of the unaccountable caprices that sometimes direct the settlement of towns, that could have obtained for [Port-au-Prince], indefensible at all points, the distinction it received” (Heinl and Heinl 1978, 31). Even setting agriculture aside, Haiti’s resource endowment is quite poor. The nation has no proven 87 CESifo Forum 2/2010 Focus Thirty-five years into Anglade’s period of centralization, Port-au-Prince was by any measure a modestly sized city. In 1950, at the time of Haiti’s first official census, the Port-au-Prince metropolitan area, which at that time essentially consisted of the city itself and the nearby suburb of Petionville, counted 144,000 inhabitants in a nation of just over 3 million (Institut Haïtien de Statistique et d’Informatique, Division d’Analyse et de Recherches Démographiques 1983). Nearly half of these residents had been born elsewhere in the country (Lundahl 1992). Seven of every eight Haitians lived in rural areas at that time, the vast majority engaged in subsistence agriculture. Haiti in 1950 was still a quintessential pre-industrial society. exclusively imported. While the city does have container port facilities, it is not necessarily the most obvious choice for shippers. Cap Haitien, on Hispaniola’s northern coast, is closer by sea to Miami, and during the era of bauxite production the port at Miragoâne handled a larger volume of exports. If not for natural advantages, what explains Port-auPrince’s rise to primacy in manufacturing? In a word, the proximate cause is infrastructure. Tata (1982, 64) remarks that Port-au-Prince in the early 1980s was “the only real choice for a modern manufacturing plant”. Port-au-Prince possessed the nation’s only runway longer than 1,600 meters, the only modern dock facilities and the most reliable electricity generation. By the time of the nation’s third Census, in 1982, the metropolitan region counted 720,000 inhabitants in a nation of just over 5 million – over 32 years, the share of national population in the capital city rose from under 5 to over 14 percent. In the early 1980s, the Port-au-Prince region was home to two-thirds of Haiti’s manufacturing establishments and over 90 percent of all manufacturing employees (Tata 1982). These infrastructural advantages, in turn, reflect the investment decisions of Haitian government. The tendency for population to cluster in the capital cities of nations with unstable governments is both general and widely noted (Ades and Glaeser 1995). Several hypotheses explain the link. When governments are corrupt, proximity to the seat of power may facilitate business and rent-seeking – indeed, Tata (1982) notes that the ease of acquiring necessary government licenses as one factor leading Haitian manufacturing towards Port-au-Prince. Governments may favor infrastructure investments in the capital because the hinterland is weak, or because access to superior infrastructure helps guard against uprisings in outlying areas. Ultimately, then, the emergence of Port-au-Prince as a manufacturing hub is far more clearly attributable to these political considerations than to any innate locational advantage. In the early 1980s, the Haitian government evaluated the prospects of establishing industrial facilities in the outlying population centers of Cap Haitien and Les Cayes (Tata 1982). These efforts did not lead to any break in the trend toward primacy in Port-au-Prince. Population estimates from 2009 suggest that the capital region was home to about 28 percent of the nation’s population. Over the six decades between the nation’s first census and the devastating earthquake of 2010, the Port-au-Prince region grew at an average annual rate of 4.8 percent, more than twice the growth rate of the population as a whole. This era witnessed the emergence of suburban slums that would become household names in the aftermath of the quake: Cite Soleil, established in the 1950s, Carrefour, a former coastal tourist destination and artist colony that tripled in population between 1982 and 2009, and Delmas, which was not even enumerated in the 1982 Census but was home to 359,000 people by 2009. The greatest share of employment in the Port-auPrince region associates not with manufacturing, but with services. The rapidly growing metropolis has supported a significant construction sector, transportation and communication services, education and health care, and banking and insurance. Once again, these sectors have gravitated towards Port-au-Prince not because of any innate advantage in providing them there, but because they must closely track the distribution of the population more generally, and must appeal to the same government-allocated resources that drive industrial location decisions. Haitian service industry has followed people to Port-au-Prince, not the other way around. CESifo Forum 2/2010 The earthquake of 12 January 2010 wrought destruction on a city that owed its existence, above everything else, to the actions of government. The region’s infrastructure, which made Port-au-Prince the only feasible location for most export-oriented activity, 88 Focus minican program implemented in the 1960s: the distribution of subsidized natural-gas cook-stoves (Oppenheimer 2010a). Of course, in a nation with no natural gas reserves, such a program would only exacerbate an already burdensome reliance on imported fuel. The deforestation of Haiti represents a classic negative externality problem, however, and actions to correct it would almost certainly pay dividends in the long run. was decimated. Indeed, the destruction of critical infrastructure undeniably worsened the human toll of the earthquake, as facilities to offload cargo containers were rendered unusable, and the singlerunway Port-au-Prince airport was quickly overwhelmed. Port-au-Prince’s population has dispersed into a countryside where subsistence agriculture is by and large the only economic activity – the sustainability of which is severely threatened by a combination of poor prior practice and vulnerability to further natural calamity. The country is now in a precarious position, and does not possess the resources to pull itself up by its own bootstraps. What Haiti needs more than any commodity, however, is a stable government. A stable, democratic, representative government would face stronger incentives to properly guide investments of the nation’s own public resources. The government’s past reputation for corruption and incompetence serves as a substantial impediment to policy and planning in the wake of disaster. A stable government would not only credibly guide the actions of private citizens, but also encourage investment by foreign firms. Reinvesting in Haiti: what needs to be done? Haiti’s precarious position prior to the earthquake creates great uncertainty regarding the pace and form of recovery. From an economic perspective, there are several important questions to ask about the recovery process. What are the most sensible investments to make in Haiti? Should these investments be geographically concentrated, to mirror the economic situation in 2009, or would it make more sense to disperse them? There are a few commonsense answers to the first question, but the second one is actually quite difficult. Unfortunately, stable government is perhaps the most difficult thing to bequeath a nation. The presence of a United Nations Stabilization Mission in Haiti since 2004 has undoubtedly helped to stabilize the country, but preventing armed conflict is not exactly the same as ensuring stability in government. Foreign intervention may need to be a significant aspect of Haitian governance for many decades to come. Haiti has, in fact, experienced two periods of intense foreign intervention in the past century. The first American occupation, between 1915 and 1934, yielded incredible investments in infrastructure. A country with 5 kilometers’ worth of highway in 1915 had nearly 2,000 by the end of occupation. Irrigation canals dating to the colonial era were renovated, and investments in urban water supply and hospitals improved health. Most strikingly, these investments were accomplished largely without the use of foreign-source revenue. The occupiers diverted the flow of domestic revenue from the pockets of bureaucrats to infrastructure (Girard 2005). Much of this infrastructure crumbled after the end of occupation, however, for want of maintenance. By 1971, three-quarters of the American-built road infrastructure was no longer passable in all weather conditions (Heinl and Heinl 1978). Some of the most sensible investments in Haiti would undo the damage inflicted by the mistakes of earlier eras. Deforestation has created incredible problems for the country; the soil has been damaged by erosion and has greater difficulty retaining rainwater. As a consequence, hurricanes are now more likely to lead to catastrophic flooding and mudslides. A proposal to allocate United States government resources to the reforestation of Haiti was introduced in the Senate in June 2009, and to the House of Representatives in December, but these legislative bodies have taken no definitive action on the proposals. Programs of reforestation have been tried in the past, without substantial success. Legal uncertainties regarding land ownership have impeded efforts (Oppenheimer 2010b). The widespread use of wood for cooking fuel leads to situations where trees are consumed as rapidly as they are planted. The finance minister of the Dominican Republic, Morales Tonosco, has suggested the replication of a Do- The first American occupation had its flaws. The occupying force was entirely white and insensitive to the country’s racial history. Many roads were built 89 CESifo Forum 2/2010 Focus with unpaid labor, as the occupiers enforced a law on the Haitian books since the 1860s, which required all citizens to contribute to road-building with either taxes or physical work. Investments in educational institutions were also not well-aligned with the needs of a largely illiterate, Creole-speaking population (Girard 2005). city enjoyed a rail connection to Port-au-Prince, though Haiti is now entirely devoid of rail service. St. Marc now serves as a minor port, with a small wharf in the city center. The harbors of Port-au-Prince, Cap Haitien and Miragoane are naturally deeper and thus more amenable to modern shipping, but each lies in a more seismically active zone.2 The second American occupation of 1994–95, which had the primary goal of re-establishing Jean Bertrand Aristide as president, earned much higher marks in terms of cultural sensitivity but accomplished comparatively little in the way of investment. The ideal form of foreign intervention would couple the first American focus on efficient investment with the second American attention to cultural sensitivity. St. Marc is hemmed in by modest 200m hills. Just 10 km by road across those hills, however, lies the flat and sparsely inhabited plain of the Artibonite river, where it is not difficult to imagine the creation of an entire city, replete with airfields and other commercial amenities.3 Even if building an entirely new city were cheaper than rehabilitating a devastated one, however, the question remains whether the concentration of population in one city is in any sense optimal. Urban economists have devoted much attention to the question of optimal city size. Larger cities are desirable to the extent that they permit the realization of economies of scale in labor-intensive industries, and create other benefits associated with greater specialization in production and consumption, or agglomeration economies rooted in knowledge spillovers, labor market pooling, or other mechanisms. On the other hand, larger cities incorporate diseconomies of scale associated with congestion, pollution, and other maladies. The ‘optimal’ city size equates the marginal costs and benefits of population expansion. Where should reinvestment take place? The notion that redevelopment efforts should aim to disperse population away from Port-au-Prince is as old as the nation itself. Jean-Jacques Dessalines, the self-styled first emperor of Haiti, reportedly desired to abandon the city (Heinl and Heinl 1978). These plans were lost with his assassination in 1806. More recently, Georges Anglade concluded his 1982 Atlas of Haiti with a call to decentralize the population – a call that echoed the government’s own study of development outside the capital. Since that time, of course, the proportion of Haitians living in Port-auPrince has doubled. In the case of an impoverished and seismically unstable nation such as Haiti, the creation of a large city incorporates risks that became all too apparent in the aftermath of the earthquake. In a society where vehicle ownership is rare, and public transportation networks primitive, urban life requires high population density. The costs of seismic protection increase much more than linearly with density. The cost of seismically retrofitting a large concreteframe structure in the United States, on a persquare-meter basis, are more than twice that of retrofitting a smaller structure of the same vintage.4 Rather than face these higher costs, Haitian builders As noted above, there is no natural reason for Portau-Prince to be the center of export activity. Given the devastation to the capital region’s infrastructure, it might well be less expensive in the long-run to develop the region around an alternative port. Cap Haitien, the most frequently cited alternative port facility, is itself in a seismically active zone, afflicted by an earthquake most recently in 1842, and lies along a fault that some consider overdue for a major quake. From a seismic perspective, the safest portion of the country lies near the geographic center, north of Port-au-Prince along the Golfe de la Gonâve. 2 As of 1982, the harbor depths in Port-au-Prince, Cap Haitien, Miragoane and St. Marc were 9.8, 6.4, 5.4 and 3.6 meters, respectively (Tata 1982). The wharf at St. Marc extends only 70 meters from the adjacent shoreline; construction of a larger-scale wharf could potentially ameliorate the depth problem. 3 While the Peligre dam has provided the Artibonite valley with some measure of flood control since 1956, further infrastructure investments would be required to assure flood protection and water supply to any large-scale habitation. 4 Estimates can be derived from the US Federal Emergency Management Administration’s Seismic Retrofitting Cost Calculator. The small city of St. Marc is perhaps the most promising location in this zone. St. Marc traces its origins to the colonial era. Its immediate environs have not been directly affected by any recorded earthquake since the 17th century. At one time, the CESifo Forum 2/2010 90 Focus dren of Haitians born elsewhere, and the fact that many residents are now relocated anyway, because of the general disarray in Port-au-Prince. Absent a concerted effort to change citizens’ expectations regarding the future locus of economic activity in Haiti, however, the force of inertia will likely be strong. and their clients accepted the risk of catastrophic collapse. From a seismic perspective, it would be much more cost-effective to redistribute the residents of Port-au-Prince into a series of smaller-scale, lower-density cities. Such a redistribution would introduce other types of costs, however. To make Haiti’s new hinterland cities attractive to potential employers, these cities would need to be connected to reliable transportation and electric grids. The absence of these networks was a major factor in the emergence of Port-au-Prince as a prime destination in the first place. This type of tradeoff between economies and diseconomies of scale is inevitable. In the end, the hypothetical tradeoffs between economies and diseconomies of scale are difficult to conclusively reconcile. What is more clear, however, is that the location of Port-au-Prince is seismically unfortunate and rebuilding the city in a way that mitigates risk of future destruction would be quite costly. Even clearer than this conclusion, however, is the reality that organized, planned recovery in a nation as chaotic as Haiti will be impossible without concerted efforts on the part of the developed world. Catastrophic but localized risk, such as that associated with hurricanes and earthquakes, introduces another set of arguments into the dispersal issue. Dispersing the population could be seen as a simple risk diversification policy: the best way to avoid a human disaster on the scale of what was seen in Portau-Prince would be to not have cities as large as Port-au-Prince. The aggregate risk faced by the population might not change much, or could even increase. The correlation in risk across persons would decline, however. References Ades, A. F. and E. L. Glaeser (1995), “Trade and Circuses: Explaining Urban Giants”, Quarterly Journal of Economics 110, 195–227. Anglade, G. (1982), Atlas Critique d’Haïti, Montreal: Centre de Recherches Caraïbes de l’Université de Montréal. Girard, P. R. (2005), Paradise Lost: Haiti’s Tumultuous Journey from Pearl of the Caribbean to Third World Hot Spot, New York: Palgrave Macmillan. From another perspective, though, the correlated risk introduced by population concentration could bring countervailing benefits, to the extent that there are economies of scale in disaster recovery. For all its flaws, Port-au-Prince benefited from its close proximity to deep water and the nation’s longest airstrip. To decentralize the population would be to increase the average citizen’s distance from these facilities. In a wealthier country, this disadvantage would be offset by the creation of redundant infrastructure: building more airfields and port facilities outside the capital. Given the scarcity of available funds and more pressing priorities, these sorts of investments are unlikely to take place anytime soon. Heinl, R. D. Jr. and N. G. Heinl (1978), Written in Blood: The Story of the Haitian People, 1492–1971, Boston: Houghton Mifflin. Institut Haïtien de Statistique et d’Informatique, Division d’Analyse et de Recherches Démographiques (1983), “Le Recensement Haïtien de 1982”, Population 38, 1055–1059. Lundahl, M. (1992), Politics or Markets? Essays on Haitian Underdevelopment, London: Routledge. Oppenheimer, A. (2010a), “In Haiti, Reforestation Should Be Part of Rebuilding Process”, Miami Herald, 31 January. Oppenheimer, A. (2010b), “Commentary: Reforestation of Haiti Gets Off to a Slow Start”, Miami Herald, 22 March. Tata, R. J. (1982), Haiti: Land of Poverty, Lanham, MD: University Press of America. United States Census Bureau (2010), U.S. International Trade in Goods and Services Report, http://www.census.gov/foreign-trade/data. Even if a concrete plan for population dispersal were adopted, it may prove difficult to coordinate the actions of independent households and firms to settle in alternative locations. Government could take certain actions to encourage resettlement: improving the infrastructure in regional towns, perhaps even moving some government functions – or the entire operation – away from Port-au-Prince. The prospects for relocation are improved by the fact that many residents of the capital are the children or grandchil- 91 CESifo Forum 2/2010 Focus when aircraft engines were compromised without any reported airplane crash, however. The interest of the mass media initiated by this type of event, together with the raised risk perception of travellers, may also alter economic behaviour. Thus, while flight operations rapidly go back to normality, it is likely that potential air passengers (for example, holiday makers) decide to cancel their trip or alter their plans (e.g. change the mode of transport or the destination country). When psychology comes into play, an accurate estimation of economic outcomes is even harder. Travelling with the worry that your flight schedule might be disrupted or – worse – that your aircraft engines might be damaged could by itself generate a welfare loss, even if the trip and aircraft are not affected. The literature on the response to risk information (see e.g. Becker and Rubenstein 2004) also shows that economic agents invest their money to take countermeasures, thereby generating profits for other economic agents. For example, air passengers may opt to take a train, rent a car or stay in a hotel, with different costs and economic outcomes, including (possibly) additional income for railways, car rental agencies and hotels. THE 2010 VOLCANIC ASH CLOUD AND ITS FINANCIAL IMPACT ON THE EUROPEAN AIRLINE INDUSTRY MARIO MAZZOCCHI, FRANCESCA HANSSTEIN AND MADDALENA RAGONA* Introduction Last April, European air traffic was heavily disrupted by the volcanic ash cloud generated by the eruption of the Icelandic volcano Eyjafjallajokull. Even though the explosion was of low intensity, it produced an enormous cloud of ash moving through the European skies. The fact that the ash was much finer than usual, moving quickly and possibly affecting aircraft engines, led the aviation authorities of the concerned countries to declare most of European skies as no-fly zones (NFZs). Based on the initially available information, there were claims of a huge economic impact on the air travel industry, even bigger than the direct impact of the US air traffic halt after the terrorist attacks on 11 September 2001 (European Commission 2010). A further reason why it is difficult to estimate the overall economic impact is the number of offsetting factors that need to be considered. Accountability is quite complicated for airplane and airport industries, due to the weight of offsetting effects as, for example, the tonnes of fuel saved or parking lots filled. The International Air Transport Association (IATA) has estimated that the airline industry uses around 4.3 million barrels of fuel per day. At the peak of the airspace closure, the demand for fuel is estimated to have fallen by 1.2 million kerosene barrels per day (about 110 million US dollars saved) (IATA 2010). It is obviously difficult to obtain accurate estimates of the overall economic impact imputable to a natural disaster like this. Besides the unpredictable behaviour of nature – in this case not only the eruption but also weather conditions – one should consider the adaptive behaviour of people, whose complexity increases with the number of actors involved. For example, the threshold at which flying was admitted was raised by the relevant authorities after five days of air disruptions, a decision which is likely to have softened the potential impact. There are a few industries that could have benefitted from the volcano’s eruption, at least in the short term, especially those linked to alternative modes of transport, like car rentals and railways. Eurostar reported that it carried 50,000 extra passengers on 15 April, and registered an increase of 33 percent on 17 April. P&O Ferries of France declared that their Restrictive measures that caused the closure of the greatest part of European skies had been established on the basis of two previous accidents in the 1980s, * University of Bologna. CESifo Forum 2/2010 92 Focus tions, the key results will be discussed and some conclusions drawn. services between Britain, Spain, France and the Netherlands were fully booked and that they employed extra personnel to handle the huge volume of phone calls to their info centres.1 On the other hand, other industries besides airlines have been negatively affected by the disruption: for example, courier services, air cargo businesses or industries that rely on air transport for trading perishable commodities. The European Commission has pointed out that air cargo traffic suffered a fall of 61 percent within the EU27 between the scheduled flights the week before and the ‘ash days’ (compared to a decrease of 64 percent in passenger traffic) (European Commission 2010). Economic impact on the airline industry As it usually happens with crises of this scale, a number of attempts at quick – albeit rough – quantification of the magnitude of the economic impact have been produced. Right after the eruption, the majority of estimates were provided by the main airline association, the IATA and the European Commission. Table 1 reports some of these quantifications, all referring to the week following the first closure of airspace. A (partial) shortcut to the all but impossible task of estimating all those impacts is an analysis of financial markets. Assuming that investors make the best use of available information and base their purchasing or selling behaviour on their rational economic assessment (which rules out speculative behaviours), returns on equities may be seen as the ‘thermometer’ of the current and predicted performance of an individual industry. In this way one might be able to account for both the losses suffered by the air industry and the potential gains of other stakeholders. A comprehensive analysis is still impossible, at least in the short term. We cannot evaluate the welfare loss of stranded travellers or the productivity losses of all firms indirectly affected by the ash crisis. Another strong assumption is that the behaviour of listed securities is also representative of industries not listed on stock exchanges, such as small and medium-size enterprises. However, the analysis of stock returns seems the easiest and most reasonable way to explore the magnitude of such a complex event. In terms of operations, on 17-18 April 2010, 17 EU Member States had a full airspace closure, 2 Member States had a partial closure and 6 non-EU States also decided on a full closure. On April 22, airspace was fully operational again, apart from a partial closure in southern Finland (European Commission 2010). In terms of passenger flows, the biggest domestic markets affected by the closure were Britain, France and Germany, while the biggest decline of airline revenues was due to the cancellation of US-UK flights. In terms of economic impact, the revenue loss for airlines from scheduled services was estimated at 1.7 billion US dollars (this figure is considered ‘conservative’) during the period of 15-21 April 2010. The revenue loss per day varies according to the daily airspace closure, and reached 400 US dollars per day during the peak period (17-19 April). During the five days of disruption, British Airways reported a loss of 20 million British pounds per day as did Air-France KLM.2 In this paper, we will provide a first basic estimate of some of the economic effects of the Eyjafjallajokull volcano’s eruption, focusing on the airline industry, together with some evaluations of potential gainers, namely alternative transport industries. Toward this end we employ a basic event study analysis (MacKinlay 1997) with the most recent available data, in order to provide some estimates of financial losses that may be ascribed to the volcanic ash cloud. After giving an overview of initial attempts to estimate the economic consequences for the airline industry, we will briefly summarize the basic procedure for conducting an event study. In the final sec- 1 The classical event study method A rapid assessment of the financial impact of the volcanic ash cloud may be made with an event study analysis (MacKinlay 1997). The method basically ascribes to specific events significant deviations of individual returns on equities from the overall market trend, based on the ‘ordinary’ behaviour of share prices. For this purpose, one may benchmark ordinary behaviour using the market model, which assumes a linear relationship between returns on individual securities and the market return: 2 From BBC News, www.bbc.co.uk. 93 From The Economist, www.economist.com. CESifo Forum 2/2010 Focus Table 1 Estimated effects of the volcanic ash cloud on the airline industry (15–23 April 2010) Source ACI Europe Outcome 313 airports IATA 100,000 flights EUROCONTROL Source IATA IATA European airports totally disabled (75% of the European Airport Network) Flights cancelled within the EU, to/from the EU and overflying the EU Peak of flights cancelled on 18 and 19 April Estimated passengers unable to travel Average of scheduled passengers affected each day Reduction of the within-Europe and Europe-rest of the world passenger flows 19,000 flights 10 million passengers 1.2 million passengers 24% (and 9% worldwide) passengers flow reduction Economic impact US$ 1.7 billion US$ 400 million Revenue loss for airlines during the period 15-21 April Per day revenue lost for airlines over the peak period (17–19 April) AEA 850 million Loss for airlines including profitability, assistance to passengers, costs for stranded crew, parking and positioning of aircraft and other cost issues (for the period 15–23 April) ERAA 110 million Estimated loss for members of ERAA ELFAA 202 million Estimated loss for members of ELFAA IACA 310 million Estimated loss for members of IACA ACI Europe 250 million Overall European airports losses IAHA 200 million Direct financial loss for independent handlers pertaining to the IAHA ANSPs 25 million Loss per day for Air Traffic Management (ATM) EC 61% Fall in air traffic cargo between the scheduled flight per week in the EU-27 Notes: ACI: Airport Council International; IATA: International Air Transport Association; AEA: Association of European Airlines; EUROCONTROL: European Organisation for the Safety of Air Navigation; ERA: European Regions Airline Association; ELFAA: European Low-Fare Airlines Association; IACA: International Air Carrier Association; IAHA: International Aviation Handlers Association; ANSPs: Air Navigation Server Providers and EC: European Commission. Source: Websites of the sources indicated in the first column and listed above. Rit = i + i RMt + uit . conditioning on the market return, and allows to predict the expected return had the event not occurred. Even if tests of individual securities and time periods are possible, these are less powerful compared to a test based on aggregations of time periods and/or securities. Once the parameters α and β are estimated, the normal returns may be predicted over the event window and are computed as: (1) where Rit is the return of a security at time t, RMt is the market return and uit are independent normally-distributed residuals. The benchmark model is estimated on a sample prior to the event, which should not be affected by other major security-specific events. Then the ordinary behaviour is projected through a time window after the event occurs (the ‘event window’) and significant deviations from the ordinary behaviour are detected based on tests of the excess returns with the following null hypothesis: H 0 : Rt = E ( Rt RMt ) with with t , E ( Rit RMt ) = ˆ i + ˆi RMt t . (3) So that excess returns correspond to the forecast error uit and are computed over the event window as (2) uit = Rit ˆ i ˆi RMt where τ is the event window set which covers the period following the occurrence of the event and E(Rt|RMt) is the ‘normal’ return, which is obtained by CESifo Forum 2/2010 with with with t with (4) Under the null hypothesis these results are normally distributed with the following standard error (Patell 1976): 94 Focus 2 ( R R ) 1 M = i Cit uit = i2 1 + + T Mt T 2 ( ) R R Mj M j =1 Application and results (5) For this event study, we make use of Datastream daily data on share prices for selected securities on the London, Frankfurt, Paris and Stockholm stock exchanges. The estimation window is chosen to be relatively small (100 observations from 24 December 2009 to 14 April 2010) in order to minimize the risks of major structural changes associated with the economic crisis and to emphasize the short-run dynamics.3 Nine airlines (7 flag carriers and 2 low-cost companies) were included, considering their listing on the most relevant stock exchange. We also selected six potential gainers: five car rental companies and Eurotunnel, the company which runs Eurostar trains and the Eurotunnel. Our assumption – partially confirmed by the results – is that these companies may have benefitted from a decrease in airplane transport by an increase in the demand for car rental and train services. The selected companies and the reference stock exchange are listed in Table 2. with t with where σi is the regression standard error of the i-th – security, RM is the average market return over the estimation period, T is the number of observations in the estimation sample and Cit (i.e. the expression in brackets) is the variance inflation factor due to prediction outside the estimation period. A test for the null hypothesis for individual securities and individual time periods of the event window is provided by the Patell Standardised Residuals (PSRs): zil = uil uil Cil :G N (0,1) where l . where (6) The period affected by the ash cloud ran from 15 April to 20 May (day when European skies were declared ‘ash-free’). A detailed timeline of events and effect on air operations is provided in Table 3. Based on the events listed in Table 3, several event windows (EW) were explored, as summarized in Table 4. For large T it is possible to obtain aggregated tests over the L time periods of the event window τ, across S securities of a given set ψ or across both τ and ψ, as follows: L zi 0 = zSl = u l =1 il i LCil ~ N (0,1), uSl ~ N (0,1) SE (uS ) CSl (7) Despite using the basic event study approach, results were econometrically robust to choices on the size of estimation and event windows. Figure 1 shows the day-by-day Patell Standardised Residuals (PSRs) aggregated over the two groups of firms through the overall event window running from 15 April to 20 May, computed as indicated in equation (8). Significant abnormal returns at the 95 percent confidence level are those below or above the two horizontal lines. The aggregate value of the airlines (blue line) is below the zero line over most of the considered period, although it is only significant during the first peak period (17–19 April), on 28 April, over the second ‘wave’ of ash (5–7 May) and with the last occurrence of the ash cloud (around 17 May). On 21 April there is a positive significant return, a ‘rebound’ after the negative peaks of previous days. In contrast, in the aggregate, evidence on positive returns for potential gainers is quite weak, with positive values during the first few days (only significant on 15 April). (8) and L zS 0 = u l =1 Sl ~ N (0,1), L SE (uS ) CSl (9) l =1 where l , uSl = 1 1 uil , uS = uSl , SE (uS ) = S i L l 1 T (uSt uS )2 T 1 t =1 . 3 However, estimation windows with 200, 300 or 400 observations produced similar results. 95 CESifo Forum 2/2010 Focus Table 2 Selected securities and reference market returns Security Aerlingus Air France – KLM British Airways Easyjet Finnair Iberia Lufthansa Ryanair SAS Avis Europe Avis Budget Group Eurazeo Eurotunnel Hertz Sixt Source: Datastream. Reference market return (Stock Exchange) Airlines FTSE-All (London Stock Exchange) CAC (Paris Stock Exchange) FTSE-All (London Stock Exchange) FTSE-All (London Stock Exchange) DAX (Frankfurt Stock Exchange) DAX (Frankfurt Stock Exchange) DAX (Frankfurt Stock Exchange) FTSE-All (London Stock Exchange) OMX (Stockholm Stock Exchange) Potential gainers DAX (Frankfurt Stock Exchange) DAX (Frankfurt Stock Exchange) CAC (Paris Stock Exchange) CAC (Paris Stock Exchange) DAX (Frankfurt Stock Exchange) DAX (Frankfurt Stock Exchange) Table 3 Timeline of events associated with the ash cloud and effects on flights Date Actual Estimated EUROCONTROL’s expectations flights flights in a declared each day (summary) normal day Wed 14 April 28,087 28,000 None Thu 15 April 20,842 28,000 None Fri 16 April 11,659 28,000 Airspace is not available for operation of civilian aircraft in the following countries/areas: Ireland, UK, Belgium, Netherlands, Denmark, Sweden, Norway, Finland, Estonia, northen France, parts of Germany, parts of Poland. Forecasts suggest that the cloud of volcanic ash is continuing to move east and south-east and that the impact will continue for at least the next 24 hours. Sat 17 April 5,335 22,000 No landings and take-offs are possible for civilian aircraft across most of northern and central Europe: Austria, Belgium, Croatia, Czech Rep., Denmark, Estonia, Finland, northern France, most of Germany, Hungary, Ireland, northern Italy, Netherlands, southern Norway, Poland, Romania, Slovakia, Slovenia, Sweden, Switzerland and UK. Forecasts suggest that the cloud of volcanic ash will persist and that the impact will continue for at least the next 24 hours. Sun 18 April 5,204 24,000 Air traffic control services are not being provided to civil aircraft in the major part of European airspace: Austria, Belgium, Croatia, Czech Rep., Denmark, Estonia, Finland, most of France, most of Germany, Hungary, Ireland, northern Italy, Netherlands, Norway, Poland, Romania, Serbia, Slovenia, Slovakia, northern Spain, Sweden, Switzerland, Ukraine and UK. Mon 19 April 9,330 28,000 Air traffic control services are not being provided to civil aircraft in the major part of European airspace: Belgium, Czech Rep., Denmark, Estonia, Finland, parts of France, Germany, Hungary, Ireland, Netherlands, northern Italy, Poland, Romania, Slovenia, Switzerland, parts of Ukraine and UK. Tue 20 April 13,101 28,000 The new procedures agreed yesterday have been in place since 6.00 UTC. Air traffic control services are not being provided to civil aircraft, or are being provided with significant restrictions, in the lower airspace in north-western Europe: Denmark, Estonia, Finland, northern France, northern Italy, Latvia, Slovenia, Slovakia and UK. In the upper airspace above 20,000 feet, all European airspace is available. In the evening almost 75% of the total continent area is free of any restrictions. Wed 21 April 21,916 28,000 All European airspace is available above 20,000 feet. Below 20,000 feet, restrictions are still in force in a few areas (southern Sweden, part of Finland, parts of Scotland). It is anticipated that these restrictions will gradually be lifted throughout the day. It is anticipated that almost 100% of the air traffic will take place in Europe tomorrow. CESifo Forum 2/2010 96 Focus Thu 22 April 27,284 28–29,000 A small number of cancellations can be expected due to some limited restrictions and the logistical problems of airlines. Almost all European airspace is available, with a few exceptions in parts of southern Finland, southern Norway, northern Scotland and western Sweden. Fri 23 April 29,000 Almost all European airspace is available, with the exception of part of northern Scotland. Wed 28 April Normal Normal The Ash Concentration Charts produced by VAAC London show that there has been no area of high potential volcanic ash coverage within the CFMU area for several days now. Tue 4 May 28,000 Airspace in Ireland, northern Ireland and small parts of western Scotland was closed between 8.00 and 14.00 CET (cancellation of some 150 flights). The latest Ash Concentration Charts show that the area where ash concentrations could exceed engine manufacturer tolerance levels has shrunk and is no longer affecting any substantial part of European airspace. This situation is expected to remain stable for the coming hours. Wed 5 May 27,904 29,000 Several Irish airports will be closed for limited hours. Edinburgh is currently operating at reduced capacity and the western part of Scottish airspace is closed. The situation is not expected to improve in this area during the day. The whole of Ireland, western Scotland and north-western England could be affected. Greek airspace is also closed for all traffic as a result of industrial action. Thu 6 May 30,202 28,500 No closures of airspace or airports within the Europe. The predicted area where ash concentration could exceed engine manufacturer tolerance levels lies to the west/north-west of Ireland. In the night of 5 to 6 May, renewed and more intensive ash eruptions took place. Fri 7 May Sat 8 May Sun 9 May Mon 10 May Tue 11 May Wed 12 May Thu 13 May Fri 14 May Sun 16 May 30,342 28–29,000 Some airports were closed in western Ireland overnight. The main predicted area where ash concentration could exceed engine manufacturer tolerance levels lies to the western part of North-West Europe. Renewed and more intensive ash eruptions took place overnight, and the area of potential higher ash contamination is forecast to extend from Iceland as far south as the western edge of the Iberian Peninsula during the day. Transatlantic flights are being re-routed south of the affected area which could cause delays to these flights. 22,424 22,600 Ash eruptions are ongoing. Airports are closed or expected to close in northern Portugal, northern Spain and parts of southern France. Transatlantic flights are being re-routed around the affected area which is causing substantial delays to these flights. 23,491 25,000 Ash eruptions are still substantially affecting European airspace. Airports in northern and central Portugal, north-western Spain, northern and central Italy are unavailable, and are expected to open later. Transatlantic flights continue to be affected by the ash cloud (re-routings, delays). 29,155 29,000 Areas of high ash concentration have dispersed overnight over continental Europe. There is an area of ash cloud in the middle of the North Atlantic impacting transatlantic flights (re-routings, delays). No airports are closed in Europe. During the afternoon, areas of higher ash concentration could move in a north-easterly direction from the Atlantic into the Iberian Peninsula. 27,807 29,000 Airports on the Canary Islands, some in south-west Spain and some in Morocco are closed. At the same time, ongoing work by the UK Met Office and the UK CAA has confirmed the effectiveness of the model used to determine the areas where ash concentration could be above engine tolerance levels. 29,935 Normal Areas of high ash concentration at lower altitudes, which are still causing some difficulties for trans-Atlantic flights, are currently found in the Mediterranean between the Spanish mainland and the Balearic Islands, and are moving north-east. All airports are available, however with the Balearic Islands airports operating at reduced capacity. The areas of higher ash concentration are expected to dissipate further during the day. 26,852 Normal The areas of high ash concentration at high altitude have now dispersed. The areas of higher ash concentration are not expected to cause any disruption to air traffic during the next 24 hours. Normal Normal The areas of ash concentration are mainly at low levels in the vicinity of Iceland, and are not expected to cause any disruption to air traffic during the next 24 hours. 25,088 25,000 None. 97 CESifo Forum 2/2010 Focus Mon 17 May 29,000 The areas of ash concentration are mainly at low levels. During the course of the day, the current cloud is expected to disperse somewhat. The cloud is expected to mainly affect northern Ireland, parts of Scotland and parts of south-western UK. On Sunday 16 May, the disruptions in Ireland and north-western UK resulted in a reduction in expected number of flights by about 400. Note: Blanks in the actual flight number indicate that EUROCONTROL did not provide official information, which happened in days when air traffic was normal. Source: EUROCONTROL News – Update on European Air Traffic Situation (www.eurocontrol.it). Table 5 clearly shows that a persistent negative impact on the selection of listed airlines may be Event window (EW) Flights affected observed throughout all event EW1 15–19 April Peak negative effect on most EU flights EW2 15–23 April Total period until return to normal flight windows, with the exception of operation (April) the second event window that EW3 3–7 May Negative effects on UK, Ireland and ended on 23 April. This might be southern European flights explained by the rebound EW4 17–19 May Some disruption of flights to/from observed on 21 April and presumUK and northern Europe EWTOT 15 April– Total period until return to normal flight ably by the positive expectations 20 May operations (May) driven by a return to normality Source: ? and the debate about rising ash concentration thresholds to allow Figure 1 air traffic, which happened towards the end of the event winAGGREGATED PATELL STANDARDISED RESIDUALS dow. The reoccurrence of the ash BY GROUP OF FIRMS 4 cloud in May resulted in new Potential gainers 3 major negative effects, probably 2 worsened by the expectation that 1 the issue could be long-lasting. 0 The overall effect over the longest -1 event window is strongly nega-2 tive, despite the fact that increas-3 Airlines ing the length of an event window -4 usually reduces the power of tests because of forecast errors. Again, the evidence on potential gainers Note: Continuous horizontal lines show 95% confidence level thresholds. is mixed and confined to the Source: Datastream; authors' calculation. short-term at the first occurrence of the crisis, while on the longest More powerful tests can be obtained by aggregating event window there is no detectable effect. over time as well as over securities, according to equation (9). We consider the various event windows Finally, in Table 6, we provide an estimate of the described in Table 5. overall effect of the crisis on the individual compa- Table 4 19/05/2010 17/05/2010 13/05/2010 11/05/2010 07/05/2010 05/05/2010 03/05/2010 29/04/2010 27/04/2010 23/04/2010 21/04/2010 19/04/2010 15/04/2010 Event windows Table 5 Aggregate financial impact over various event windows (EW): Patell Standardised Residuals EW1 EW2 EW3 EW4 15–19 April 15–23 April 3–7 May 17–19 May Airlines – 3.48* – 1.29 – 4.04* Potential gainers 2.66* 0.98 – 3.13* Note: * Significant abnormal returns at the 95% confidence level. Source: Datastream; authors’ calculation. CESifo Forum 2/2010 98 –3.80* – 1.65 EWTOT 15 April– 20 May – 3.79* – 0.18 Focus Table 6 Impact by individual security (Patell Standardised Residuals and impact on firm market values) PSR Airlines Aerlingus Air France - KLM British Airways Easyjet Finnair Iberia Lufthansa Ryanair SAS Potential gainers Avis Budget Eurazeo Eurotunnel Hertz Sixt Aggregate results Airlines Potential gainers Note: * Significant abnormal returns at the 95% confidence level. Firm value impact (million ) – 0.12 – 1.34 – 1.43 – 2.20* – 1.91 – 1.52 – 2.20* – 1.58 – 1.25 –7 – 368 – 365 – 338 – 83 – 525 – 670 – 791 – 229 1.10 – 1.14 0.56 – 1.02 – 0.46 – 0.56 123 – 225 110 – 201 – 306 – 76 – 3.79* – 0.18 – 3,374 – 575 Source: Datastream; authors’ calculation. an efficient instrument for monitoring the patterns nies, based on PSRs as computed in equation (7). We also give a rough estimate of the associated financial loss, based on the excess residuals on single days and the market value of firms.4 Of course, these figures only refer to a small selection of companies and stock exchanges, but they may give an idea of the magnitude of the effect. Considering the period between 15 April and 20 May, the nine airlines considered for these studies experienced a loss of about 3.3 billion euros in terms of market value. of these complex effects. With respect to the ash cloud application, a few key results may be summarized. First, as experienced in other risk-related events, while the first occurrence of the crisis generated major negative impacts on airlines, the return to normal financial operations was quite rapid; one week after the first closure of European airspace and airports there was no major sign of significant losses. However, as the ash cloud returned to affect flight operations in May, despite Concluding remarks the relatively low impact in terms of disrupted flights and grounded passengers, the financial reaction was This study provides a timely exploration of the impact of the volcanic ash cloud, using financial data and a traditional event study approach. The volcanic ash cloud and its effect on air traffic represent a major example of the complexities that economists face in producing a rapid estimate of the monetary effects of a natural disaster. Although the event study approach is a dated instrument and was applied in its basic form, which consists in running a set of linear regressions and out-of-sample forecast tests, the procedure is still quite strong. Reoccurring events raise the risk level for affected companies and may engender a structural impact on the economic performance of firms, at least in the short to medium term. Although our limited sample of securities does not allow for general conclusions, potential gains for economic agents who might benefit from the disruption of air travel seem to be short-lived, consistently with the adaptive behaviour of agents and the time needed for structural adjustments (e.g. increasing capacity for car rentals). Our overall estimate for 9 selected European flag carriers is a loss of about 3.3 billion 4 As a reference company market value we use Datastream estimates for May 2010. euros over one month, a figure which is well above 99 CESifo Forum 2/2010 Focus the overall economic impact estimated in the aftermath of the event for all European airlines. References Becker, G. S. and Y. Rubinstein (2004), Fear and the Response to Terrorism: An Economic Analysis, Revised Version of February 2010, University of Chicago, http://www.econ.brown.edu/fac/ yona_rubinstein/Research/Working%20Papers/BR_FEB2010.pdf. European Commission (2010), The Impact of the Volcanic Ash Cloud Crisis on the Air Transport Industry, SEC(2010) 533, 27 April, Brussels. International Air Transport Association (IATA, 2010), IATA Economics Briefing: The Impact of Eyjafjallajokull’s Volcanic Ash Plume, http://www.iata.org/whatwedo/Documents/economics/VolcanicAsh-Plume-May2010.pdf. MacKinlay, A. C. (1997), “Event Studies in Economics and Finance”, Journal of Economic Literature 35, 13–39. Patell, J. M. (1976), “Corporate Forecasts of Earning Per Share and Stock Price Behaviour: Empirical Tests”, Journal of Accounting Research 14, 246–276. CESifo Forum 2/2010 100 Special almost half of German exports are to the euro area and thus not immediately affected by the devaluation of the euro – just as they were also not affected by the foregoing revaluation. As originally intended by its founders, the European Monetary Union has contributed to immunising the real economy against exchange rate fluctuations. A EURO RESCUE PLAN WOLFGANG FRANZ*, CLEMENS FUEST** MARTIN HELLWIG*** AND HANS-WERNER SINN**** In light of the gravity of the European debt crisis and the radical measures that were decided on in May 2010, we feel obliged to make this public appeal to the German federal government, in which we set out basic considerations for the pending negotiations for the reform of the euro area. In our opinion, these considerations are essential for the survival of the European Monetary Union. The euro is a key element of European integration, but it will be endangered if we do not succeed in establishing more fiscal discipline in the future. What Europe needs is not an economic government but political and economic mechanisms that effectively limit public and private indebtedness in the member states. It needs these mechanisms not only to stabilise national finances and the common currency but also to achieve a better balance of growth forces in Europe. The present crisis is not a currency crisis. Interpretations that regard the devaluation of the euro vis-à-vis the dollar as a currency crisis are pure hysteria. The devaluation is only a partial correction of the overvaluation of the euro relative to OECD purchasing power parity that had been building up since 2003. The improvement in competitiveness for Europe’s exports on international markets that comes with the devaluation should be welcomed by the countries in Europe, especially since they have not yet recovered from the recession. However, Professor of Economics, University of Mannheim, President of the Centre for European Economic Research (ZEW); Chairman of the German Council of Economic Experts. ** Professor of Economics, Oxford University; Research Director of the Oxford University Centre for Business Taxation; Chairman of the Academic Advisory Board of the German Federal Ministry of Finance. *** Professor of Economics, University of Bonn, Director of the Max-Planck Institute for Research on Collective Goods, Bonn; Chairman of the Advisory Committee of Wirtschaftsfonds Deutschland. **** Professor of Economics and Public Finance, University of Munich (LMU); President of the Ifo Institute for Economic Research and the CESifo Group. The current crisis is due to the debt and financing problems of some euro member states. The introduction of the euro induced a convergence of interest rates in the eurozone countries. As of 1995 the initial members of the European Monetary Union (except for Germany) had to pay interest rates on their government bonds that were on average 2.6 percentage points higher than the rate on German government bonds, in some cases even 6 percentage points higher. With the introduction of the euro this interest premium disappeared almost completely. A common capital market was created that provided favourable financing conditions of a kind that especially the countries on the southwest periphery of Europe had not known previously. These favourable conditions applied to both public and private debtors. As a result there was a huge capital flow to these countries that induced a boom in construction and investment. However, effective mechanisms for limiting public and private debt were lacking. In many countries the booms in construction activity developed into speculative bubbles. The bursting of these bubbles is now threatening the solvency of banks. This has resulted in considerable risks for the public finances of some countries. Current government deficits in Ireland, Greece, Portugal and Spain amount to more than three times the level allowed by the Stability and Growth Pact (3 percent of GDP). In Greece, the problem is exacerbated by an already very high level of government debt. * In the international discussion on sharing the burdens from the crisis, the claim is often made, particularly by the French, that Germany was the main economic beneficiary of the single currency, the high German trade surplus being a reflection of the trade deficits of the other euro countries. The only truth in this statement is that the booms in construction and 101 CESifo Forum 2/2010 Special investment in the countries of the periphery caused inflation there that reduced the price competitiveness of these countries and led to external trade deficits. In Germany the reverse situation was true. A large part of savings was channelled abroad through the banks and relatively little money was invested at home. Domestic demand weakened, and wages and prices increased only slowly. This improved the price competitiveness of the country, and led to a large external trade surplus. This trade surplus was the counterpart in the real economy to the capital flows out of Germany. In the current political discourse, those who regard the trade surplus and the combined loss of investment capital as a sign of Germany’s strength display an almost tragic misunderstanding of the underlying economics. Germany’s net investment rate from 1995 to 2008 was the lowest of all OECD countries. In 2008 only 40 percent of savings in Germany was invested in the country itself. Economic growth was correspondingly low. For 1995 to 2008 as a whole, real growth in Germany was 22 percent, almost the lowest in the entire OECD. In contrast, during this period economic growth amounted to 33 percent in Portugal, 56 percent in Spain, 61 percent in Greece and an impressive 124 percent in Ireland. In principle, the flows of capital out of Germany can be seen as part of a useful convergence process in Europe, which has also benefited German savers and property owners. However, these flows were excessive. Too large a part of savings flowed out of Germany and into the countries of the southwest periphery of Europe. The resulting trade imbalances, which gave rise to large imbalances in external trade, were too high. The dynamics of the German economy, in contrast, were impaired. This critical assessment is based not only on the observation that the construction and investment boom degenerated in part into a speculation bubble and that individual member states are now caught up in a debt crisis. It is mainly based on the assessment that even before the crisis broke out there were insufficient constraints on public and private borrowing. Markets and prices did not sufficiently take into account the risks of investments. It was evident for some time that the government bonds of different member states, for example, did not all have the same degree of creditworthiness. Prior to 2008, however, investors did not demand interest premiums from CESifo Forum 2/2010 102 member states whose budget policies created default risks for their government bonds. No sanctions were imposed on the violators of the European Stability and Growth Pact, neither from the capital markets nor from officials in the European Union. It was not until the 2008 financial crisis that interest rates on government bonds began to include premiums for default risks. Contrary to what some of the debtors have suggested, this is not reprehensible but is actually necessary for the long-term survival of the euro. The risk premiums are indeed much smaller than in the pre-euro era, but they help re-impose the fiscal discipline that had been lacking and they are fundamentally necessary for the functioning of the eurozone capital market. Capital flows are slowed down, government debtors are effectively disciplined and an overheating is avoided. It can now be expected that more capital will remain in Germany and will be available for investments in construction and in the rest of the economy. Domestic demand in Germany should become stronger and growth will accelerate again. And, of course, the external trade surplus should decrease again. The rescue decisions made by the Council and the member states on 9/10 May, however, suspended the no-bailout stipulation of the Maastricht Treaty in order to prevent a default by Greece and possibly other member states on their public debts. Without passing judgment on these decisions, we are nevertheless convinced that these measures should not be extended in the present form beyond the agreed period of time. Maintaining them would further destabilise the eurozone. The recent packages foresee the complete bailout of creditors without requiring them to bear any part of the risks they had taken on. Sparing the creditors would again lead to carelessness in their lending policies and to an excessive degree of interest-rate convergence. The disciplining function of the capital markets would again be undermined, and the incentive to keep government budget deficits under control would be weakened. German voters are not likely to accept such a carte blanche guarantee for other countries. A regime in which Germany is obligated to pay for other countries’ debts could endanger the euro if not European integration as a whole. Even if this prevents further crises, the imbalances in foreign trade and in capital flows would be perpetuated, with negative consequences for German economic growth. Proponents of a continuation of the rescue policies argue that the associated lowering of interest rates Special will allow those countries with high private and public indebtedness to reduce their deficits faster in the current crisis. But the highly indebted countries in the eurozone have already gained considerable relief from the rescue packages. Going beyond this and having additional interest-rate convergence induced by continued joint liability would be damaging. Many member states already received considerable relief from lower interest rates when the euro was introduced. But they did not redeem their debts as a result. Evidently, the effects of lower interest burdens were weaker than the incentives for additional debt financing that went along with lower interest rates – and with reduced capital market discipline. It was not until the current crisis made interest spreads grow again and imposed constraints on new borrowing that policymakers are now seriously attempting to limit state indebtedness. For this reason it would be a grave mistake to introduce eurobonds, i.e. common government bonds of all states of the eurozone, as some countries are currently proposing. This would perpetuate the mutual bailout principle and would ultimately destroy the institutional basis for a sound fiscal policy in Europe. Before the rescue package expires, policymakers must develop a viable concept for future fiscal-policy rules in Europe. This concept must contain two elements: more effective political constraints on government deficits and debt and most importantly a quasiinsolvency procedure for member states. The quasiinsolvency procedure is intended not only to help overcome future crises. It should also ensure that the member states keep their debt under control and that the financial-market participants proceed with greater caution. It is essential that the rules of the quasi-insolvency procedure be credible. The institutions responsible for enforcing these rules must be willing to do so effectively. Unlike the Stability and Growth Pact or now with the no-bailout stipulation, the rules must not be circumvented the moment they are intended to take hold. In order to understand the conditions under which such a quasi-insolvency procedure would function, it is helpful to ask why even the German federal government agreed to the euro rescue plan in the current crisis, despite its violation of the Maastricht Treaty. Political pressure from the highly indebted countries certainly played a role. But the decisive factor behind the German government’s acceptance of the plan seems to have been the fear that a sovereign default 103 in the eurozone would trigger a general capital market crisis with concomitant bank failures and yet another financial and economic crisis. Regardless of whether this fear was ultimately justified or not, the risk itself was regarded as too large. As it turned out, the eurozone was not prepared for this situation. The lack of preparation contributed to the emergence of the crisis because investors knew that the eurozone, in the case of the over-indebtedness of an individual member state, would hardly risk a formal default. Because the no-bailout stipulation was not credible, these states could take on much more debt, without the interest rates reflecting the risks. In order to enforce government budget discipline in Europe, the capital markets must receive credible signals that in the case of one country’s over-indebtedness, the creditors bear liability before help from EU or other member states can come into play. This sequencing is essential for inducing creditors to be cautious when granting loans. But this sequencing is only credible if there is no risk that the losses that the creditors must bear will not set off a general financial and economic crisis. For this purpose, the capital requirements of the banks should be increased. If the government bonds of highly indebted countries must be backed up with more capital, this in itself will ensure that lending to these countries will be reduced or that higher interest premiums will be required. It is also necessary to have a simple, transparent, and rule-determined procedure for the restructuring of public debts. Only with such a procedure can one expect that a sovereign default will not induce a financial panic. To enhance the credibility of rules for crises it is necessary to significantly strengthen the EU’s competence for enforcing budget discipline both before and during a crisis itself. This competence should be assumed directly by the European Commission. In the present crisis the Commission did not perceive its intrinsic interest as lying in the enforcement of the Maastricht Treaty but in the expansion of the EU’s competence that came with the bailout measures. If the Commission is given the competence for the determination and enforcement of the conditions under which aid is granted, it will perceive its own interest to lie in exercising this competence when a crisis occurs. How should the fiscal-policy rules for the eurozone be reformed? In our opinion, the following ten points are necessary: CESifo Forum 2/2010 Special 1. Distressed countries can expect help only if an imminent inability to fulfil its financial obligations is unanimously confirmed by the countries providing the help together with the IMF. 2. Assistance can be provided by covered bonds bearing interest, or by loans, the yield of which must be set at a reasonable percentage (possibly 3.5 percentage points) above the European average. The loans must not exceed a given percentage maximum of the distressed country’s GDP. 3. At the same time assistance is granted, the original creditors must waive a portion of their claims through a so-called ‘haircut’. The maximum percentage to be waived must be clearly defined beforehand, in order to prevent a panicfuelled intensification of the crisis. A reasonable haircut would be 5 percent per year since the issuance of the respective government bond. This would limit the interest premium demanded upfront by the creditors to a maximum of around 5 percentage points. In addition, an extension of maturity could be considered for bonds with less than three years to maturity. The crucial factor is to provide the capital markets with a clear calculation framework. 4. The budget of the countries facing quasi-insolvency must be placed under the control of the European Commission. Together with the country in question, the Commission would work out a programme to overhaul the state’s finances, including reforms aimed at strengthening economic growth. Disbursement of rescue funds must be contingent on compliance with the conditions set forth by the rescue programme. 5. This quasi-insolvency process must under no circumstances be undermined by other assistance systems that could provide incentives for opportunistic behaviour, in particular by such mechanisms as the eurobonds, i.e. commonly issued government bonds, favoured by some of the overly indebted countries. Eurobonds entail an across-the-board equalisation of interest rates regardless of the creditworthiness of each debtor country and, for that reason, would be tantamount to a subsidy to capital flows to those countries. Eurobonds would give carte blanche to new debt excesses, in addition to exerting negative effects upon economic growth in Germany. A particular risk in the coming negotiations is that Germany will be pressured to accept eurobonds in return for a quasi-insolvency procedure. CESifo Forum 2/2010 104 It is also necessary, in our opinion, that the political limits to public debt be strengthened by rules along the lines of the Stability and Growth Pact. It must be stressed, however, that these limits cannot substitute for the discipline imposed by the markets through the interest spreads resulting from the individual countries’ creditworthiness. The following provisions should be established: 6. The deficit limit set by the Stability and Growth Pact should be modified in accordance with each country’s debt-to-GDP ratio, in order to demand more debt discipline early enough from the highly indebted countries. As an example, the limit could be tightened by one percentage point for every ten percentage points that the debt-toGDP ratio exceeds the 60-percent limit. A country with an 80-percent debt-to-GDP ratio, for instance, would be allowed a maximum deficit of 1 percent of GDP, while a country with a 110-percent debt-to-GDP ratio would be required to have a budget surplus of at least 2 percent. 7. Penalties for exceeding the debt limits must apply automatically, without any further political decisions, once Eurostat has formally ascertained the deficits. The penalties can be of a pecuniary nature and take the form of covered bonds collateralised with privatisable state assets, and they can also contain non-pecuniary elements such as the withdrawal of voting rights. 8. In order to ascertain deficit and debt-to-GDP ratios, Eurostat must be given the right to directly request information from every level of the national statistics offices and to conduct independent controls on site of the data gathering procedures. 9. Finally, in case all the above assistance and control systems fail and insolvency approaches, the country in question may be asked to leave the eurozone by a majority of the eurozone members. 10. A voluntary exit from the eurozone must be possible at any time. We are Europeans by conviction and favour the further integration of the EU. However, we firmly believe that the European model will fail if it does not manage to strengthen once again the individual responsibility of the countries of Europe. For this reason we see no alternative to the proposals we have outlined here. Special COMMENTS ON RECENT FISCAL DEVELOPMENTS AND EXIT STRATEGIES VITO TANZI* General background In a note published in The Financial Times of 12 August 2003, the author of this comment advanced the hypothesis that the world might be moving towards a future fiscal crisis. The reasons for such a prediction were three-fold. Firstly, significant structural fiscal deficits and high public debts characterized many countries (including six of the G7 countries) at that time. Among the G7 countries, the only exception was Canada. Secondly, widely anticipated demographic developments would become significantly unfriendly to the countries’ public finances by around 2010. These demographic changes would require important and painful reforms in public pensions, health care, care for the aged and other welfare programs. These reforms would be politically unpopular, as President George W. Bush quickly discovered when he attempted to reform the US social security system in 2005. Third was a development that had attracted little attention but that, a few years earlier, had inspired a cover story in The Economist of 6 June 1997. The story had the catching title of ‘The Disappearing Taxpayer’. This hypothesis was associated with the existence of ‘fiscal termites’. It argued that globalization of economic activities and financial markets, combined with ongoing technological developments (internet-use, trading in non-tangible goods, etc.), was making it progressively more difficult for countries (and, ceteris paribus, especially for high-tax countries) to raise tax levels, or even maintain the high * Former Director of Fiscal Affairs Department, IMF and Undersecretary for Economy and Finance, Italian Government. This paper was delivered at the Vancouver Seminar on ‘The Crisis Response and Road to Recovery’, hosted by the Department of Finance and the Bank of Canada, Vancouver, 30 November to 1 December 2009. The views expressed are strictly personal. 105 levels reached in past years. Some observers had dismissed the hypothesis. However, the latest data available for OECD countries indicate that, in the first decade of this century, the ratio of taxes to GDP fell in most of them, and even in those countries that, because of high fiscal deficits, would have been expected to increase taxes. A talk with any country’s tax administrator would provide strong support for this hypothesis. Ceteris paribus taxes are always more difficult, politically, to increase than to cut. On the other hand, public spending is always easier to increase than to reduce. These important asymmetries should not be forgotten in the pursuit of fiscal policy. The 2003 Financial Times note had been written at a time when the economies of many countries were doing relatively well, and governments were not facing urgent ‘exit strategies’. The crisis and the response to it In 2008 there was the unwelcome visit of a major financial crisis, and, in late 2008 and especially in 2009, that of an economic crisis. The financial crisis had not been as unanticipated as generally reported – see, for example, Tanzi (2007a). The huge economic imbalances that had accumulated among countries and the ongoing bubbles in some sectors within countries had been sending strong warning signs that should have been listened to. Most countries felt the full impact of the crisis in 2009. At that point, concerns that might have existed about future fiscal developments – because of the anticipated demographic changes as well as theoretical and practical doubts that had been raised over the years about the effectiveness of discretionary fiscal policy (such as the existence of various lags, possible ‘Ricardian equivalence’ reactions, impacts of high debts and high fiscal deficits on the confidence and the psychology of investors, questions about future fiscal sustainability, etc.) – were pushed aside or ignored. Closet Keynesians came out of the closets and some became very vocal in encouraging or, better, in pushing governments to increase public CESifo Forum 2/2010 Special spending to fight the crisis, or to take advantage of it to promote public sector activities that they had wanted to see promoted. Some did this with the same degree of spending enthusiasm shown by sailors, when they go on shore after having spent many months at sea. The calls by some articulate and well-placed economists became loud and even shrill. These calls were supported, and amplified, by similar calls coming from international institutions including the IMF. Those advocating counter-cyclical Keynesian fiscal policies were not satisfied with letting the automatic stabilizers do their work. Because of the severity of the crisis, and especially because of its impact on the incomes of sectors that (partly because of bubbles) had contributed significantly to tax revenue (especially the financial industry), without any discretionary action by governments, the fiscal deficits would still have increased rapidly and significantly, and would have provided some large, automatic stabilization to the countries’ economies. The calls were for additional, discretionary fiscal stimulus directed especially towards higher public spending. There was a repeat of the calls, in the 1990s, on the Japanese government to increase Japan’s fiscal deficit to fight that country’s undergoing financial crisis. Those calls made a mess of the Japanese fiscal accounts but contributed little or nothing to economic growth (see Tanzi 2008). It was forgotten that a fiscal expansion, which starts when the fiscal accounts are already out of balance and already face large future problems, is less likely to be effective than when it starts from balances and sustainable fiscal accounts. It was argued that the larger the fiscal stimulus, the better it would be in fighting the crisis. Large fiscal stimuli were presumably needed to ‘prevent another Great Depression’, a possibility assumed to be very likely without additional public spending. There were frequent references, by the supporters of large fiscal stimulus packages, to abysses being faced and to the need to step back from them with the help of higher public spending. These calls ignored many significant differences between the current situation and that of the 1930s. During the 1930s, for example: • Government expenditure and taxes were very low (as shares of GNP). In the United States, for instance, general government expenditure was only 9.9 percent of GNP in 1929, while general CESifo Forum 2/2010 • • • • government receipts amounted only to 10.9 percent of GNP. Federal expenditure and receipts were respectively only 2.5 and 3.7 percent of GNP in the same year (see Stein 1984). In other countries these ratios were not much higher. Consequently, there were hardly any automatic stabilizers during the Great Depression. Fundamental errors (such as letting the money supply fall sharply, engaging in protectionist ‘beggar thy neighbor’ policies, and others) were committed. These errors contributed to transforming the 1930s crisis into a Great Depression. Bank deposits were not insured, making runs on banks a common experience. Only few individuals received pensions or other fixed incomes. The situation during the current crisis was dramatically different. Public spending and tax levels were much higher, in many countries well over 40 percent of GDP. These levels provided major automatic stabilizers that would increase the fiscal deficits during the crisis without discretionary fiscal stimulus packages. Central banks were ready to intervene, and they did intervene, to inject huge amounts of liquidity in the system, and to rescue ‘too-big-to fail’ financial institutions in difficulties with their loans and their purchases of toxic assets. To a large extent central banks became large ‘off-budget budgets’. Protectionist tendencies were largely contained by better collaboration among G7 and G20 countries. Most bank deposits were insured, preventing runs on banks. Many individuals depended on pensions and on other fixed incomes (for example, salaries from public employment) that were not, or were not much affected, by the downturn in the economy. Furthermore, in several countries, and especially in the United States, there was no convincing evidence of ‘under-consumption’ or of ‘excessive saving’ that is a major justification for Keynesian policies. Even during 2009 the United States continued to run very large trade deficits and to have personal saving ratios close to zero. The current economic crisis was thus not a classical Keynesian crisis of deficient aggregate demand (as might have been the Great Depression). Therefore, it could not be corrected by demand management and by an injection of fiscal stimulus. Rather, it was a crisis created by monumental structural imbalances, especially in the United States, imbalances both in current accounts and among sectors within the countries. The imbalances had been created, or had been 106 Special stimulated, by inadequate policies, both monetary and fiscal, in recent years. These imbalances required special attention. They required policies specifically directed to the causes that had led to the crisis. The imbalances were particularly pronounced in foreign trade and among important sectors, such as housing, the automobile industry and, of course, the financial sector. In the United States the financial sector had seen its share of total profits rise from about 5 percent in the 1940s to more than 40 percent in this decade. Thus, the cost of financial intermediation for the economy had increased phenomenally, inviting the important question as to the value the financial market was contributing to general welfare to justify such a large share of total profits. Some sectors, and especially the housing sector, had grown far too much because of the actions of the financial market. It needed to be scaled down to reduce the imbalances. The right policy should have been to reduce the bubbles and to correct the structural imbalances and not to follow policies that would allow these sectors to maintain their inflated incomes or claims on total resources. But this is largely what current expansionary policies have tried to do. An important point to make is that, while automatic stabilizers expand (automatically), during an economic slowdown, and can thus be expected to reverse themselves (automatically) when, and if, the economic situation returns to normal, fiscal stimuli, created discretionally, require legislative changes, both to create them and to undo them. Unless these changes have clear and inflexible (that is politically resistant) sunset provisions, and unless they have been specifically directed at correcting the structural imbalances (rather than at just injecting money in the economy), they are likely to make the long-run fiscal situation worse. Often they do not correct the structural imbalances but allow them to continue in the future, making ‘exit strategies’ in the fiscal area more difficult. This happened in Japan in the 1990s, where the fiscal expansion created many useless government programs strongly defended by interest groups. It is now happening in the United States, where the huge fiscal stimulus package of February 2009 will allow some clearly unproductive activities or some overgrown sectors (car industry, housing and financial market) to continue to operate at excessive levels. Some of the policies being followed make no sense in terms of correcting the existing structural imbalances. As Pearlstein (2009) put it, politicians in Washington are proposing to spend a lot of money that they do not have, in ways that will not work, to help too many people who are neither desperate nor deserving. He listed among ‘the idiotic ideas’ the bipartisan push to re-inflate the housing bubble, and called ‘this $10 billion boondoggle’ a giveaway to the real estate industrial complex and one of those strategies that are as nonsensical in theory as they are in practice. The bill passed in the US Senate on a 98 to 0 vote! This shows the power of lobbyists in determining the details of fiscal policies and why an exit strategy for the fiscal sector will be difficult to devise. Confusing what was largely a structural crisis with a traditional Keynesian under-consumption crisis has led to policies that have created a fiscal mess and that are likely to prolong the existence of structural imbalances and to reduce potential economic growth in future years. A character in Charles Schultz’ popular ‘peanuts cartoons’ used to say that with enough ketchup, he could eat anything. It seems that many policymakers (and some vocal economists) believe that with enough public spending, any country can be rescued from any economic crisis, even when the crisis is structural in origin and has been created by poor and unsustainable policies. The existence of high unemployment is assumed to guarantee that the huge injections of liquidity in the systems by central banks, and in part by the large fiscal deficits (indirectly finance by the central banks) will not lead to inflation. In this connection two comments may be worthwhile: Firstly, Morgan (1947, 84) states that “it is possible that increases of private or public expenditure will lead to sharp price rises in given areas or occupations, while there is still heavy unemployment elsewhere. An increase in the hiring of labor in Massachusetts will not diminish unemployment much in California and a road building program may not much alleviate distress in the local textile industry”. We find here another important asymmetry. Prices tend to increase more easily than they tend to decrease. This point is particularly important when the crisis is structural and has thus a geographical or sector-specific impact. We tend to forget that the mobility of factors like labor is limited even in the 107 CESifo Forum 2/2010 Special United States where people are supposed to move more readily than elsewhere. People will not move from Massachusetts to Arizona to occupy houses left empty by the housing bubble; or from the automobile industry in Michigan to Texas where jobs may be more abundant in the oil industry. Morgan’s sixty-year old view is clearly relevant today, when the economic crisis has a major structural dimension. Because of this, it is puzzling to listen to the statements made by Governor Ben Bernanke and others that high unemployment guarantees that inflation will not become a concern – in spite of the huge expansion which has taken place in bank reserves and the huge fiscal deficits which, to some extent, are being or will be indirectly financed by the actions of the Federal Reserve. Secondly the view that inflation cannot coexist with a high unemployment rate is not consistent with much historical evidence from other countries. For example, anyone who worked in Latin America in the 1970s and 1980s would know better: in the 1980s Argentina experienced one of the certified ‘great depressions’ of the twentieth century. It happened with huge inflation and enormous falls in output (Tanzi 2007b). It would be wise to keep these experiences in mind. Exit strategies Let me now turn briefly to the exit strategies. We are told (for example, by the Managing Director of the IMF and by others) that they should be prepared now but should not yet be acted upon. As StraussKahn said in a speech in London on 23 November 2009, “it is too early for a general exit [and] exiting too early is costlier than existing too late”.1 One is reminded of Saint Augustine who asked God to give him chastity, but not yet. Thinking of exist strategies from the current fiscal mess one is tempted to recall a story about an Irishman who got lost in a backward, rural area of Ireland. When he asked someone how he could get to Dublin, the answer he got was: ‘mister, if I were going to Dublin, I would surely not want to start from here’. If we wanted to move toward genuine, sustainable fiscal situations in the future, we would not want to start from where we are now. Unfortunately, there is no choice. 1 CESifo Forum 2/2010 See The Financial Times, 24 November 2009. 108 Three comments could be made in connection with exit strategies from the fiscal mess. First, the longer exit policies are postponed, the larger will the public debts become that will, in turn, send negative signals to economic operators in general. Thus waiting is not a neutral policy. Second, if economic growth remains week, there may never be an ideal, or even good, time to exit. The time of exit will become the subject of political discussion as it became in Japan. Third, the more time passes, the stronger will become the vested interests that protect the new spending programs introduced. Also, the idea of developing and announcing the exit strategies now but waiting until the right moment to enact them would be an invitation to all the lobbies of this world to organize themselves to prevent the needed changes. Those economists who contributed to pushing the countries into the current fiscal mess, believing that they were rescuing them from a great depression, are not likely to have fully appreciated how difficult the exist strategies will be in the fiscal area. This area requires political decisions and coordination among various institutions and political groups at each junction. In this respect exit strategies in the monetary area are much less demanding because they require far fewer political decisions. The exit strategies will be especially difficult for countries that went into the crisis with already high public debts, large fiscal deficits and worrisome demographics. Obviously, the few countries that started with better fiscal situations, Canada among them, will have an easier, though still tough time. It will not be a walk in the park for any country. The IMF (2009) has provided useful, but obviously tentative, estimates for G20 countries of the fiscal effort that they will need to exit from the fiscal mess. Reminding readers that many advanced economies entered the crisis with relatively weak structural fiscal positions, this report highlights the fact that government debt in advanced G20 economies would amount to 118 percent of GDP in 2014, even assuming some discretionary tightening the following year. According to this report, Japan, Britain, Ireland and Spain would require the largest fiscal adjustment, and across the G20 the average overall deficit would reach 7.9 percent of GDP in 2009. This is surely an extraordinary level. In the advanced economies the structural primary balances would deteriorate by 4 percentage points of GDP between 2007 and 2010. Special It should be added that the above estimated deficits have not been inflated by the interaction of inflation and high public debts, as so often happened in past episodes. It is well known that this interaction can distort and inflate conventional measures of fiscal deficits. The current deficit estimates basically assume zero inflation. Thus, in some sense, they have greater ‘density’ (are greater per percentage unit of GDP) than were the deficits in past years in countries that had significant public debts and some inflation. The exit strategy, defined as one that brings government debt-to-GDP ratios below 60 percent (the original Maastricht level) by 2030 for advanced countries “would require steadily raising the structural, primary balance from a deficit of 3.5 percent of GDP in 2010 to a surplus of 4.5 percent of GDP in 2020 – an 8 percentage point swing in one decade – and keeping it at that level for the following decade” (IMF 2009, 23). The required adjustment between 2010 and 2020 amounts to 13.4 percent of GDP in Japan, 12.8 percent in Britain and 11.8 percent in Ireland, followed by 10.7 percent in Spain and 8.8 percent in the United States. In Canada, the necessary adjustment is a more modest 3.1 percent of GDP. Only Canada would be within reach of the famous Maastricht criteria that had been considered too strict and were consequently relaxed some years ago. This adjustment would come at a time when demographic developments will become particularly unfriendly and when growth rates (and tax revenue) are likely to be lower than in recent years. The reason for the expected lower growth rates is that the crisis must have reduced potential growth rates of countries by (a) lowering investment during the crisis years, (b) increasing unemployment, and (c) lowering labor force participation caused by the difficulty in finding jobs. It could be added that recent years’ growth rates had been artificially inflated by existing bubbles, and the demographic trends will contribute to the reduction of the working-age population. The estimated fiscal adjustment required reflects relatively optimistic developments on the financing front. Many observers expect that interest rates will increase due to the pressures coming from high fiscal deficits to be financed and high public debts to be serviced (in practically all countries), and the reversal of ‘quantitative easing’ policies carried out by central banks. Should interest rates begin to rise, the required fiscal adjustment could easily become much larger than that estimated by the IMF. Past adjustment experiences The IMF (2009) also shows that in past years some countries had been able to significantly improve their cyclically-adjusted primary balances, expressed in terms of a percentage share of GDP, over periods that extended from 3 to 15 years. In other words, this study stresses that large fiscal adjustments are possible. This is obviously an important message. However, a few comments may be appropriate regarding this matter. First of all, the argument refers to experiences of single countries operating in isolation. Unfortunately, this finding does not adequately reflect collective experiences within similar global developments. Furthermore, for the reasons mentioned earlier, the fiscal deficits had probably been inflated somewhat by the interaction of inflation (and increased nominal interest rates) together with significant public debts. Second, large reductions in public debts and in fiscal deficits can be possible or easier to achieve by four developments: (a) significant falls in real interest rates, (b) rapid economic growth, (c) unanticipated inflation and (d) major reforms that redefine the proper role of the state in the economy and that lead to large reductions in public spending (or to some increases in the level of taxation). The first two of these developments are unlikely to characterize future developments. It is unlikely that the present, extremely low real interest rates could fall even more or that the growth rate could be significantly higher in the next several years. The third (higher inflation) may play a role, just like in the past, as a consequence of the large injection of liquidity made by central banks. The expectation and the hope is that central banks will have the tools, the independence, and the political courage not to allow inflation to become a serious problem. However, what economists call the ‘time consistency’ temptations could play a role, as they have occasionally done in the past. Some governments are likely to push central banks to inflate, especially if the maturity of the public debts is significant. However, in several countries that maturity was reduced recently 109 CESifo Forum 2/2010 Special to benefit from lower rates on shorter maturity instruments. The last alternative is clearly the most desirable, although it is not an easy one. Because of the difficulties and the economic cost in raising the level of taxation in today’s world, the better strategy would be one that required a significant rethinking of the spending role of the state – a rethinking aimed at significantly reducing the now much inflated level of public spending (see Tanzi 2009). A few countries successfully followed this strategy in the past two decades. These countries have shown that it is a possible, though not an easy strategy, and that public welfare does not suffer as a consequence. Tanzi, V. (2003), “To Scrap Fiscal Prudence Would Be a Mistake”, The Financial Times, 12 August. Tanzi, V. (2007a), “Complexity and Systemic Failure”, in: Estrin, S., G. W. Kolodko and M. Uvalic (eds.), Transition and Beyond, London: Palgrave Macmillan, 229-246. Tanzi, V. (2007b), Argentina: An Economic Chronicle, New York: Jorge Pinto Book Inc. Tanzi, V. (2008), Peoples, Places and Policies: China, Japan and Southeast Asia, New York: Jorge Pinto Books, Inc. Tanzi, V. (2009), The Economic Role of the State Before and After the Current Crisis, Keynote speech made at the 65th International Institute of Public Finance Conference, Cape Town, 13–16 August 2009, www.iipf.org/speeches/Tanzi_2009.pdf. Conclusion The exit strategy and the kind of adjustment that will be needed by many of the G20 countries in future years will require very difficult choices and great political determination. It cannot be based on the often-heard, recent slogan of ‘less market and more state’. Future reforms and a sustainable exit strategy should rather be guided by the slogan: ‘more efficiently regulated markets with less, but more efficient, public spending’. Reducing the level of public spending and making it as efficient as possible would have the double objective of allowing a reduction in the fiscal deficit and promoting growth. This would be an effective exit strategy. A better-regulated private market would facilitate the reduction in public spending by making it possible to shift some current government functions to the private sector. Also, to the extent that there are possibilities for introducing taxes on harmful activities, including environmental charges, they could be relied upon. An immediate introduction of these reforms is recommended. References International Monetary Fund (IMF, 2009), The State of Public Finances Cross-Country, Fiscal Monitor, November 2009, SPN/09/25. Morgan, T. (1947), Income and Employment, New York: PrenticeHall, Inc. The Economist (1997), “The Disappearing Taxpayer”, 6 June, 21–23. Pearlstein, S. (2009), “In the Name of Jobs, Ideas That Won’t Work”, The Washington Post, 6 November, A15. Stein, H. (1984), Presidential Economics, New York: Simon and Schuster. Tanzi, V. (1995), Taxation in an Integrating World, Washington DC: The Brookings Institution. CESifo Forum 2/2010 110 Spotlight ratio of 77 percent), Italy (116 percent) and Greece (115 percent) struggle particularly with excessive debt. Figure 1 also suggests, however, that countries like Belgium (97 percent), Hungary (78 percent) and France (78 percent) must also deal with high debt-toGDP ratios. GOVERNMENT DEBT IN EUROPE CHRISTIAN BREUER AND MATTHIAS MÜLLER* The financial and economic crisis during the past two years exerted a strong pressure on government budgets in the EU member states. According to Eurostat (2010),1 public debt (as a percentage of GDP) in the euro area (EU16) rose to a peak of around 79 percent in the 4th quarter of 2009 compared to a level of 66 percent in the beginning of 2008. In addition to the negative effects on government debt caused by the automatic stabilizers, the rapid increase in public indebtedness was mainly driven by government fiscal stimuli and especially financial support to the banking system aimed at avoiding a long-lasting economic downturn. Since the beginning of the crisis some countries’ financial positions have worsened dramatically leading to rising concerns about these countries’ solvency. As a consequence of its liabilities and due to the weak ability to sell government bonds, Greece asked the European Monetary Union (EMU) and the International Monetary Fund (IMF) for financial aid in April this year. The risk of a national insolvency in an EU member state has never been as imminent since the establishment of the EMU.This implies challenges of a new degree to policy makers in the EU. To appreciate the size of government indebtedness in an international comparison, Figure 1 depicts the stock of government debt as a percentage share of GDP in 27 European countries in the 4th quarter of 2009.2 In recent years, countries at the southern periphery of Europe, such as Portugal (debt-to-GDP * Ifo Institute for Economic Research. 1 The data on government debt in Europe for the 4th quarter of 2009 was published by Eurostat on 22 April 2010. It includes adjustments of previously published data for some countries: for example the debt-to-GDP ratio for Greece in the 3rd quarter of 2009 was revised from 113.2 percent towards 113.8 percent and the same value for Germany from 71.9 percent towards 72.6 percent. 2 The figures show gross government debt, which indicates that the data does not account for the country’s assets. This fact may raise some doubts about the comparability of the data (German Council of Economic Experts 2007). Some northern and eastern European countries show public indebtedness below or close to 40 percent of GDP. In Sweden, for instance, the share reached 42 percent in 2009. Germany (73 percent), Austria (67 percent) and the Netherlands (61 percent) capture the medium range on the scale between 60 to 75 percent, even though these countries also exceed the Maastricht criterion of the Stability and Growth Pact which allows a ratio of government debt to GDP of 60 percent. In order to assess the impact of the financial crisis on national debt, we compare current government debt with the corresponding figures before the crisis. Figure 2 illustrates the change of each country’s indebtedness (expressed in a percentage of GDP) since the beginning of 2008. The strongest increase of debt was observed in Ireland, where public debt grew by 39 percent of GDP, followed by Latvia (around 27 percent) and Britain (23 percent). Greece and Spain have widened their debt by approximately 19 and 17 percent of GDP, respectively. With a stock of debt-to-GDP of ca. 53 percent in the 4th quarter of 2009, Spain is one of the few countries which still fulfill the Maastricht criterion with respect to the debt-limit (see Figure 1). However, it remains to be seen whether Spain will be able to stabilize its public finances since the country has been heavily hit by its real estate crisis and by an increase of unemployment. In Germany (8 percent increase) and Austria (7 percent increase) the crisis has not yet resulted in new government debt to the same extent as elsewhere in Europe (Figure 2). However, recent economic forecasts for Germany have predicted a strong increase in government deficits for 2010 (Carstensen et al. 2009). The financial and economic crisis has resulted in accelerating government debt for the majority of European 111 CESifo Forum 2/2010 Spotlight Figure 1 GOVERNMENT DEBT AS A PERCENTAGE OF GDP IN THE 4TH QUARTER OF 2009 countries. In the medium term, a break of this trend and a step towards fiscal consolidation seems to be indispensable in order to safeguard the stability of the EMU. In this context, fiscal consolidation packages have already been introduced (or planned) in a number of countries including Greece, Spain, Italy, Britain and Germany. The current lively discussion in these countries not only highlights the immediate political, economic and social burden caused by the implementation of such restrictive measures but also suggests a danger that an excessive simultaneous consolidation in the individual countries may, in turn, create large scale negative economic spillovers in Europe. References Carstensen, K. et al. (2009),“ifo Konjunkturprognose 2010: Deutsche Wirtschaft ohne Dynamik”, ifo Schnelldienst 62(24), 17–64. Source: Eurostat (2010). Figure 2 CHANGE OF GOVERNMENT DEBT AS A PERCENTAGE OF GDP BETWEEN THE 4TH QUARTER OF 2007 AND THE 4TH QUARTER OF 2009 Eurostat (2010), Economic and Finance Database, http://epp.eurostat.ec.europa. eu/portal/page/portal/statistics/search_ database. German Council of Economic Experts (2007), Staatsverschuldung wirksam begrenzen, http://www.sachverstaendigenrat-wirtschaft.de/download/publikationen/fipo07.pdf. Source: Eurostat (2010). CESifo Forum 2/2010 112 Trends FINANCIAL CONDITIONS IN THE EURO AREA 8 Nominal Interest Rates a) % % Stock Market Indices 8 7 7 6 6 5 5 380 340 300 long-term Euro STOXX 50 260 4 4 short-term 3 3 220 2 180 1 1 140 0 0 2 yield spread -1 100 -1 German share index (DAX) June 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 a) Weighted averages (GDP weights). Source: European Central Bank. Source: Deutsche Bundesbank, Dow Jones & Co., Inc. In the three-month period from March to May 2010 short-term interest rates increased slightly. The three-month EURIBOR rate grew from an average 0.65% in March to 0.69% in May. Yet the ten-year bond yields declined from 3.99% in March to 3.68% in May. In the same period of time the yield spread decreased from 3.34% (March) to 2.99% (May). % Dow Jones industrial 60 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 14 January 1996=100 Change in M3 a) % The German stock index DAX declined in June 2010, averaging 5,966 points compared to 6,136 points in April. The Euro STOXX also decreased from 2,937 in April to 2,642 in June. The Dow Jones International declined as well, averaging 10,159 points in June compared to 11,052 points in April. Monetary Conditions Index 14 12 12 10 10 -5.0 1994=0 (inverted scale) -4.0 monetary easing -3.0 8 8 6 6 ECB reference value 4.5 % 4 2 4 2 0 -2.0 -1.0 average 1994–2009 0.0 monetary tightening 0 1.0 -2 -2 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 a) Annual percentage change (3-month moving average). Source: European Central Bank. The annual growth rate of M3 stood at – 0.2% in May 2010, unchanged from the previous month. The three-month average of the annual growth rate of M3 over the period from March to May 2010 stood also at – 0.2%, unchanged from the previous period. 113 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 Note: MCI index is calculated as a (smoothed) weighted average of real short-term interest rates (nominal rate minus core inflation rate HCPI) and the real effective exchange rate of the euro. Source: European Central Bank, calculations by the Ifo Institute. Between April and November 2009 the monetary conditions index remained rather stable after its rapid growth that had started in mid2008. Yet the index started to grow again since December 2009, signalling greater monetary easing. In particular, this is the result of decreasing real short-term interest rates. CESifo Forum 2/2010 Trends EU SURVEY RESULTS Gross Domestic Product in Constant 2000 Prices 5.0 EU27 Economic Sentiment Indicator Percentage change over previous year % Index 2000=100, seasonally adjusted 120 EU27 EA16 4.0 3.0 110 2.0 100 1.0 0.0 90 -1.0 -2.0 80 -3.0 -4.0 70 -5.0 June -6.0 60 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 Source: Eurostat. Source: European Commission. According to the first Eurostat estimates, GDP increased by 0.2% in both the euro area (EU16) and the EU27 during the first quarter of 2010, compared to the previous quarter. In the fourth quarter of 2009 the growth rate had amounted to 0.1% for the euro area and 0.2% for the EU27. Compared to the first quarter of 2009, i.e. year over year, seasonally adjusted GDP increased by 0.6% in the euro area and by 0.5% in the EU27. In June 2010, the Economic Sentiment Indicator (ESI) remained broadly unchanged at 100.1 (down by 0.1 points) in the EU27 and at 98.7 (up by 0.3 points) in the euro area (EU16). The ESI reached its long-term average, albeit it will still require further improvement for the economic activity to reach its pre-crisis level EU27 Industrial and Consumer Confidence Indicators 8 Percentage balances, seasonally adjusted % 20 balances EU27 Capacity Utilisation and Order Books in the Manufacturing Industry Capacity utilisation (left-hand scale) (right-hand scale) 0 % 88 Assessment of order books 84 0 -8 80 -20 -16 76 -40 -24 72 Consumer confidence **) Industrial confidence *) -32 Jun-10 Apr-10 Feb-10 Dec-09 Oct-09 Aug-09 Jun-09 Apr-09 Feb-09 Dec-08 Oct-08 Aug-08 Jun-08 Apr-08 Feb-08 64 Source: European Commission. Managers’ assessment of order books improved from – 32.4 in April to – 25.7 in June 2010. In March the indicator had reached – 38.2. Capacity utilisation increased to 75.6 in the second quarter of 2010 from 73.1 in the previous quarter. In June 2010, the industrial confidence indicator decreased by 1 point in the EU27 but remained unchanged in the euro area (EU16). On the other hand, the consumer confidence indicator remained unchanged in the EU27 but increased by 1 point in the euro area. However, these indicators stood below the long-term average in both areas in June 2010. CESifo Forum 2/2010 Dec-07 Oct-07 * The industrial confidence indicator is an average of responses (balances) to the questions on production expectations, order-books and stocks (the latter with inverted sign). ** New consumer confidence indicators, calculated as an arithmetic average of the following questions: financial and general economic situation (over the next 12 months), unemployment expectations (over the next 12 months) and savings (over the next 12 months). Seasonally adjusted data. Aug-07 Source: European Commission. -80 68 Jun-07 Jun-10 Apr-10 Feb-10 Dec-09 Oct-09 Aug-09 Jun-09 Apr-09 Feb-09 Dec-08 Oct-08 Aug-08 Jun-08 Apr-08 Feb-08 Dec-07 Oct-07 Aug-07 Jun-07 -40 -60 114 Trends EURO AREA INDICATORS Exchange Rate of the Euro and PPPs Ifo Economic Climate for the Euro Area 150 USD per EUR 2005=100 1.65 140 1.50 130 Exchange rate 1.35 120 110 German basket 1.20 100 1.05 90 OECD basket 80 0.90 long-term average (1990-2009) 70 US basket 0.75 60 Juni 50 0.60 94 95 96 97 98 99 00 01 02 03 04 05 06 07 08 09 10 94 95 96 97 98 The Ifo indicator of the economic climate in the euro area (EU16) rose somewhat in the second quarter of 2010 and continues to stay below its long-term average. The assessments of the current economic situation improved only slightly vis-à-vis the first quarter. The expectations for the coming six months weakened somewhat but remain positive on the whole. These results indicate that the economic recovery will continue in the second half of the year, albeit at a slower pace. 01 02 03 04 05 06 07 08 09 10 The exchange rate of the euro against the US dollar averaged 1.22 $/€ in June 2010, a decrease from 1.26 $/€ in May. (In April the rate had amounted to 1.34 $/€.) Unemployment Rate 10.4 00 Source: European Central Bank, Federal Statistical Office, OECD and calculations by the Ifo Institute. Source: Ifo World Economic Survey (WES) II/2010. Inflation Rate (HICP) ILO definition, seasonally adjusted % 99 4.5 EU27 EA16 9.6 Percentage change over previous year % 4.0 3.5 8.8 3.0 Core Inflation 2.5 (total excl. energy and unprocessed food) 2.0 1.5 8.0 Total 1.0 0.5 0.0 7.2 -0.5 Jun-10 Apr-10 Feb-10 Dec-09 Oct-09 Aug-09 Jun-09 Apr-09 Feb-09 Dec-08 Oct-08 Aug-08 Jun-08 Apr-08 Feb-08 Dec-07 Oct-07 Aug-07 Apr-10 Feb-10 Dec-09 Oct-09 Aug-09 Jun-09 Apr-09 Feb-09 Dec-08 Oct-08 Aug-08 Jun-08 Apr-08 Feb-08 Dec-07 Oct-07 Aug-07 Jun-07 Jun-07 -1.0 Apr-07 6.4 Source: Eurostat. Source: Eurostat. Euro area (EU16) unemployment (seasonally adjusted) amounted to 10.1% in April 2010, compared to 10.0% in March. It was 9.2% in April 2009. EU27 unemployment stood at 9.7% in April 2010, unchanged compared to March. The rate was 8.7% in April 2009. In April 2010 the lowest rate was registered in the Netherlands (4.1%) and Austria (4.9%), while the unemployment rate was highest in Latvia (22.5%) and Spain (19.7%). 115 Euro area annual inflation (HICP) was 1.6% in May 2010, compared to 1.5% in April. A year earlier the rate had amounted to 0.0%. The EU27 annual inflation rate reached 2.0% in May 2010, unchanged compared to April. A year earlier the rate had been 0.8%. An EU-wide HICP comparison shows that in May 2010 the lowest annual rates were observed in Latvia (– 2.4%), Ireland (– 1.9%) and the Netherlands (0.4%), and the highest rates in Greece (5.3%), Hungary (4.9%) and Romania (4.4%). Year-on-year EU16 core inflation (excluding energy and unprocessed foods) fell to 0.85% in May 2010 from 0.92% in March. CESifo Forum 2/2010 Online information services of the CESifo Group, Munich The Ifo Newsletter is a free service of the Ifo Institute and is sent by e-mail every month. 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