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i i ii DETERMINANTS OF EMERGING MAREKTS DOLLAR-DENOMINATED SOVEREGIN BONDS SPREADS Bashar A. Zakaria B.S. Engineering, University of Jordan, Amman, 1989 M.B.A., California State University, Sacramento, 2000 THESIS Submitted in partial satisfaction of the requirements for the degree of MASTER OF ARTS in ECONOMICS at CALIFORNIA STATE UNIVERSITY, SACRAMENTO SUMMER 2011 ii ii DETERMINANTS OF EMERGING MAREKTS DOLLAR-DENOMINATED SOVEREGIN BONDS SPREADS A Thesis by Bashar A. Zakaria Approved by: __________________________________, Committee Chair Yan Zhou, Ph.D. __________________________________, Second Reader Tim Ford, Ph.D. ___________________________ Date ii ii iii Student: Bashar A. Zakaria I certify that this student has met the requirements for format contained in the University format manual, and that this thesis is suitable for shelving in the Library and credit is to be awarded for the thesis. ____________________________, Graduate Coordinator _____________________ Jonathan D. Kaplan, Ph.D. Date Department of Economics iii iii iv Abstract of DETERMINANTS OF EMERGING MAREKTS DOLLAR-DENOMINATED SOVEREGIN BONDS SPREADS by Bashar A. Zakaria This thesis uses data from twelve emerging markets economies (EMEs) to explain the determinants of EMEs dollar-denominated sovereign bonds spreads by using an econometric model that estimates the fair value of sovereign debt. This model employs macroeconomic fundamentals and high-frequency Variables (HFVs). A cointegration technique was used to find the relationship between EMEs spreads and macroeconomic variables (i.e., real GDP growth, change in terms of trade, and investors’ risk aversion). Afterwards, two HFVs were introduced—commodity index and U.S. 10-year Treasury bond yield—to examine short-term deviation of spreads from the equilibrium by using an error correction model. The model predictive value is evaluated by examining the predicted value of the model vs. the actual value through back testing of in-sample and out-of-sample data points. The best specification model produced close to 62 percent hit ratio coming from trading triggers that are at least one standard deviation away from the mean. __________________________________________, Committee Chair Yan Zhou, Ph.D. ________________________ Date iv iv v ACKNOWLEDGMENTS I would like to thank my dedicated professors Dr. Yan Zhou, Dr. Tim Ford, and Dr. Esen Onur for their excellent guidance and feedback that made the completion of this thesis possible. I would like also to thank my lovely wife Alia, and my beautiful daughters (Fadwa, Farah, and Dania) for giving me much of their time to complete this thesis. It wasn’t possible without their support. I would like to thank my colleagues in the investment community for their generous support—access to databases, reports, etc. Finally, I would like to extend a special gratitude to Dr. Warren Trepeta for being a great mentor and a solid motivator for more than eight years in my professional life. v v vi TABLE OF CONTENTS Page Acknowledgments ...................................................................................................... v List of Tables .............................................................................................................. viii List of Figures ............................................................................................................. ix Chapter 1. INTRODUCTION .................................................................................................. 1 2. LITERATURE REVIEW……………................................................................... 7 2.1. Long-term Series Approach…………………………………………......... ..7 2.2. Panel Regressions ………………………………..…………………… 8 2.3. Time-series Analysis…………………...…………………………….. 10 2.4. Survey of Previous Work……………………………………………... 12 3. EMPIRICAL MODEL AND DATA……. ……………………………………... 17 3.1. Empirical Model.………………………………………………………. 17 3.2. Selection of Variables.……………………..…………………………. .......19 3.3. The Data Set……………………………………………............................. 26 3.3.1 Dependent Variable………………………………………….. 27 3.3.1 Explanatory Variables……………………………………….. 27 4. ESTIMATIONS AND RESULTS………………………………...……………. 30 4.1. Estimation of Results …..……………………………………………... 30 4.1.1. Macroeconomic Variables…………………………………… 30 vi vi vii 4.1.2. High-frequency Variables ……………….…........................... 30 4.2. Empirical Results……............................................................................ 32 4.2.1. Estimating Coefficients…….................................................... 32 4.3. Aggregated Results………………..……...…………… ……………..... .....34 4.3.1. Country Results………….……….…………………………..........34 4.3.2. Model Coefficients…………….……………………………..........35 4.4. Testing of the Model……........................................................................ 39 4.4.1. In Sample Testing…….……….……………………..........39 4.4.2. Out-of-sample Testing….…….…………………….......... 40 4.4.3. Looking for Strong Signals…………………………..........41 5. CONCLUSION........................................................................................................ 43 5.1. Summary of Findings...………………...................................................... 43 5.2. Suggestion for Future Research…………................................................. 44 References ..................................................................................................................... vii vii 46 viii LIST OF TABLES Page Table 3.1. Variables Sources and Definitions……………………………………….. 29 Table 4.1. Standard unit root tests, null hypothesis is unit root……..…………….. 31 Table 4.2. EM sovereign bonds cointegration tests……....…………..……………… 31 Table 4.3. Standard unit root test for High-frequency variables, null hypothesis is unit root……………………………………………………….……… 32 Table 4.4. Estimated error correction term………………… ………………………. 33 Table 4.5. EM bond index spread over the last 12 months—market and Estimated…………………………………………………….…………… 34 Table 4.6. EM Bonds—Actual vs. Estimated and the Deviation …………............... 35 Table 4.7. A change in the variable leads to an X-amount of bp change in Spreads…………….……………………………….……………............. Table 4.8. EM bond index spread forecast evaluation—hit rate…..…………............ viii viii 37 40 ix LIST OF FIGURES Page Figure 1.1. Brazil vs. U.S. 10-year Sovereign Spreads..… ………………….……..... 3 Figure 1.2. Emerging Markets Bond Volatility vs. the U.S. 10-years…….………...... 6 Figure 3.1. Real GDP Growth vs. 5-Year CDS Spreads…….………........................... 20 Figure 3.2. Terms of Trade vs. 5-Year CDS Spreads……… ………………….……... 21 Figure 3.2.1. Chile’s CDS Spread vs. Copper Spot Prices…….………....................... 22 Figure 3.3. Emerging Market Sovereign Bonds Spreads vs. Risk Aversion Index........ 23 Figure 3.4. Commodity Prices vs. Emerging Markets Sovereign Bonds Spreads…...... 24 Figure 3.5. U.S. Treasury Yields vs. Emerging Markets Sovereign Bonds Spreads....... 25 Figure 4.1. Market Spread Deviation from the Estimated Spreads (Market – Estimated) 36 Figure 4.2. Market vs. Estimated Spreads for In Sample Testing................................... 41 Figure 4.3. Market vs. Estimated Spreads for Out-of-sample Testing............................ 42 Figure 5.1. South Africa’s Sovereigns vs. Corporate Bonds Spread Movements…....... 45 ix ix x x 1 Chapter 1 INTRODUCTION This thesis examines the impact of macroeconomic variables along with highfrequency variables (HFVs) on emerging markets economies (EMEs) dollar-denominated sovereign bonds spreads. While some EMEs have been issuing debt in local currency, this study is focusing on dollar-denominated sovereign debt because it aims at neutralizing the impact of local currency valuation against hard currencies. Understanding the drivers of sovereign bond spreads allows countries to focus on “what matters” to better their debt metrics, improve their credit profile, lower their borrowing cost, and eventually attract sizable foreign direct investments which eventually could translate into lower unemployment and better government revenues. This research found that higher real GDP growth is negatively related to spreads, and an improvement in terms of trade leads to a spread tightening (lower spreads) in six out of nine. An increase in risk aversion has led to higher spreads, especially in countries with higher spread volatility. U.S. Treasury yields impact on spreads varied over time. Finally, commodity prices are associated with a spread tightening. Sovereign bonds are issued by sovereign countries and explicitly guaranteed by the full faith and credit of the issuer. Like all bonds, sovereign bonds are usually rated by at least one of the three main rating agencies (i.e., Moody’s, Standard & Poors, or Fitch). Sovereign bonds rating, similar to consumers’ FICO score, reflects the probability of a default, which is defined as the issuer inability and (or) unwillingness to pay back the 1 2 bond’s par value and (or) the coupon payment in full and on time. Willingness to pay is typically hard to measure, unlike the ability to pay that can be assessed by examining the sovereign balance sheet (e.g., foreign exchange reserves, current account balance, debt outstanding, government revenues, etc.). Willingness to pay lies in the hands of the political leadership of the country. If a country, for some reason, concludes that its finances won’t be affected in case of a default, then the political leadership might elect to do so. Case in point is when Ecuador defaulted on its external debt in 2007/08; the political leadership thought that the previous administration along with international bankers ruined the country’s finances. The pricing of sovereign bonds is quoted in spread terms and measured in basis points (100 basis points (bp) = 1%), which is the risk premium, or additional yield, required by investors to hold bonds issued by EMEs that are perceived to be more likely to default than bonds issued by developed economies1. Thus, the difference between the sovereign bond yield and the yield of a matching maturity risk-free bond (in most cases U.S. Treasury bills or bonds) constitutes the sovereign bond spread. Moreover, the change in sovereign spread is a function of not only the yield of the sovereign bond, but also the yield of the risk-free bond. Figure 1.1. shows an example of sovereign bonds spreads between the Brazilian dollar-denominated 10-year bond and the U.S. 10-year Treasury bond. The Brazilian sovereign bond was chosen due to its size in the EMBI, close to 20%, in addition, Brazilian bonds are amongst the most liquid in the sovereign bond universe because The recent economic crisis of 2008/09 has proved the opposite where EMEs didn’t default at all. Instead, developed issuers were the ones seeking help form the IMF. 1 2 3 Brazil is an active sovereign bond issuer with a size and maturity that appeal to sovereign debt investors. That makes Brazilian spreads a good proxy of emerging market sovereign spreads. The spread between Brazilian 10-year and U.S. 10-year was 200 bp on 6/30/2008 and widened on 12/22/2008 to 455 bp. The change in spread, in this example, has two driving forces: The first driving force is higher Brazilian yield (coupon / current price) as a result of lower Brazilian bond price. As the market price of Brazilian bond dips lower, the current yield gets higher, which would cause higher spreads relative to the U.S. 10-year. Figure 1.1 Brazil vs. U.S. 10-year Sovereign Spreads 8 7 6 Spread = 200 bp Yield in % 5 Spread = 455bp 4 Brazil 1 U.S. 2 Brazil U.S. 3 0 6/30/2008 12/22/2008 Second driving force is lower U.S. 10-year yield (or higher bond prices) that makes the spread wider. Dollar-denominated sovereign bonds’ spread movements reflect the market price based on investors sentiment and assessment of the issuer’s default probability. As the 3 4 perceived risk of a sovereign bond gets lower due to fundamental reasons (e.g., lower external debt-to-GDP, higher foreign exchange reserves, improving terms of trade, current account surplus, etc.), or non-fundamental reasons (e.g., implicit guarantee of payment by a wealthier nation, market favoring the asset class, optimism of long-sought reforms materializing sooner than anticipated, observable improvement in political stability, or even due to supply and demand dynamics, etc.), the price of sovereign bonds gets higher resulting in a compressed spread (or tighter spread) while other things are held constant. Being able to accurately identify variables that impact spreads and then predict spread movements is the key success factor for sovereign bond portfolio managers. Understanding and accurately anticipating spread movements on a tactical or strategic basis would allow investors to long or short risky bonds on a timely fashion to maximize alpha (excess returns over the benchmark returns). This is exactly what happened in early December of 2008 when the yield of U.S. 10-year Treasury bond and 30-year Treasury notes and bonds have reached low to mid 2 percent--a level that has not been seen ever. What happened? In the previous spread example, the U.S. yield curve has shifted lower while the Brazilian curve has shifted higher (in other words the price of Brazilian bonds went down and the price of U.S. bonds went up). After the unfolding of the global liquidity crisis that came after the blowup of Bear Sterns and Lehman Brothers’ bankruptcies, there was a significant round of deleveraging where international investors along with hedge funds portfolio managers sold off risky assets and bought safe assets (i.e., U.S. bonds). That 4 5 explains the lower U.S. yields (or higher U.S. bond and note prices) and the higher yields (or lower prices) of Brazil and the emerging market bonds in general. Emerging market countries issue bonds to finance infrastructure projects, current account deficits, or even sometime budget deficits. Borrowing cost is highly volatile. Figure 1.2. shows the yield on a U.S. 10-year constant maturity vs. the JP Morgan Emerging Markets Bond Index (EMBI), both expressed in percent, over the last 13 years. The average yield on the U.S. 10-year constant maturity is 4.53 percent with a standard deviation of 0.9 percent while the average yield on EMBI is 9.83 with a standard deviation of 2.81--more than double the yield and three times the standard deviation of the U.S. 10-year Treasury. The Asian crisis, the Russian Default, and the dot com bubble were all events that have contributed to this significant difference in volatility and yield. According to Rocha, Siqueira, and Pinheiro (2006), emerging market countries since then have shown significant improvements in many economical, financial, and regulatory fronts that made them a favored destination for many money managers who were looking for higher yields. Moreover, there are external factors (interest rate, global economic growth, global risk appetite, and quest for a higher yield) that are equally important according to Cantor and Packet (1996). The previous factors significantly improved international money managers’ risk appetite and sent them looking for higher yielding EMEs bonds. International money managers’ assessment of EMEs sovereign bond risk was confirmed by rating agencies who upgraded the credit rating of many EMEs faster than upgrading developed economies ratings. It’s important to identify the main drivers 5 6 of the sovereign spreads because they are the key for emerging market countries as they constitute a floor for the cost of external borrowing. Figure 1.2. Emerging Markets Bond Volatility vs. the U.S. 10-years 16 14 12 Percent 10 8 6 4 2 US 10-year Constant Maturity Dec-09 Dec-08 Dec-07 Dec-06 Dec-05 Dec-04 Dec-03 Dec-02 Dec-01 Dec-00 Dec-99 Dec-98 Dec-97 0 JP Morgan EMBI The remainder of this thesis is organized as follows. Chapter 2 surveys relevant literature, Chapter 3 presents the data used, Chapter 4 describes the empirical model and the estimation of results, and Chapter 5 concludes. 6 7 Chapter 2 LITERATURE REVIEW 2.1. Long-term Series Approach A few studies attempted to understand the behavior of very long time series of EMEs bond spreads against riskless sovereign bond—a AAA-rated sovereign bond like the U.S. Treasury. These studies relied on a long-series of annual data. However, long time series have little explanatory value in the twelve to 24 month horizons due to recent event risk, low frequency releases, and data availability and reliability issues for some countries. Using over 600 years of data, Reinheart and Roggoff (2008) showed that serial default is a nearly universal characteristic of risky sovereign debt markets. Countries tend to struggle to graduate from developing to developed economies. This graduation process requires capital flows, local credit market development, a developed yield curve, as well as boom and bust cycles. Major defaults episodes, according to the paper, are typically spaced some years and perhaps decades apart. This is indeed one of the major caveats of models using long time series. They are mostly useless to predict market prices in the one to two year horizon. Accordingly, crises frequently originate from the financial centers with transmission through interest rates shocks and commodity prices. Indeed, as shown below these last findings are quite helpful in specifying shorter term version of spread valuations. Mauro, Sussman and Yafeh (2000) compared the behavior of bond yields against the riskless yield in the 1990s and 1870-1913. They found that sharp changes in spreads in 7 8 the 1990s tend to be mostly related to global events. Unlike Reinhart and Rogoff (2008), the authors found that fundamentals where more important in earlier years. Mostly, country-specific events drove spreads in the last two centuries. The authors used event study to test behavior changes in the spreads around specific events where meaningful capital flows and flight took place. The main statistical techniques applied were principal components analysis, beta comparisons against benchmarks, and GARCH models. A key limitation of these methodologies is the frequency of those defaults that took place over several years or decades apart. Reinhart and Rogoff (2008) claim that this low default frequency gives policy makers and investors a false since of confidence while trying to convince themselves that "this time is different." For investors, however, this is a key difficulty. Holding short positions in some bond markets may trigger a significant underperformance against the benchmark. This is usually the core of the reasoning behind some herd behavior across credit market investors as well as the contagion impact amongst different markets. 2.2. Panel Regressions A panel is a dataset that combines time-series information for a cross-section of individual countries. This method tends to show slightly more robust results than capital flows due to a higher data frequency (quarterly vs. annually). These models bundle several countries together by applying panel regression econometrics with fixed effects to estimate spread sensitivity to domestic and external factors. Panel regressions attempt to explain the relationship between sovereign spreads and domestic and external macroeconomic 8 9 indicators. Domestic macroeconomic indicators include statistics that highlight GDP, savings and investments, revenues and expenditures, current account, inflation, foreign exchange reserves, private vs. public local debt, etc. External macroeconomic indicators include the country’s external position—external debt to GDP, trade balance, amortization amount, liquidity ratio, net external borrowing requirement, and external vulnerability indicator. The coefficient estimates that are obtained from panel regressions provide an average set of long-run coefficient driving spreads for all the countries. Then, the same set of long-run coefficients is applied to the different country fundamentals and arrives at the country specific estimates of the long-run equilibrium spreads. One of the advantages of the panel regression model is that it accommodates countries with a different data set starting point. Moreover, they allow the researcher to benefit from time series as well as cross-sectional data, and that provides a larger data set when data are limited. Panel regressions fair values are usually stale and of little help in the six to twelve month horizons. The frequency, availability, and possible revisions of the data release could be problematic for some countries. For example, some countries release economic data on an annual basis and others on quarterly basis. Some countries don’t pay great attention to the importance of timely releases, so some series won’t get updated to reflect the most recent year or a quarter. Issues regarding data availability could severely impact the researchers’ ability to accurately model sovereign spreads due to the limited data points 9 10 available. Another potential limitation to this approach is the transparency which casts a shadow of doubt on the reliability of data releases. 2.3. Time-series Analysis Time-series uses higher frequency data, usually monthly or weekly data. Time series analysis is usually the most robust framework. In these models spreads are usually explained by monthly, weekly and, sometimes daily factors, which solve the shortcoming of the panel regression method. Growth and credit metrics are the key macro factors. Otherwise these models' explanatory factors are market variables such as U.S. Treasury yields, commodity prices, and currency valuation. Time series econometric fit and performance are usually the best but the least appealing from a macroeconomic perspective (explained later in this thesis). Recently, market practitioners have been attempting to use macro-based models to explain emerging market sovereign bond spreads using available and up-to-date time series to overcome the problems that they have faced with data availability and frequency. Average credit ratings from the three major rating agencies along with growth and credit metrics all have been used. GDP growth has a lagging trickle effect on many other sectors in the economy. Slower GDP growth translates into worsening debt and fiscal ratios, as many debt and fiscal indicators are expressed as a percent of GDP. As the denominator shrinks or exhibits slower growth patterns, then the numerator, as a percent of the denominator, gets larger, and that would trigger the rating agencies to revise the credit outlook for a country and possibly follow it with a downgrade. Markets are typically 10 11 quicker in reacting to such developments. Sovereign spreads will reflect a lower credit rating for countries that the market participants are not confident of their growth prospects. As a result, funding cost, in terms of sovereign bond spreads, will increase accordingly. Short-term factors like U.S. Treasury yields, currency valuation, inflation rate, dedicated money flow, and commodity prices were also used because of higher data frequency. Such higher frequency releases resulted in time series models that are more intuitive once compared to other less frequent ones. The usual specification of these models is expressed by a cointegrating equation according to Sueppel (2005). The long-term equilibrium relationship between the countries’ spreads, macro fundamentals, and global investors’ level of risk aversion (possibly through a proxy such as swap rates or UST yields) can be represented by the following equation. Log Spread Log B Log GDP Log REER Log IS u Where GDP is GDP growth rate (year over year annualized), REER is the real effective exchange rate, IS is EMEs investors’ sentiment, and u is the difference between market spreads and what is indicated by its fundamentals (the error term). B is the regression equation intercept. The drawback of time-series models is over reliance on market data releases that are often backward looking. Actual spreads might diverge from modeled ones because actual spreads tend to price in anticipated data releases. 11 12 2.4. Survey of Previous Work Westphalen (2001) tried to find the determinants of sovereign bond spreads changes by identifying variables that are expected to influence sovereign spreads and then testing their statistical significance. The data set covered the period from March 1995 to April 2001 for 26 countries and included 215 non-optionable U.S. dollar or hard currency denominated bonds. Credit spreads were calculated based on the difference between the sovereign bond yield and the corresponding benchmark risk-free yield. Finally, distance to default was measured by debt service as a percent of export and exports as a percent of GDP. Debt service as a percent of exports, changes in 10-year risk-free rate, changes in the slope of the yield curve, changes in the twelve month historical volatility of the local stock market, and the return of the MSCI world stock index were the explanatory variables. The estimation was done by using pooled generalized least squares. Signs of the coefficients were mostly inline with expectations and R-squared came at 15.9 percent, which implies that the model leaves a large part of the changes in sovereign spreads unexplained. Hong (1998) employed an empirical analysis to determine emerging markets sovereign bond spreads. Two sets of explanatory variables were utilized. The first one included liquidity and solvency variables (e.g., external debt as a percent of GDP, reserves as a percent of GDP, current account as a percent of GDP, debt service as a percent of exports, growth rate of imports, GDP growth rate, growth rate of exports, and net foreign assets). The second set included macroeconomic variables (e.g., terms of trade, inflation rate, nominal exchange rate, real oil price, 3-month U.S. Treasury bill rate, bond maturity, amount of bonds outstanding, etc.). As for the first set of variables, they were all found to 12 13 be statistically significant with the right predicted sign except for Current Account/ GDP (CGDP) and GDP Growth (GGDP). The second set of variable showed a negative relationship between terms of trade and sovereign bond spreads and a direct relationship between inflation rate and higher sovereign bond spreads, both were statistically significant. As for Nominal Exchange Rate, it showed a positive relationship with spreads, which is against what was expected. When it comes to external shocks, Real Oil Price (ROP) and the U.S. 3-months T-bill rate both happened to have a direct relationship with spread, but none was found to be statistically significant. Maturity and amount outstanding explanatory variables had an inverse relationship with bond spreads and both were statistically significant. The R-squared came in at 64.9 percent. Ferrucci (2007) attempted to quantify the portion of change in sovereign bond spreads that’s explained by a change in the underlying macroeconomic fundamentals2 while controlling for external factors (i.e., liquidity and market risk), then compared predicted spreads vs. actual spreads. He used a reduced-form model (resulted from generalto-specific approach) where both the default probability and the recovery rate are exogenous. The models aimed at explaining the long-run determinants of sovereign bond spreads with some short-run dynamic behavior. Data from J.P.Morgan’s EMBI and EMBI Global secondary market spreads were used (1995 – 1997) for 27 countries. This study concluded that market spreads broadly reflect fundamentals, but non-fundamentals factors play a more important role in explaining spreads. Moreover, it concluded that markets 2 External debt/GDP, fiscal budget/GDP, openness, amortization/reserves, interest payment/external debt, current account/GDP short-term external debt/external debt, yield of 30-day US T-bill, yield of US 10-year bond, log of yield spread between low and high-rated US corporate bond, log of US S&P 500 equity index. 13 14 don’t take into account macroeconomic fundamentals when pricing sovereign risk. The study found a divergence between predicted and actual spreads due to market mispricing and market imperfections. Unaccounted for qualitative factors may have been able to explain the divergence in the pricing of the sovereign debt, but they were not included in this study. Hilscher and Nosbusch (2007) examined the variation in sovereign bonds spreads across countries and over time to determine how much can be explained by macroeconomic fundamentals3. Their focus was the relationship between the variations in macro fundamentals vs. the variation in the spreads. They used daily spread data for 32 countries that cover the period from 1993 to 2004 for dollar denominated and highly liquid sovereign bonds with average maturity of twelve years. Hilscher and Nosbusch (2007) were able to explain up to 48 percent of the time variation in the EMBI spreads using both a reduced-form and a simple structural model. A significant part remains unexplained despite using a large number of variables in their estimation. They assumed a linear relationship between macro variables and credit risk and used the terms of trade as a proxy of the country’s economy. Terms of trade (ToT) turned out to be the most important determinant of spreads (a measure of repayment capability) followed by debt/GDP ratio within the country series but not across countries (a measure of country’s liability). Eichengreen and Mody (2000) analyzed 1,000 sovereign bonds issued by 37 emerging market countries with a specific maturity, face value, and coupon issued from 1991 to 1996. They examined issue and pricing decisions jointly to minimize selectivity bias. 3 Debt/GDP, terms of trade, GDP growth rate, foreign exchange reserves/GDP, and country default history. 14 15 Maximum-likelihood probit model and a regression using the estimated Inverse Mills Ratio were used in this analysis. It was found that observed changes in fundamentals4 explain only a fraction of the spread compression in the period leading up to the late 1990s emerging market crisis. Moreover, this study found that Investors tend to price bonds on the basis of incomplete knowledge of countries’ economic and financial circumstances, which is conducive to market volatility. In addition, it was found that the same explanatory variables have quite different effects on different types of borrowers (Latin American vs. East Asian) whereas, overtime, spreads are clearly influenced by shifts in market sentiment rather than by shifts in fundamentals. More specifically, it was found that higher debt-toGNP both reduces probability of bond issuance and increases the spread. Debt rescheduling leads to a higher issuance and wider spreads. As U.S. yields rise, emerging market countries tend to issue less, and this decline in issuance limits supply and increase prices (reduces spreads). This thesis will contribute to the existing literature by blending a set of macroeconomic fundamentals along with HFVs5 to explain sovereign bonds spreads for twelve emerging markets countries. This thesis will use a macroeconomic indicator (i.e., change in terms of trade) and a market sentiment indicator (i.e., Citi Global Risk Aversion Index)—two explanatory variables that have not been used in a cointegration and error correction models before. Macroeconomic indicators, which are mostly used in the literature to explain sovereign spreads, come in a very low frequency, usually on annual or quarterly 4 Total external debt/GDP, debt service/exports, reserves/GNP, GDP growth rate, budget deficit/GDP, recent credit rating, a dummy variable that captures whether the country restructured its dept before or not. 5 High frequency variables, HFVs, (or according to Sueppel (2005) fast fundamentals) are “parameters that are available to the market at large and whose levels help to predict future changes in the credit rating.” In this study, HFVs are variables that literature has shown to impact spreads and with daily data frequency. 15 16 basis, and they fail to capture market sentiment and higher market volatility during times of risk-off trades where investors flock to quality assets. Finally, this research uses a commodity index that contains both hard and soft commodities unlike what other literature sources have traditionally been using—mostly oil prices like in Sueppel (2005). This should improve on exiting results because countries included in this study export a variety of hard and soft commodities. The results of this research add to the existing work and were able to predict spread movements in nine out of twelve countries. 16 17 Chapter 3 EMPIRICAL MODEL AND DATA 3.1. Empirical Model As it was mentioned earlier, sovereign bonds’ spreads are impacted not only by fundamentals factors or macroeconomic indicators, but also by non-fundamental or macroeconomic factors. Thus, to model sovereign spreads, various explanatory variables can be put together in an equation to explain the relationship. CDSi,t = f (ICCRi,t, RPi,t) …………………..(1) The dependent variable is emerging market Credit Default Swaps spread (CDSi,t), a timely market proxy of sovereign bonds spread. The explanatory variables are individual country credit risk (ICCRi,t) and investors’ demanded risk premium (RPi,t). ICCRi,t captures macroeconomic fundamentals like GDP growth (GDPGi,t), and change in terms of trade (CToTi,t). ICCRi,t = f (GDPGi,t, CToTi,t) …………..…(2) RPi,t is a function of investors’ risk aversion index (RAi,t) measured by Citi Global Risk Aversion Index (RAi,t). RPi,t = f (RAt)………………..………….(3) By Replacing equations (2) and (3) into equation (1), CDSi,t becomes a function of macroeconomic indicators, as well as investors’ risk aversion index. CDSi,t = f (GDPGi,t, CToTi,t, RAt)…………………..(4) For simplicity, spreads’ are assumed to have a functional form –the f-function in equation 17 18 (4) above– is characterized for a Cobb-Douglas function6. This implies the notion that macroeconomic fundamentals and the investors’ risk aversion are likely non-linear and compound each other. CDSi,t = i . GGDPxi,t . CToTγi,t . RAλi,t………………(5) When expressed in a logarithmic form, equation (5) becomes. Log CDSi,t = Log I + x Log GDPGi,t+ γ Log CToTi,t+λ Log RAt……(6) To validate this theoretical model, unit root tests for the twelve countries in this study were conducted followed by Johansen’s cointegration test which implies that a set of variables is cointegrated if each of the individual series presents a unit root but that a linear combination of them is stationary. Finally, the cointegrating equation—the longterm equilibrium relationship between the country’s spreads, its macroeconomic fundamentals (GDPG and CToT) and global investors’ level of risk aversion (RA)— is presented using the following format. Log CDSi,t= Log i+ x Log GDPGi,t+ γ Log CToTi,t+λ Log RAt+ ui,t..............(7) ui,t is the difference between observed market spreads and the spread that’s indicated by the model (i.e., the error term). Error correction mechanism (ECM) states that if sovereign spreads, macro fundamentals (GDPG and CTOT) and investors’ global risk aversion are cointegrated, 6 The Cobb–Douglas production function is used to represent the relationship between inputs and outputs. In its general form, the function can be represented by z=C.x a.yb; where z is an output and x and y are inputs. “C”, “a” and “b” are constants. 18 19 then according to Granger Representation Theorem, these explanatory variables can be modeled in an error-correcting relationship. The error-correction mechanism prevents the integrated variables from drifting apart without a bound. The ECM model, similar to Sueppel (2005) model, can be expressed in the following ECM formulas: l Y i,t a i,j Z i ,s , j Yi,t - s b u D x .......... ......( 8 ) i , j i ,t 1 i, j t i , j ,t 1 j 1 For Y'i,t = Log CDSi,t, LogGDPGi,t, Log CToTi,t, Log RAt and x't = {HFV1,t…HFVn,t} HFVs are high-frequency variables available to the market at large. Their levels help to predict future changes in the CDS spreads and reflect current market conditions. The coefficients ai,j and bi,j are 3 x 1 vectors, Zi,s,1, …Zi,s,l are 3 x 3 matrices coefficients of lagged changes in variables (log spreads, log GDPG, log CTOT and log RA), while Di,j is a 3 x n matrix—the coefficient of HFVs. The term ui,j,t-1 represents how much the system was out of equilibrium in the previous period, and εi,j,t-1 is the error term. The coefficient bi,j measures the speed of adjustment or the proportion of the error is corrected each period. 3.2. Selection of Variables The model relies on three macro variables and two HFVs to explain the evolution of spreads. The first one is Real GDP Growth (GDPG) expressed in constant prices in U.S. dollar at the official exchange rate. 19 20 Figure 3.1 shows that higher GDP growth is inversely related to sovereign CDS spreads. Higher GDP results in lower debt ratios, lower external financing needs, higher ability to service and payback debt, higher revenues, budget surpluses, lower default risk, and higher income per capita (an important factor to get a higher credit rating), Hilscher and Nosbusch (2007). Figure 3.1 shows GDP growth to be inversely related to CDS spreads. GDP growth is a lagging indicator that summarizes the economic performance of a national economy up to the most recent quarter. Figure 3.1. Real GDP Growth vs. 5-Year CDS Spreads 250 380 360 340 240 Real GDP (Billions of US $) 300 230 280 260 220 240 220 200 210 180 CDS Spreads (in Basis Points) 320 160 200 140 120 GDP (LHS) Dec-10 Sep-10 Jun-10 Mar-10 Dec-09 Sep-09 Jun-09 Mar-09 Dec-08 Sep-08 Jun-08 100 Jan-00 190 CDS (RHS) The second is change in terms of trade (CToT). CToT is the annualized percent change in the average price of merchandise exports relative to the average price of merchandise imports. Improving terms of trade could potentially lead to a trade surplus, current account surplus, higher revenues, lower debt, appreciating real effective exchange 20 21 rate, and higher economic growth. Expected relationship with spreads is also negative— Figure 3.2. The impact of CToT varies among countries depending on their openness of the economy (i.e., exports + imports as a percent of GDP) and their reliance on commodity exports. As the value of exports increase relative to imports, that leads to trade balance surpluses, which would lessens external financing needs, lowers sovereign bond issuance, and tightens spreads Ferrucci (2007). For example, Chile’s sovereign bond issuance became very limited after copper prices, Chile’s major export commodity, significantly increased. Moreover, Chile’s CDS spreads went noticeably lower between 2005 and 2007 and between 2009 and 2011 as copper prices appreciated noticeably (Figure 3.2.1.). Figure 3.2. Terms of Trade vs. 5-Year CDS Spreads 250 40 Correlation = -0.31 Terms of Trade 20 150 10 100 0 50 CDS in in Basis Points 30 200 -10 CDS (LHS) Jan-11 Jan-10 Dec-08 Jan-08 Jan-07 Jan-06 Jan-05 Jan-04 -20 Jan-00 0 Terms of Trade (RHS) The third is Risk Aversion (RA). The Citi Global Risk Aversion Index measures 21 22 risk aversion in global financial markets. It’s an equally weighted index of emerging market investors’ risk appetite and sentiment that incorporate implied foreign exchange, EMEs equity indices volatility, and swap volatility. The index is expressed in a rolling historical percentile and ranges between zero (low risk aversion) and one (high risk aversion). This indicator gained a special importance after the collapse of Bear Sterns and Lehman Brothers where contagion, liquidity squeeze, solvency, and counterparty risk7 were all elevated. Figure 3.2.1. Chile's CDS Spread vs. Copper Spot Prices (Normalized levels) 800 700 January 2005 = 100 600 500 400 300 200 100 CDS 5/7/2011 1/7/2011 9/7/2010 5/7/2010 1/7/2010 9/7/2009 5/7/2009 1/7/2009 9/7/2008 5/7/2008 1/7/2008 9/7/2007 5/7/2007 1/7/2007 9/7/2006 5/7/2006 1/7/2006 9/7/2005 5/7/2005 1/7/2005 0 Copper Source: Bloomberg According to Sy (2001), high global investor risk aversion leads to wider EM sovereign 7 Counterparty Risk is a risk that arises when a seller of CDS fails to fulfill the contractual obligation to the buyer due to illiquidity, insolvency, or lack of collateral. 22 23 bonds spreads. As risk aversion increases, emerging market sovereign bonds spreads increases (Figure 3.3.) HFVs include monthly change in commodity prices and U.S. 10-year bond yield. Monthly change in commodity prices is measured by Standard and Poors (S&P) Enhanced Commodity Official Close Index. Sueppel (2008) used what he described as fast fundamentals, oil price, U.S. 10-year Treasury yield, and euro-dollar exchange rate, because they impact credit rating, funding cost, and exports volume respectively. Figure 3.3. Emerging Market Sovereign Bonds Spreads vs. Risk Aversion Index 1,600 1.00 0.90 1,400 Basis Points 0.70 1,000 0.60 800 0.50 0.40 600 0.30 400 RAI (0 = low, 1 = high) 0.80 1,200 0.20 200 0.10 Market Spreads (LHS) Dec-10 Dec-09 Dec-08 Dec-07 Dec-06 Dec-05 Dec-04 Dec-03 Dec-02 Dec-01 Dec-00 Dec-99 Dec-98 0.00 Dec-97 0 RAI (RHS) Source: Bloomberg, JPMorgan, and Citi In this study, U.S. 10-year Treasury was used as an indicator of funding cost and as a global benchmark of risk-free yield. Euro-dollar exchange rate was not used, and oil prices were replaced by a commodity index. This index contains soft and hard commodities (i.e., agricultural, industrial metals, precious metals, gas, and oil). The 23 24 Majority of the countries in this study are net exporters of one or more types of commodity that are covered by this index. This is another contributing factor the existing literature. The theory here is that as the country’s production of one or more commodity goes higher and as the world demand for exported commodities grow larger, commodity prices climb higher, which translate into, ceteris paribus, a higher balance of payment surplus, current account surpluses, lower external financing needs, higher foreign exchange reserves, and stronger ability to service and (or) payback debt. Figure 3.4. shows a negative relationship between S&P Enhanced Commodity Index and J.P.Morgan’s EMBI. Figure 3.4. Commodity Prices vs. Emerging Markets Sovereign Bond Spreads 1,200 1,400 1,000 1,200 600 US $ 800 600 400 400 200 200 Market Spreads (RHS) Feb-11 Mar-10 Aug-10 Apr-09 Sep-09 Oct-08 May-08 Jun-07 Nov-07 Dec-06 Jun-06 Jul-05 Jan-06 Feb-05 Mar-04 Aug-04 Apr-03 Sep-03 Oct-02 May-02 Jun-01 Nov-01 Dec-00 0 Jul-00 0 Jan-00 Basis Points 1,000 Correlation = -0.78 800 Commodity Prices (LHS) Source: International Institute of Finance (IIF), Bloomberg, and JPMorgan The U.S. 10-year Treasury bond yield is used as a proxy for global interest rates. 24 25 Sovereign bonds investors consider the U.S. 10-year Treasury as a safe haven or a riskless asset similar to how individuals view their bank deposits being in safe hands because they are federally insured. Sovereign governments, institutional investors along with individual investors treat the U.S. 10-year treasury as an investment safe haven because of its explicit guarantee by the full faith and credit of the U.S. government. When investors’ confidence in the EMEs gets lower, they choose to sell out of EMEs sovereign bonds and buy the U.S. 10-year treasury. When the U.S. 10-year yield goes down (due to a price increase), while keeping the EM sovereign bond yield constant, then the distance between the U.S. 10-year Treasury yield and the EM bond yield gets wider. The opposite is true. Figure 3.5. shows the relationship between U.S. 10-year Treasury yield and J.P.Morgan’s EMBI. Figure 3.5. U.S. Treasury Yield vs. Emerging Markets Sovereign Bonds Spreads 7.0 1,100 6.5 1,000 6.0 900 US Treasury Yield (LHS) Market Spreads (RHS) Source: International Institute of Finance (IIF), Bloomberg, and JPMorgan 25 Feb-11 Mar-10 Aug-10 Apr-09 Sep-09 Oct-08 Nov-07 Jan-06 May-08 US $ 100 Jun-07 2.0 Jun-06 200 Dec-06 2.5 Jul-05 300 Feb-05 3.0 Mar-04 400 Aug-04 3.5 Sep-03 500 Oct-02 4.0 Apr-03 600 May-02 4.5 Jun-01 700 Nov-01 5.0 Jul-00 800 Dec-00 5.5 Jan-00 Basis Points Correlation = 0.25 26 3.3. The Data Set Monthly data covering 2000:1 through 2008:11 were used. Given that not all EMEs subscribe to the IMF’s special data dissemination standard (SDDS) that calls for a specific macroeconomic indicators data releases, frequencies, and format, different data sources were used (i.e., the IMF, Datastream, Bloomberg, major rating agencies, and the International Institute of Finance (IIF), along with the World Bank, and the U.S. State Department). Quarterly data were interpolated into monthly data by using Cubic Spline Interpolation method8. Twelve EMEs were included in this study (Argentina, Brazil, Colombia, Russia, Peru, Venezuela, Indonesia, South Africa, South Korea, Philippines, Panama, and Mexico). Table 3.1. lists the all of the explanatory variable along with their description, and data sources. Country inclusion criteria used were based on various characteristics. First, the country must be a member in the EMBI with a weight greater than five percent to insure liquidity of the bonds and a narrow bid-ask spread. Second, the country must be an active dollar-denominated sovereign bond issuer with an issue size of $250 million or larger. Third, the country must have a frequent and reliable data releases and availability. Fourth, Countries that recognize the IMF SDDS are preferred. Finally, the country sovereign bond issuance must be an “investable” instrument (e.g., high liquidity with appealing transaction cost (low bid-ask spread), registration of their bonds, and a maximum transaction settlement of three days). 8 Newey-West standard errors have been used, as they are robust to the autocorrelation introduced by cubic splines. 26 27 3.3.1.Dependant Variable J.P.Morgan EMEs five year Credit Default Swaps (CDS) is the dependent variable. It was chosen because it’s themes sovereign bond industry standard that’s used to measure the riskiness of sovereign bonds and offers real time intraday data releases. In a nutshell, CDS buyers shift the risk of sovereign bond default to the CDS sellers by paying CDS premium. CDS is treated and used as a real time sovereign bond risk parameter. As the perception of a default risk goes down, because of improved fundamentals or market perception of risk, CDS premium goes down. 3.3.2. Explanatory Variables: Real GDP growth (GDPG), change in terms of trade (CToT), and Citi Global Risk Aversion Index as a proxy for investors’ risk aversion (RA)9 are the macro explanatory variables. All of the variables have monthly data except for the GDPG, but it was interpolated into monthly readings. GDPG measures total economic activity within the borders of a country. Higher GDP growth, while other measures stay constant, helps in lowering many important ratios like Debt-to-GDP, External Financial Requirements, etc., which will convince rating agencies to upgrade a country and eventually lower its bond’s spreads—Arora and Cerisola (2001). Expected relation with spreads: Higher real GDP growth leads to tighter spreads—negative relationship (Figure 3.1). CToT compares Measures risk aversion in global financial markets. It’s an equally weighted index of U.S. credit spreads, U.S. swap spreads, and implied foreign exchange, equity and swap rate volatility. It’s expressed in a rolling historical percentile and ranges between 0 (low risk aversion) and 1 (high risk aversion). 9 27 28 countries’ exports to their imports in terms of value change year over year. Hilscher and Nosbusch (2007) found that when country’s exports are gaining value faster than its imports, while keeping volumes constant, that will translate into an improved balance of payment, higher government revenues, a lower financing need, a higher GDPG, a higher foreign exchange reserves, a stronger ability to service and payback debt, and eventually get a credit rating upgrade.That said, the credit matrix would look much better, which will improve countries’ ability to not only service debt, but also pay it back like what Russia did after oil prices reached triple digits in 2008. Expected relation with spreads: Improved ToT leads to tighter spreads as countries’ default probabilities tend to decrease due to trade balance surpluses —negative relationship (Figure 3.2). RA measures investors’ appetite for taking risk by buying EMEs sovereign bonds. Expected relation with spreads: As RA gets closer to a reading of 1, sovereign spreads are expected to decline (Figure 3.3)—a negative relationship according to Remolona, Scatigna, and Wu (2007). 28 29 Bloomberg U.S. 10-year Treasury Bond Yield measured in percentage points Note: A detailed description of the variables is provided late in this research Standards and Poors (S&P) and Bloomberg Monthly Change in Commodity Prices S&P Enhanced Commodity Official Close Index High-frequency Variables (HFV) Citi Group and Bloomberg International Institute of Finance (IIF) Change in terms of trade (CToT) Citi Global Risk Aversion Macro Index (RA) Bloomberg and DataStream JPMorgan and Bloomberg Data Source Real GDP growth (GDPG) Explanatory JPMorgan EMEs 5-year Credit Default Swaps (CDS) measured in basis points (bp) Dependent Variable Table 3.1. Variables Sources and Definitions US 10-year Treasury coupon divided by market price equals to US 10-year Treasury yield. As the market price goes higher (lower) the yield goes lower (higher) This index contains soft and hard commodities (i.e., agricultural, industrial metals, precious metals, gas, and oil). Majority of the countries in this study is net exporters of one or more type of commodity that’s covered by this index. It’s an equally weighted index of emerging market sovereign spreads, U.S. credit spreads, U.S. swap spreads, and implied FX, equity and swap rate volatility. It’s expressed in a rolling historical percentile and ranges between 0 (low risk aversion) and 1 (high risk aversion). The change in the value of country's exports vs. the change in its imports. Positive readings imply that the country's exports are gaining more value once compared to its imports, which push its trade balance more to the positive and result in current account surplus. Countries real GDP growth as it was reported to the IMF and the World Bank is nominal deflated by each country's local CPI figures. A highly reactive measure that market participants use and rely on to measure investors’ general assessment of sovereign bond default risk. Definition 29 30 Chapter 4 ESTIMATION AND RESULTS 4.1. Estimation of Results 4.1.1. Macroeconomic Variables Based on the Augmented Dickey-Fuller (ADF) test for macro variables, Table 4.1., the null hypothesis of a unit root in log spread, log GDPG, and log CTOT cannot be rejected. Cointegration Tests: Two tests were used to check if the model variables (log spreads, log GDPG, log CTOT and log RA) are cointegrated. The trace test and the maximum Eigenvalue test were used. As shown in Table 4.2, Trace and Eigenvalue tests both reject Ho of no conintegration in nine out of twelve countries. In general the tests provided evidence of cointegration between the variables. Mexico, Panama, and Venezuela showed no cointegration, and they will be eliminated from the country sample (i.e., the research will focus on the remaining nine countries). 4.1.2. High-frequency Variables To test whether the HFVs are stationary in order to use them as control variables in the ECM, the log differences in commodities and log levels in U.S. Treasuries 10-year yields were calculated. The ADF test rejects Ho of a unit root—Table 4.3. 30 31 Table 4.1: Standard unit root tests, null hypothesis is unit root Log Spread ADF test Log GDPG ADF test Log CToT ADF test t-stat. P-value t-stat. P-value t-stat. P-value Argentina 0.91 0.37 0.79 0.43 0.33 0.74 Brazil 0.58 0.56 0.91 0.37 0.56 0.58 Colombia 0.31 0.75 0.25 0.80 0.16 0.87 Indonesia 0.82 0.42 0.51 0.61 0.51 0.61 Malaysia 6.0E-03 0.98 0.11 0.91 0.85 0.40 Mexico 0.86 0.39 0.41 0.68 0.29 0.77 Philippines 0.5 0.62 0.81 0.42 0.72 0.47 Russia 0.97 0.33 0.56 0.58 0.51 0.61 South Africa 0.92 0.36 0.94 0.35 0.51 0.61 Peru 0.67 0.50 0.46 0.65 0.03 0.98 South Korea 1.1 0.27 0.29 0.77 0.73 0.47 Panama 0.87 0.39 0.82 0.41 0.86 0.39 Venezuela 0.89 0.38 0.77 0.44 0.81 0.42 Table 4.2: EM sovereign bonds cointegration testsa Test: Trace test Max. Eigenvalue Test Ho: No cointegration No cointegration H1: One cointegration One cointegration Statistic: Argentina Brazil Colombia Indonesia Mexico Philippines Russia South Africa Peru South Korea Panama Venezuela Trace test p-value ME Stat. pvalue 0.0811 0.3781 0.1103 0.5361 0.0389 0.5163 0.0501 0.1431 0.1532 0.2231 0.0039 0.0041 0.1212 0.3171 0.2624 0.2871 0.2761 0.3464 0.2711 0.0552 0.5521 0.2132 0.0157 0.0261 a based on cointegration with four series: log spread, log GDP, log CTOT and log RAI Null hypothesis rejected at 5% 31 32 Table 4.3: Standard unit root tests for High-frequency variables, null hypothesis is unit root ADF testa Log 1st diff. level t-Stat Commodity Index 0.02 *** Log level 10y UST(log) 0.19 * a Augmented Dickey-Fuller test level, test equation with intercept, maximum lag. Unit root is rejected at 1%, 5%, and 10%, indicated by ***,**,* respectively 4.2. Empirical Results 4.2.1. Estimating Coefficients To perform the model estimations, first, and according to the theoretical model presented earlier, five potential variables were defined--log spread, log GDPG, log CTOT and log RAI and two HFVs that include a commodity price index and 10y U.S. Treasury yield. Second, multiple specifications for the cointegrating vector for each country removing one variable at a time and with and without the proposed fast fundamentals were estimated. Third, the best specification model was selected10. This is the model that provides the highest predictive performance based modifications to the general model. The criteria for selection are positive hit ratios. Estimated error correction term coefficients are presented in Table 4.4. Coefficients of real GDP growth, except for Russia, and RA have the right predicted sign, while CToT has a mixed sign depending whether the country is a heavy commodity 10 Granger causality test results confirm the order of explanatory variables. 32 33 producer or not. For commodity producers, the sign of CToT was as predicted for six out of nine countries. Table 4.4. Estimated error correction term log GDPG log CToT Coeff. Coeff. log RA Coeff. Argentina -4.51*** (0.15) (0.05) (0.14) Brazil -5.00E-04 -3.45*** 0.91*** 0.05 (0.10) (0.16) Colombia Indonesia Philippines Russia South Africa Peru 2.51 -4.78*** 1.43* 2.59*** (0.09) (0.19) (0.13) -6.75E-04 -1.88*** 1.46*** 0.04 (0.17) (0.23) -1.03** -2.79*** 0.73*** (0.12) (0.11) (0.10) 7.80E-4*** -2.89*** 2.29*** (0.10) (0.27) (0.29) -1.53** 0.91** 2.22*** (0.21) (0.26) (0.22) - 3.71E-4** -3.99*** 0.41*** (0.27) South Korea 1.71*** (0.09) -1.29** -0.77* (0.18) (0.30) (0.13) 2.13** (0.27) The time it takes deviations from equilibrium to correct, coefficient b in equation 8 are obtained from ECM specification. Seven out of nine countries end up having the right sign in predicting the direction of correction when they are deviated from the equilibrium (i.e., tighter spreads than the equilibrium should widen and vice versa). Argentina and Peru are the two countries with the wrong sign, but they are not statistically significant. The average time for correcting the spread deviation, aside from Argentina and Peru, is twelve months with the largest in Russia (29 months) and the shortest in the Philippines (only 4 months). 33 34 4.3. Aggregated Results The results as described below for Market vs. Model were aggregated, based on their weight in the EMBI. EM model results shown in Table 4.5. suggest that in aggregate, dollar-denominated sovereign bonds spreads, measured by CDS spreads, overshot the model by 288, which implies that the market is currently undervalued. This is in contrast to the beginning of the credit crisis in late 2007 and early 2008, as risk aversion and de-leveraging dominated almost all credit markets except EM, which at that time, was thought to have decoupled. Table 4.5. EM bond index spread over the last 12 months – market and estimated Market Estimated Difference spread spread Nov., 2008 912 624 288 Oct., 2008 849 431 418 Sept., 2008 596 287 309 Aug., 2008 298 261 37 Jul., 2008 329 251 78 Jun., 2008 318 295 23 May, 2008 253 241 12 Apr., 2008 293 397 -104 Mar., 2008 351 517 -166 Feb., 2008 321 493 -172 Jan., 2008 221 453 -232 Dec., 2007 246 394 -148 Nov., 2007 238 302 -64 As of November 2008 month-end. Weighted average using weights in the EMBI index, scaled up to 100%. 4.3.1. Country Results Market vs. Estimated Spreads are listed in Table 4.6. and Figure 4.5. below. The 34 35 estimated results suggest that the market (or actual) aggregate dollar-denominated sovereign bond spread is 191 bp wider (or cheaper) than the estimated. Moreover, and based on actual spreads, the results show that bonds are overvalued in Colombia, Russia and South Korea while undervalued in the rest of the sample. Table 4.6. EM Bonds--Actual vs. Estimated spread and the Deviation Argentina Brazil Colombia Indonesia Peru Philippines Russia South Africa South Korea Weighted average Market spread Estimated Spread Deviation 1821 434 576 1059 592 668 663 852 195 979 299 729 569 391 417 710 623 231 842 135 -153 490 201 251 -47 229 -36 737 546 191 4.3.2. Model Coefficients Table 4.7. shows the sensitivity of spreads to each of the variables that are included in the model. Results are discussed in details in the following section. 35 36 A contraction of GDPG level by 100 bp results in spreads widening, on average, by 29 bp--Argentina and South Korea being the most sensitive. The large jump in spreads in the last month by several hundred bp is not due solely to expectations of a slowdown in growth. The onset of the financial crisis marked by the meltdown of the CDS market along with heightened level of risk aversion and liquidity and solvency issues in the light of a possible counterparty risk may have all contributed to higher spreads. In general, one would expect a negative relationship between CToT and sovereign bonds spreads for EMEs because that implies a country’s exports are getting pricier compared to its imports, which should lead to tighter spreads. The results show that a one 36 37 percent increase in Peru’s CToT results in a 45 bp sovereign bond spread tightening and a six bp widening in South Africa’s sovereign bonds spreads. Table 4.7: A change in the variable leads to a X-amount of bp change in spreads Commodity Index US 10-year GDPG CToT* RA Change 1% 1% 1st. Dev. 10% 10bp Argentina -79 61 779 -13 -3 Brazil -10 -9 114 -74 -4 Colombia -23 9 389 -23 -2 Indonesia -9 -17 351 -251 -7 Philippines -13 -10 107 -18 -14 Russia -17 -21 1281 -145 -8 South Africa -13 6 451 -24 -4 Peru -28 -45 77 -103 -8 South Korea -37 -36 343 -54 21 Average -26 -7 432 -78 -3 Overall, an improvement in ToT leads to a spread tightening in six out of nine countries. This confirms the predicted relationship between CToT and sovereign bonds spreads. However, the magnitude of this relationship varies depending on the openness of the economy and the exports volume. Risk aversion received special attention during the recent financial crisis--the period between the second half of 2007 and December of 2008. In fact, risk aversion reached new levels and was caused by reasons that were not factored in before like counterparty risk. Naturally, RA is higher for high beta countries (countries with high 37 38 debt to GDP, negative CToT, default history, etc.). Risk Aversion impact is higher for countries like Argentina and Russia, with the widest spreads. Therefore, it’s fair to find that the previous three countries would be the ones experiencing negative cash flows. In general, as the dedicated EMEs money managers’ RA increases, sovereign bonds spreads widen indiscriminately—granted there will be some differentiation amongst EM countries depending on their macroeconomic indicators (e.g., amount of their foreign exchange reserve coverage of imports, total debt service, etc.) also their GDPG, CTOT, etc. In other words, EM debt will be impacted as an asset class. A one standard deviation move away from the mean of RA leads to an aggregate spread widening of 432 bp. The last 10 years is a period that’s easily can be characterized by two modes of interaction between EM sovereign bonds spreads and U.S. Treasury yields (the risk free yield). One took place after the real estate bubble bursting in and around late 2007 and early 2008 along with the liquidity crunch and CDS meltdown, dedicated EM investors abandoned EM sovereign bonds in favor of U.S. treasuries in a trade that was marked by a flight to quality. Investors wanted a safe haven for their money in an economy and a political system that is known to be the most trustworthy in the world. The other one, three years prior to onset of the financial crisis, was marked by lower U.S. Treasury yields, and that sent money managers in search for a higher yield. EM sovereign bond spreads tightened significantly in a trade that was known as a carry trade—a trade where the international portfolio managers invest in risky assets as appose to a riskless asset because the risky asset offers a more attractive risk-adjusted yield. The coefficients of this model blend the two but more effectively than a simple two factor model because 38 39 Risk Aversion is included. A 10 bp contraction (or tightening) in U.S. 10 year Treasury bond yield leads to a three bp widening in CDS. As expected, an increase in commodity prices was associated with tighter sovereign bond spreads for all countries. A ten percent increase in prices would be associated with a 78 bp spread tightening of the overall market. Commodity exporters benefit from higher commodity prices, as their balance of trade will experience higher surpluses, higher levels of foreign exchange reserves, lower external financing requirement, and stronger ability to payback debt which would all result in a higher credit rating and narrower spreads. 4.4. Testing of the Model The whole aim of this model is to develop a tool for emerging markets dollardenominated sovereign bond investors that generates a market signal that result in profitable trading. In this thesis, model success factor is defined as the number of times the model generates a profitable trading signals. In this section, the model is put to test by evaluating its performance in the past by calculating in-sample and out-of-sample hit ratios (Table 4.8.). 4.4.1. In Sample Testing The model estimates coefficients using all the data available to the present. These coefficients are used to calculate past equilibrium spreads then compared the actual spreads vs. modeled forecasted spreads. If the model predicted that the relative 39 40 spread would tighten and it actually did within a one month period that this would be considered as a hit. Table 4.8. EM bond index spread forecast evaluation--hit rate In Sample Out of Sample Country 2000 2003 2004 2005 Argentina 65% 63% 54% 57% Brazil 59% 66% 56% 52% Colombia 66% 63% 65% 66% Indonesia 53% 46% 53% 56% Philippines 72% 73% 72% 77% Russia 47% 49% 55% 51% South Africa 66% 81% 88% 82% Peru 61% 45% 52% 54% South Korea 68% 66% 61% 50% Average 61.89% 61.33% 61.78% 60.56% The model coefficients were estimated using data from 2000 to present, and used to calculate past spreads. The direction of the spreads vs. the forecast are compared—a hit is considered if the model predicted spread tightening and market spreads actually tighten within one month. The best specification model produced an average hit ratio of 61.89 percent, which means that the model was able to predict the right direction of spreads movement, for deviations that are larger than one standard deviation, of the posterior movement in spreads by close to 61 percent of the time. 4.4.2. Out-of-sample Testing The real direction of spreads is compared to the forecasted one. The model coefficients were estimated using the same data that were available a month prior to the 40 41 one in which the spread ratio forecast was constructed. In order to have a reasonable sample size to produce estimations, projections were started from January 2003 in order to have four years of data (except for Argentina, Indonesia and South Korea) when the model was first estimated. Figure 4.2. Market vs. Estimated Spreads for In Sample Testing Market vs. Estimated Spreads Market vs. Estimated Spreads Standard Deviation of Error 4 800 Standard Deviation Basis Points 3 600 400 200 2 1 0 -1 -2 0 Market Spread Jul-08 Jul-08 Jan-08 Jul-07 Jan-07 Jul-06 Jan-06 Jul-05 -4 Jan-05 Jan-08 Jul-07 Jan-07 Jul-06 Jan-06 Jul-05 Jan-05 -3 Estimated Spread Weighted average using weights in the EMBI index scaled to 100 percent That means towards the end, the time series contained 9.5 years of data. The best specification model produces an average hit ratio of 61.78 percent—2004 estimation. However, the results for 2004 and 2005 have to be taken with caution due to the small frequency of spread errors above one standard deviation. 4.4.3. Looking for Strong Signals Only signals that are greater than one standard deviation were considered to trigger a buy or a sell decision. Thus, anytime when spread errors are greater than one standard deviation are observed, a buy or sell action will be triggered. 41 42 Figure 4.3. Market vs. Estimated Spreads for Out-of-Sample Testing Market vs. Estimated Spreads Market vs. Estimated Spreads Standard Deviation of Error 4 800 Standard Deviation 400 200 2 1 0 -1 -2 0 Market Spread Jul-08 Estimated Spread 42 Jul-08 Jan-08 Jul-07 Jan-07 Jul-06 Jan-06 Jul-05 -4 Jan-05 Jan-08 Jul-07 Jan-07 Jul-06 Jan-06 Jul-05 -3 Jan-05 Basis Points 3 600 43 Chapter 5 CONCLUSION 5.1.Summary of Findings Academic literature shows three main frameworks to estimate sovereign debt valuations in emerging markets—time series analysis, cross section econometric techniques that use HFVs, and conintegration technique which turned out to be a good compromise between data availability, frequency, and the robustness of the results. A combination of macroeconomic fundamentals (real GDP growth and change in terms of trade), Risk Aversion Indicator, and HFVs (commodity prices and U.S. 10-year yield) were used to estimate cointegration models across twelve countries. As predicted, the relationship between spreads and GDPG was found to be negative. CTOT tends to have a different impact across countries. Overall, an improved terms of trade leads to a spread tightening in six out of nine countries in this study. While in all countries an increase in risk aversion has impacted spreads, this phenomenon is even more profound in countries with higher spread volatility such as Argentina and Russia. U.S. Treasury yields impact on spreads changed over time. More recently lower U.S. treasuries yields have driven spreads wider. Commodity prices are associated with a reduction in EMEs debt spreads, as majority of the countries in this study are heavy commodity exporters. When tested, in-sample testing (started 2000) the best specification resulted in a hit ratio close to 62 percent, and that implied the accuracy of the model in predicting spread moves for spread deviations above one standard deviation from the 43 44 mean. When out-of-sample testing was conducted starting 2003, 2004, and 2005, hit ratio didn’t significantly improve. Fundamental drivers (or macroeconomic indicators) are not excellent short-term predictors of sovereign bonds spreads, as spreads may react to market dynamics due to factors like supply, yield differential, coupon rate, liquidity, trade momentum, and timing factor (event risk such as elections, natural disasters, etc.). For example, South Africa’s dollar denominated sovereign bonds spreads have increased (or widened compared to similar maturity U.S. Treasury bills) in reaction to local quasi-government U.S. dollar quasi-government debt issuers, ESKOM and TRANSNET Figure 5.1. Those two entities issued a higher coupon bonds compared to the sovereign coupons for similar debt maturity—over 110 bp wider than South Africa’s sovereign, which appealed to many emerging market investors and led many to sell out of the sovereign and buy the government-guaranteed local bond. The Figure below shows South Africa’s 5.5 percent maturing in March 2020 spread reaction—a widening from 105 bp over the U.S. 10-year Treasury to over 150 bp just after the issuance of the quasi-sovereign debt. The conintegration model in this study would be useful for tactical or a strategic sovereign bond portfolio management, as it will offer better than 60 percent accurate signals of the spreads directions. However, those signals couldn’t be produced on a daily or intraday basis due to low frequency of data. 5.2.Suggestions for Future Research Future research might get a better hit ratio if it utilizes more HFVs with daily values, less macroeconomic variables with low release frequency, and by incorporating 44 45 dummy variables that could factor in issues that are related to liquidity, the coupon rate, type of bond holders, and the shape of the yield curve. Macroeconomic fundamentals have excellent predictive power but not in the short-term, where bond traders might totally ignore fundamentals and trade based on short-term technical variables. Figure 5.1. South Africa’s Sovereign vs. Corporate Bonds Spread Movement Spread went from 105 bp in January 5th , 2011 to 155 bp on 1/31 after ESKOM and TRANSNET (both government guaranteed debt) issuance. 45 46 REFERENCES Arora V., and Cerisola, M. (2001). How Does U.S. Monetary Policy Influence Sovereign Spreads in Emerging Markets? IMF-Staff-Papers 48(3): 474-98. Cantor, R., and Packer, F. (1996). Determinants and Impacts of Sovereign Credit Ratings. The Journal of Fixed Income, vol. 6 no. 3, pp. 76 – 91. Reinhart C., and Rogoff K., (2008). This Time is Different: A Panoramic View of Eight Centuries of Financial Crises. NBER Working Paper, No. 13882. (Cambridge, MA: National Bureau of Economic Research). Eichengreen, B., and Mody, A. (2000b). 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