Survey
* Your assessment is very important for improving the work of artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the work of artificial intelligence, which forms the content of this project
• [Figure] [Figure] • [Figure] • [Figure] [Figure] • [Figure] • [Figure] • [Figure] • [Figure] Short Run Fluctuations Chapter 5 Neoclassical Dichotomy • Theory of macroeconomy where output is given by labor, capital, and TFP. • TFP is given by R & D (and possibly allocative efficiency) • Capital investment is given by real interest rates which is given by savings which is in turn given by demographic factors and the dynamics of future income. • Labor is given by labor-leisure trade-off, real labor productivity and turnover in job market. • No relationship between output between money, prices or inflation. Long run output, Y π Y Y Business Cycles 600,000 500,000 400,000 300,000 200,000 100,000 0 1975 1980 1985 HK GDP In chained (2009) dollars 1990 Link 1995 2000 2005 2010 2015 Pattern of production. • GDP is growing over time. • GDP growth is not smooth. Sometimes GDP is above and sometimes below the long term growth path. • GDP has seasonal pattern with production consistently concentrated in 4th quarter. Christmas given as an explanation. • These movements are so large they hide less predictable short-term movements in the economy. Solution: Seasonal adjustment. Smooth out the average changes associated with the season. 600,000 500,000 400,000 300,000 200,000 100,000 0 1975 1980 1985 1990 GDP 1995 2000 GDP_SA 2005 2010 2015 GDP_SA 600,000 500,000 400,000 300,000 200,000 100,000 0 1975 1980 1985 1990 1995 2000 2005 2010 2015 Output Gap • Study of long-term growth focuses on explaining the secular upward movement in GDP. • Business cycles examine fluctuations around that trend. Object of interest is the output gap, the % deviation of GDP from its long-term trend path. Yt GAPt ln TRENDt Measuring Trend • Simplest way to measure trend is to assume that it grows at a constant rate over time. Ln(TRENDt) = α0 + α1∙t → ΔLn(TRENDt)= Ln(TRENDt)- Ln(TRENDt-1) = α1 • In theory, corresponds with BGP of neoclassical growth model where α1 is the growth rate of technology. Estimating Trend • Construct Data • LHS: The natural log of GDP • RHS: Index of Time • Source: FRED Database • Note: USA Annual Data used here for convenience. Can easily be applied to quarterly data. 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 GDP 4319.6 4311.2 4540.9 4750.5 5015 5173.4 5161.7 5291.7 5189.3 5423.8 5813.6 6053.7 6263.6 6475.1 6742.7 6981.4 7112.5 7100.5 7336.6 7532.7 7835.5 8031.7 8328.9 8703.5 9066.9 9470.3 9817 9890.7 10048.8 10301 10703.5 11048.6 ln(GDP) t 8.370918 8.368972 8.420881 8.466005 8.520189 8.551285 8.549021 8.573895 8.554354 8.598552 8.667955 8.708425 8.74251 8.775719 8.816216 8.851005 8.869609 8.86792 8.900631 8.927009 8.96642 8.991151 9.027487 9.071481 9.112386 9.155916 9.191871 9.19935 9.215209 9.239996 9.278326 9.310059 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 Estimate Regression Model • Estimate Regression: ln(Yt) = α0 + α1∙t +εt • Regression coefficient is α1 =.03068 SUMMARY OUTPUT Regression Statistics Multiple R 0.997438 R Square 0.994883 Adjusted R Square 0.994713 Standard Error 0.020981 Observations 32 ANOVA df Regression Residual Total SS MS F Significance F 1 2.567735 2.567735 5833.186 6.25E-36 30 0.013206 0.00044 31 2.580941 Coefficients Standard Error t Stat P-value Lower 95%Upper 95%Lower 95.0% Upper 95.0% Intercept 6.952588 0.024981 278.3116 9.51E-53 6.90157 7.003607 6.90157 7.003607 X Variable 1 0.03068 0.000402 76.37529 6.25E-36 0.029859 0.0315 0.029859 0.0315 Output Gap • The output gap is the % deviation from trend ln(Yt)ln(TRENDt) which corresponds with εt. • Use the fitted residual as a measure of the output gap. 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 GDP 4319.6 4311.2 4540.9 4750.5 5015 5173.4 5161.7 5291.7 5189.3 5423.8 5813.6 6053.7 6263.6 6475.1 6742.7 6981.4 7112.5 7100.5 7336.6 7532.7 7835.5 8031.7 8328.9 8703.5 9066.9 9470.3 9817 9890.7 10048.8 10301 10703.5 11048.6 ln(GDP) t 8.370918 8.368972 8.420881 8.466005 8.520189 8.551285 8.549021 8.573895 8.554354 8.598552 8.667955 8.708425 8.74251 8.775719 8.816216 8.851005 8.869609 8.86792 8.900631 8.927009 8.96642 8.991151 9.027487 9.071481 9.112386 9.155916 9.191871 9.19935 9.215209 9.239996 9.278326 9.310059 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 ln(TREND) OutputGap 8.364 0.007 8.395 -0.026 8.425 -0.004 8.456 0.010 8.487 0.034 8.517 0.034 8.548 0.001 8.579 -0.005 8.609 -0.055 8.640 -0.041 8.671 -0.003 8.701 0.007 8.732 0.010 8.763 0.013 8.793 0.023 8.824 0.027 8.855 0.015 8.885 -0.017 8.916 -0.015 8.947 -0.020 8.977 -0.011 9.008 -0.017 9.039 -0.011 9.069 0.002 9.100 0.012 9.131 0.025 9.162 0.030 9.192 0.007 9.223 -0.008 9.254 -0.014 9.284 -0.006 9.315 -0.005 Deviations from Trend 9.4 9.2 9 8.8 8.6 8.4 8.2 4 76 78 80 82 84 86 88 90 92 94 96 98 00 02 04 7 19 19 19 19 19 19 19 19 19 19 19 19 19 20 20 20 ln(GDP) ln(TREND) US OutputGap 0.04 0.02 0 74 9 76 9 78 9 80 9 82 9 84 9 86 9 88 9 90 9 92 9 94 9 96 9 98 0 00 0 02 0 04 9 -0.02 1 1 1 1 1 1 1 1 1 1 1 1 1 2 2 2 -0.04 -0.06 Y Estimating Trend HK GDP • Construct Data • LHS: The natural log of GDP • RHS: Index of Time • Source: • Note: Annual Data used here for convenience. Can easily be applied to quarterly data. 1961 1962 1963 1964 1965 1966 1967 1968 1969 1970 1971 1972 1973 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 91180 104211 120639 131048 150237 152933 155385 160664 178889 195359 209607 231850 260321 266608 267920 311227 347721 376446 419951 462401 505223 520126 551214 606191 610780 678308 769191 834662 853668 886367 936907 995323 1057044 1120847 1147454 1196318 1257326 1183362 1213025 1305985 1313309 1335066 1375870 1495572 1606067 1719015 1830145 1869088 1823125 1946507 2040225 2074915 2138660 2192153 ln(Y) t 11.42059 11.55417 11.70056 11.78332 11.91997 11.93776 11.95366 11.98707 12.09452 12.18259 12.25299 12.35385 12.46967 12.49353 12.49844 12.64828 12.75916 12.83853 12.94789 13.04419 13.13276 13.16183 13.21988 13.31495 13.32249 13.42736 13.55309 13.63478 13.6573 13.69489 13.75034 13.81082 13.87099 13.9296 13.95306 13.99476 14.0445 13.98387 14.00863 14.08247 14.08806 14.10449 14.1346 14.21802 14.2893 14.35726 14.41991 14.44096 14.41606 14.48155 14.52857 14.54543 14.57569 14.60039 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 Estimate Regression Model • Estimate Regression: ln(Yt) = α0 + α1∙t +εt • Regression coefficient is α1 =.0255 Dependent Variable: LGDP Method: Least Squares Date: 11/05/15 Time: 11:27 Sample (adjusted): 1961 2014 Included observations: 54 after adjustments Variable C @TREND R-squared Adjusted R-squared S.E. of regression Sum squared resid Log likelihood F-statistic Prob(F-statistic) Coefficien... Std. Error t-Statistic Prob. 11.75217 0.059380 0.045368 0.001476 259.0433 40.23900 0.0000 0.0000 0.968884 0.968286 0.169012 1.485378 20.39681 1619.177 0.000000 Mean dependent var S.D. dependent var Akaike info criterion Schwarz criterion Hannan-Quinn criter. Durbin-Watson stat 13.32573 0.949052 -0.681363 -0.607697 -0.652953 0.068973 Y Output Gap • The output gap is the % deviation from trend ln(Yt)ln(TRENDt) which corresponds with εt. • Use the fitted residual as a measure of the output gap. ln(Y) t Trend Output Gap 1961 91180 11.42059 1 11.81155 -0.39096 1962 104211 11.55417 2 11.87093 -0.31676 1963 120639 11.70056 3 11.93031 -0.22975 1964 131048 11.78332 4 11.98969 -0.20637 1965 150237 11.91997 5 12.04907 -0.1291 1966 152933 11.93776 6 12.10845 -0.17069 1967 155385 11.95366 7 12.16783 -0.21417 1968 160664 11.98707 8 12.22721 -0.24014 1969 178889 12.09452 9 12.28659 -0.19207 1970 195359 12.18259 10 12.34597 -0.16338 1971 209607 12.25299 11 12.40535 -0.15236 1972 231850 12.35385 12 12.46473 -0.11088 1973 260321 12.46967 13 12.52411 -0.05444 1974 266608 12.49353 14 12.58349 -0.08996 1975 267920 12.49844 15 12.64287 -0.14443 1976 311227 12.64828 16 12.70225 -0.05397 1977 347721 12.75916 17 12.76163 -0.00247 1978 376446 12.83853 18 12.82101 0.01752 1979 419951 12.94789 19 12.88039 0.067503 1980 462401 13.04419 20 12.93977 0.104418 1981 505223 13.13276 21 12.99915 0.133605 1982 520126 13.16183 22 13.05853 0.103296 1983 551214 13.21988 23 13.11791 0.101968 1984 606191 13.31495 24 13.17729 0.13766 1985 610780 13.32249 25 13.23667 0.085822 1986 678308 13.42736 26 13.29605 0.131307 1987 769191 13.55309 27 13.35543 0.197665 1988 834662 13.63478 28 13.41481 0.219972 1989 853668 13.6573 29 13.47419 0.183108 1990 886367 13.69489 30 13.53357 0.161316 1991 936907 13.75034 31 13.59295 0.157389 1992 995323 13.81082 32 13.65233 0.158493 1993 1057044 13.87099 33 13.71171 0.159277 1994 1120847 13.9296 34 13.77109 0.158505 1995 1147454 13.95306 35 13.83047 0.122586 1996 1196318 13.99476 36 13.88985 0.104909 1997 1257326 14.0445 37 13.94923 0.095268 1998 1183362 13.98387 38 14.00861 -0.02474 1999 1213025 14.00863 39 14.06799 -0.05936 2000 1305985 14.08247 40 14.12737 -0.0449 2001 1313309 14.08806 41 14.18675 -0.09869 2002 1335066 14.10449 42 14.24613 -0.14164 2003 1375870 14.1346 43 14.30551 -0.17091 2004 1495572 14.21802 44 14.36489 -0.14687 2005 1606067 14.2893 45 14.42427 -0.13497 2006 1719015 14.35726 46 14.48365 -0.12639 2007 1830145 14.41991 47 14.54303 -0.12312 2008 1869088 14.44096 48 14.60241 -0.16145 2009 1823125 14.41606 49 14.66179 -0.24573 2010 1946507 14.48155 50 14.72117 -0.23962 2011 2040225 14.52857 51 14.78055 -0.25198 2012 2074915 14.54543 52 14.83993 -0.2945 2013 2138660 14.57569 53 14.89931 -0.32362 2014 2192153 14.60039 54 14.95869 -0.3583 Business Cycles? RESID01 .3 .2 .1 .0 -.1 -.2 -.3 -.4 65 70 75 80 85 90 95 00 05 10 15 Stochastic Trends • Trend line may change over time, if longrun technology also changes. • We want to distinguish between short-run deviations from trend from long-lasting changes in the trend path. • Allow for a smoothly changing trend, known as a Hodrick Prescott trend. Examine Data in Growth Rates HP Trend and ln(GDP) 600,000 500,000 400,000 300,000 200,000 100,000 0 1975 1980 1985 1990 GDP_SA 1995 2000 2005 HPTREND01 2010 2015 HP Filtered Output Gap GAP .08 .06 .04 .02 .00 -.02 -.04 -.06 -.08 -.10 1975 1980 1985 1990 1995 2000 2005 2010 2015 Final Exam • Wednesday, December 16th, 08:30AM 11:30AM. Lecture Theater L. • Non-cumulative. Consumption, Investment, Business Cycles: Keynesian, Rational Expectation, New Keynesian. Similar to midterm and practice exams. • Bring writing instruments and a calculator. • Semi-open book – Bring 1 A4 size paper with handwritten notes on both sides. • Office Hours: Standard. Equilibrium iIBR SBR i i* i DBR Reserves Expenditure Cycles in the Closed Economy • Planned Expenditure is C + I + G. • Investment is sensitive to the real interest rate. Consumer spending is sensitive to disposable income YD = Y – T. • Draw a planned expenditure curve that shows response of demand to GDP IS Curve • When the real interest rate rises, investment will fall. This, along with knock-on multiplier effects, will lead to a contraction in demand. • IS curve maps out the relationship between real interest rate and demand for goods (taking into account the multiplier effect) • Q: What shifts the IS curve? • A: Shifts in Fiscal Policy, optimism about future income, expectations about future MPK, wealth effects of asset prices. Planned Expenditure r MP r(π) IS Y Y* Monetary Policy Reaction Function • Central bank controls the money supply. • Central bankers set money supply in response to economic conditions. • When economy is booming or prices are rising to quickly, central banks raise real interest rates. r MP(Y , ) How does the central bank set real interest rates? • The central bank participates in the money market to control the real interest rate. • Central bank has control over the money supply M. If prices do not respond 1-for-1 with money (due to pricing stickiness), they can control the supply of real balances. • From Baumol-Tobin, the demand for real balances is determined by nominal interest rates and output. Nominal interest rates are a function of real interest rates and expected inflation. M P Y V (i ) Y V (r E ) Money Demand Curve r(π,Y) Y M M P * V (r E ) P Money Market Equilibrium • Equilibrium under fixed money supply: If real interest rate is higher than money market equilibrium, money supply will be higher than money demand. Households will not want to hold cash and will deposit it into banks. Banks with a surplus of liquidity will lower equilibrium rates. • Equilibrium under interest target: Under interest rate targets, if money supply is higher than money demand at the desired real interest rate, the central bank must sell some of its holdings of interest paying assets (typically government bonds). Increase in expected inflation r(π) Y M M P * P V (r E ) Increase in Inflation r(π,Y) Y M M P ** M P * V (r E ) P Increase in Output r(π,Y) Y V (r E ) M M P ** M P * P Planned Expenditure MP r r*(π) IS Y*(π) Y Inflation Rises MPʹ r MP r**(πʹ) r*(π) IS Y**(πʹ) Y*(π) Y Aggregate Demand Curve • Negative relationship between inflation and output generated by monetary policy response to inflation. Q: What causes AD curve to shift? Answer • Shifts in the IS curve • Shifts in Monetary Policy AD Curve π Y Aggregate Supply Curve • Keynesian model: Firms will increase output if the inflation rate is high. • Positive relationship between inflation level and output is called AS curve. • Fluctuations in output are caused by fluctuations in the AD curve which are in turn caused by fluctuations in the Equilibrium SRAS π π* AD Y Y* AD Curve Shifts SRAS π π** π* AD’ AD Y Y* Y** Monetary Policy and the Demand Curve Weak Stance π S π* Strong Stance Y Y Demand Curve/Supply Curve Weak Stance π π* S Strong Stance Y Supply Curve • The supply curve is based on the notion that wages are sticky. • So far, we have thought of real wages as being determined in a competitive market with a supply curve and a demand curve for labor. • In Keynesian theory, wages are set by contract. Workers choose a wage and firms hire as many workers as desired at that wage rate. Inflation and Labor Demand • Workers base wage demands on what they believe the price level will be. Workers are backward looking in their expectations Wt = w×PtE = w×Pt-1. • Firms choose a quantity of workers so Wt = Pt×MPLt=w×Pt-1. • In equilibrium, w w MPLt MPLt Pt 1 t Pt 1 Equilibrium Labor W P w 1 MPL L L* Inflation Rises, Real Wages Fall W P w 1 MPL L L* L** Inflation/Employment Tradeoff • Keynesian economists perceived that the government faced a choice between high inflation on the one hand and unemployment on the other. • If the government wanted to push up employment, they could (through expansionary monetary or fiscal policy) push out the demand curve if they were willing to bear the consequences in terms of inflation. Tradeoff Inflation & Unemployment USA 1948-1969 Source: St. Louis Fed Database 8 Unemployment Rate 7 6 5 4 3 2 1 0 -2 0 2 4 Inflation 6 8 Critics • Critics of this business cycle theory pointed out that the ability of the government to increase employment was based on the notion that workers would expect zero employment. • Phelps and Friedman suggested that it might be more realistic to imagine that workers would have some forecast of inflation πEt. Then they would demand wages that would maintain their standard of living in the face of this inflation. Wt = w×PtE = w×(1+ πEt ) ×Pt-1. Inflation and inflation expectations • Firms would hire workers up until that point where MPL = real wage. 1 tE w MPLt w MPLt Pt 1 t Pt 1 • Inflation reduces real wages and increases employment only to the extent that it stays ahead of workers expectations. • There is some level of employment (referred to as the natural level) and corresponding level of output (referred to as potential output) which prevails when output inflation equal expectation. IA Curve YP π SRAS πE AD Y Y* Supply Curve • A more realistic supply curve rule, might say that output is above potential output only when inflation is above expected inflation. • SRAS: πEt Expected Inflation • Expectations Augmented Philips curve πt = πEt + θ∙[yt – yP] • Adaptive Expectations πt = πt-1 + θ∙[yt – yP] Short-run Inflation/Output Tradeoff • But workers will demand wages that will support their real wages, which will require wage growth to keep up with expected inflation. • Friedman says workers will base inflation expectations on inflation that has been observed in the past. π =πt-1 Adaptive Expectations • Adaptive expectations generate some dynamics to inflation-output trade-off. • In the short-run, an expansion in money growth will lead to an increase in inflation and output. • But after a period, inflation expectations will increase, leading to more inflation. Eventually output will return to its long run level. – Only accelerating inflation can lead to long run output increases. – Once the government increases money supply growth, they cannot reduce inflation without incurring a recession. SRASt+∞ SRASt+2 SRASt+1 Y π πt+∞ SRASt πt+2 πt+1 πE ADt ADt’ μ↑ Y Breakdown in Inflation and Unemployment Relationship Unemployement Rate 12 10 8 6 4 2 0 0 2 4 Inflation 6 8 10 Final Exam Material including taxes, money demand, inflation, Keynesian model, rational expectations model • 14/12/2011 12:30-15:00 LTF • Semi-open book: 1 L4 paper w/ handwritten notes both sides, calculator, writing materials.