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Steinar Holden Lecture 1 Monetary policy and business fluctuations Course content knowledge and understanding of recent research in monetary policy and business fluctuations: The course focuses on the following Business cycles - theory and evidence. Why and how does the activity level of the economy vary over time, what can the policymakers do to stabilise the cycles? real business cycle theory and New-Keynesian theory Inflation and monetary policy. Nominal rigidities and New-Keynesian models Targeting regimes and instrument rules in monetary policy Inflation targeting in open economies 1 Learning outcomes The course aims at making the students able to understand and give an account of the main theories, including the assumptions, the mechanisms and analyses, and the conclusions evaluate the theories in light of empirical findings make use of the theories in work on practical economic problems 2 Business cycle regularities The business cycle is the periodic but irregular upand-down movements in economic activity, measured by fluctuations in real GDP and other macroeconomic variables. Definition Lucas (1977): Understanding business cycles: Deviations of aggregate real output from trend Business cycle regularities: Statistical properties of the comovements of deviations from trend of various economic aggregates with those of real output 3 A brief and selective history William Jevons’ 1866) sunspot theories: Sunspot cycle => weather cycle => harvest cycle => price cycle Overinvestment cycles Clement Juglar (1856, 1859) Credit cycle. Recurrence of crisis in monetary data. Cycles were of variable length and amplitude 4 Monetary theory Hawtrey's Pure Money Cycles (1913, 1926) Increase in money stock lowers the interest rate, leading wholesalers and middlemen to borrow from banks and increase their demand from firms, so as to increase inventories. Increasing production takes time, also consumers increase their demand due to lower interest rates, reducing wholesalers’ inventories so they increase their demand further, by borrowing more money. Increased money stock amplifies cycle Eventually banks will close off credit 5 Expectational cycles Irving Fisher's (1907) cycle theory leads and lags of adjustment cause cycles influenced by psychological factors. expansions emerge because expected profits on investment exceed the rate of interest. induced by technological improvements which then lead to expectations of profit. Fisher (1911) Cycles due to expansions in money leading to sustained rises in aggregate demand slow-adjusting interest rates (due to adjustment costs and uncertainty) permits demand to be continued. 6 Shock-dependent theories: Frisch (1933). “Propagation problems and impulse..” Impulses in the form of random shocks Propagation mechanisms “when you hit a wooden rocking horse with a club, the movement of the horse will be very different from the movement of the club” Slutsky (1937) “The summation of random causes as the source of cyclical processes.” Shows that random shocks may lead to cycles if there is persistence in the process et random variable, either 0.5 or -0.5 (equal prob.) yt+1 = 0.95 yt + et+1 Leads to yt+1 = et+1 + 0.95 et-1 + 0.952et-2 + 0.953 et-3 + … + 0.95ty0 (see illustration in Kydland & Prescott, 1990, chart 1) 7 Burns & Mitchell (1946). Business cycles consist of sequences of expansions and contractions Measuring business cycles Criticized by Koopmans as “Measurement without theory” No systematic discussion of the theoretical reasons for which variables to study No explicit assumption about the probability distribution of the variables Intellectual debate between Cowles commission (structural macroeconometrics) and NBER (applied econometrics), both also applying for financing 8 Spurious cycles: Detrending method can lead one to find cycles that do not exist in the data. Yule (1927) and Slutsky (1937) Different detrending methods may give rise to different cyclical patterns. By smoothing a series using a summation procedure (e.g. moving average), in addition to removing the trend by differentiating, one may generate oscillatory movement when no oscillations exist in the original data in the original data (e.g. if data are caused by a random walk series, cf. below) Could be explanation of findings of Kontradieff’s 50year cycles, or Kuznet’s 20 year cycles 9 Real GDP Mainland-Norway, quarterly data 10 Trend constructed as a 36 quarter moving average 11 Business fluctuations and unemployment 12 Persistent or transitory fluctuations? Traditional view: The economy is growing along a fairly smooth path (trend) Transitory shocks lead to cyclical fluctuations Different sources of shocks: The trend is caused by deterministic improvement of productivity Transitory shocks are due to demand, usually monetary factors Cyclical fluctuations can be found by first detrending the data series 13 Illustration – transitory deviations Autoregressive process yt around a time trend yt t zt , where zt zt 1 t (1) εt is white noise, t is deterministic trend Solving out for yt, we obtain yt t t a t 1 a t 2 a t 3 ... t s0 s t s 2 3 when |α| < 1, (1) is trend stationary. The effect of a shock will die out, and the process will return to the deterministic trend An innovation will not affect long-run forecasts 14 Persistent fluctuations Alternatively, assume that yt is a random walk, i.e. a non-stationary series yt yt 1 t (3) εt is white noise, Solving out for yt-1 , we obtain yt t t 1 t 2 t 3 .... s o t s (y0 set to zero) Any shock εt-s, will have a permanent effect on yt, i.e. their effect will never die out. Fluctuations are not stationary deviations around trend – the “trend” consists of permanent shocks We say that (3) has a unit root, or is integrated of degree one, I(1) 15 Random walk (non-stationarity) and deterministic trend can be combined yt yt 1 t which solves for yt t s o t s Makes it more difficult to distinguish between stationary and non-stationary series. 16 Many economic variables, like output, consumption, price levels are non-stationary Empirical investigation of non-stationary data is problematic because one may find spurious relationships, i.e. find a relationship that is significant by use of conventional statistical measures even if no relationship exists at all. As illustrated by Hendry, Economica, 1980, who find statistical significant relationship between two nonstationary time series, namely the price level in the UK and the cumulated rain fall in the UK, even if there obviously is no relationship in reality. To avoid finding such spurious relationships, one often first difference the series to obtain a stationary series, cf. below 17 To obtain a stationary series of yt yt 1 t , we may first difference, i.e. yt yt yt 1 yt 1 t yt 1 t Δ yt-1 is stationary, or integrated of order zero I(0) 18 Common to test whether series are non-stationary I(1) or stationary I(0) before analyzing business cycles Can be done by Dickey-Fuller test Autoregressive process of order one AR(1) yt ayt 1 t can be re-written as yt yt 1 t , where 1 Test for whether μ=1, i.e. whether α = 1 Non-standard distribution of t-values. Appropriate critical values by Fuller (1976). 19 Real business cycle theory – the background Macroeconometric models dominated macroeconomic from WWII to mid 1970s (“behavioral-empirical approach in Keynesian system of equations”) Lucas (1977): Understanding business cycles Deviations of aggregate real output from trend Comovements of deviations of different times series Weaknesses of Keynesian theories - disconnect macro and micro theory (micro based on optimization behavior) - empirical failures - Lucas (1976) critique that behavioral relationships that depend on expectations of policy will break down, if policy is changed 20 - better to construct models based on optimizing behavior, which should then be robust to changes in policy and other variables Proceed on the basis of the neoclassical growth model, with stochastic productivity Kydland & Prescott (1982) Time to build and aggregate fluctuations Adds random productivity shocks to neoclassical growth model, assuming that it takes more than one period to construct productive capital 21 Stylized facts of aggregate activity To obtain data for deviations from trend, one first needs to find the trend. Common to construct trend by use of HodrickPrescott (HP) filter, constructed as follows min Σ { (yt – ygt)2 + λ [ (ygt+1 - ygt) - (ygt - ygt-1)]2 } wrt ygt+1, ygt … i.e. minimize both deviations from trend, and change in trend growth. Smoothing parameter λ = 1600 common for quarterly data λ= ∞ corresponds to linear trend, λ = 0 gives original series Note that HP-filter will generate cycles, even in cases where there is none (i.e. if non-stationary variable like a random walk: yt = yt-1 + et) 22 Stylized facts of aggregate activity Which data to choose? Look at data that is Consumer durables purchases are more volatile than output Investment is three times more volatile than output Government expenditure are less volatile than output Total hours worked has about the same volatility as output Capital is much less volatile than output, but capital utilization in manufacturing is more volatile than output Employment is as volatile as output, while hours per worker are much less volatile than output, so 23 that most of the cyclical variation in total hours worked stems from changes in employment Labor productivity (output per man-hour) is less volatile than output The real wage is much less volatile than output Comovement: Most variables are pro-cyclical, i.e. show positive contemporaneous correlation with output Wages, government expenditure and the capital stock essentially acyclical All macroeconomic variables display substantial persistence (first order serial coefficient for detrended quarterly variables 0.6 to 0.9) 24