Inflation and inflation uncertainty in Argentina,

Similar documents
University of Macedonia Department of Economics. Discussion Paper Series. Inflation, inflation uncertainty and growth: are they related?

The Relationship between Inflation and Inflation Uncertainty: Evidence from the Turkish Economy

The Relationship between Inflation, Inflation Uncertainty and Output Growth in India

THE INFLATION - INFLATION UNCERTAINTY NEXUS IN ROMANIA

Chapter 4 Level of Volatility in the Indian Stock Market

Oil Price Effects on Exchange Rate and Price Level: The Case of South Korea

The Great Moderation Flattens Fat Tails: Disappearing Leptokurtosis

International Journal of Business and Administration Research Review. Vol.3, Issue.22, April-June Page 1

Trading Volume, Volatility and ADR Returns

INFLATION, INFLATION UNCERTAINTY AND A COMMON EUROPEAN MONETARY POLICY*

A Note on the Oil Price Trend and GARCH Shocks

The Economic Consequences of Dollar Appreciation for US Manufacturing Investment: A Time-Series Analysis

Determinants of Cyclical Aggregate Dividend Behavior

Department of Economics

The Impact of Falling Crude Oil Price on Financial Markets of Advanced East Asian Countries

DATABASE AND RESEARCH METHODOLOGY

Relationship between Inflation and Unemployment in India: Vector Error Correction Model Approach

RE-EXAMINE THE INTER-LINKAGE BETWEEN ECONOMIC GROWTH AND INFLATION:EVIDENCE FROM INDIA

CHAPTER V RELATION BETWEEN FINANCIAL DEVELOPMENT AND ECONOMIC GROWTH DURING PRE AND POST LIBERALISATION PERIOD

MEASURING THE OPTIMAL MACROECONOMIC UNCERTAINTY INDEX FOR TURKEY

Structural Cointegration Analysis of Private and Public Investment

Modelling Stock Market Return Volatility: Evidence from India

Hedging effectiveness of European wheat futures markets

Determinants of Stock Prices in Ghana

The Dynamics between Government Debt and Economic Growth in South Asia: A Time Series Approach

Available online at ScienceDirect. Procedia Economics and Finance 15 ( 2014 )

A Note on the Oil Price Trend and GARCH Shocks

Analysis of the Relation between Treasury Stock and Common Shares Outstanding

Assicurazioni Generali: An Option Pricing Case with NAGARCH

Uncertainty and the Transmission of Fiscal Policy

Modeling Exchange Rate Volatility using APARCH Models

Demand For Life Insurance Products In The Upper East Region Of Ghana

Forecasting Stock Index Futures Price Volatility: Linear vs. Nonlinear Models

VELOCITY AND THE VOLATILITY OF UNANTICIPATED AND ANTICIPATED MONEY SUPPLY IN THE UNITED KINGDOM

IS INFLATION VOLATILITY CORRELATED FOR THE US AND CANADA?

Modelling Inflation Uncertainty Using EGARCH: An Application to Turkey

UK Industry Beta Risk

The impact of the financial crisis on the interbank money markets behavior. Evidence from several CEE transition economies 1

THE IMPACT OF FINANCIAL CRISIS IN 2008 TO GLOBAL FINANCIAL MARKET: EMPIRICAL RESULT FROM ASIAN

Implied Volatility v/s Realized Volatility: A Forecasting Dimension

Efficiency in the Australian Stock Market, : A Note on Extreme Long-Run Random Walk Behaviour

Information Flows Between Eurodollar Spot and Futures Markets *

Indian Institute of Management Calcutta. Working Paper Series. WPS No. 797 March Implied Volatility and Predictability of GARCH Models

Stock Price Volatility in European & Indian Capital Market: Post-Finance Crisis

Volume 29, Issue 2. Measuring the external risk in the United Kingdom. Estela Sáenz University of Zaragoza

AN EMPIRICAL ANALYSIS OF THE PUBLIC DEBT RELEVANCE TO THE ECONOMIC GROWTH OF THE USA

Exchange Rate Market Efficiency: Across and Within Countries

The Feldstein Horioka Puzzle and structural breaks: evidence from the largest countries of Asia. Natalya Ketenci 1. (Yeditepe University, Istanbul)

Government Tax Revenue, Expenditure, and Debt in Sri Lanka : A Vector Autoregressive Model Analysis

The Demand for Money in Mexico i

Dynamic Causal Relationships among the Greater China Stock markets

Inflation, Inflation Uncertainty and Output Growth, Are They Related? A Study on South East Asian Economies,

A Study of Stock Return Distributions of Leading Indian Bank s

CAN MONEY SUPPLY PREDICT STOCK PRICES?

Recent analysis of the leverage effect for the main index on the Warsaw Stock Exchange

Variance clustering. Two motivations, volatility clustering, and implied volatility

Research Article The Volatility of the Index of Shanghai Stock Market Research Based on ARCH and Its Extended Forms

Martingales in Daily Foreign Exchange Rates: Evidence from Six Currencies against the Lebanese Pound

Market Integration, Price Discovery, and Volatility in Agricultural Commodity Futures P.Ramasundaram* and Sendhil R**

International journal of Science Commerce and Humanities Volume No 2 No 1 January 2014

IMPACT OF MACROECONOMIC VARIABLE ON STOCK MARKET RETURN AND ITS VOLATILITY

Volatility Clustering of Fine Wine Prices assuming Different Distributions

Private Consumption Expenditure in the Eastern Caribbean Currency Union

An Empirical Research on Chinese Stock Market Volatility Based. on Garch

Brief Sketch of Solutions: Tutorial 1. 2) descriptive statistics and correlogram. Series: LGCSI Sample 12/31/ /11/2009 Observations 2596

Is the real effective exchange rate biased against the PPP hypothesis?

Modeling Volatility of Price of Some Selected Agricultural Products in Ethiopia: ARIMA-GARCH Applications

Yafu Zhao Department of Economics East Carolina University M.S. Research Paper. Abstract

Case Study: Predicting U.S. Saving Behavior after the 2008 Financial Crisis (proposed solution)

Volatility Spillovers and Causality of Carbon Emissions, Oil and Coal Spot and Futures for the EU and USA

University of Pretoria Department of Economics Working Paper Series

FIW Working Paper N 58 November International Spillovers of Output Growth and Output Growth Volatility: Evidence from the G7.

Volatility Analysis of Nepalese Stock Market

US HFCS Price Forecasting Using Seasonal ARIMA Model

DOES GOVERNMENT SPENDING GROWTH EXCEED ECONOMIC GROWTH IN SAUDI ARABIA?

The Random Walk Hypothesis in Emerging Stock Market-Evidence from Nonlinear Fourier Unit Root Test

NONLINEAR RELATIONSHIPS BETWEEN OIL PRICE AND STOCK INDEX EVIDENCE FROM BRAZIL, RUSSIA, INDIA

A SEARCH FOR A STABLE LONG RUN MONEY DEMAND FUNCTION FOR THE US

THE EFFECTIVENESS OF EXCHANGE RATE CHANNEL OF MONETARY POLICY TRANSMISSION MECHANISM IN SRI LANKA

Global Volatility and Forex Returns in East Asia

Volume 35, Issue 1. Thai-Ha Le RMIT University (Vietnam Campus)

Foreign direct investment and profit outflows: a causality analysis for the Brazilian economy. Abstract

RETURNS AND VOLATILITY SPILLOVERS IN BRIC (BRAZIL, RUSSIA, INDIA, CHINA), EUROPE AND USA

VOLATILITY OF SELECT SECTORAL INDICES OF INDIAN STOCK MARKET: A STUDY

How can saving deposit rate and Hang Seng Index affect housing prices : an empirical study in Hong Kong market

VOLATILITY COMPONENT OF DERIVATIVE MARKET: EVIDENCE FROM FBMKLCI BASED ON CGARCH

Fiscal sustainability: a note for Cabo Verde

ANALYSIS OF THE RELATIONSHIP OF STOCK MARKET WITH EXCHANGE RATE AND SPOT GOLD PRICE OF SRI LANKA

A study on the long-run benefits of diversification in the stock markets of Greece, the UK and the US

THE IMPACT OF IMPORT ON INFLATION IN NAMIBIA

Equity Price Dynamics Before and After the Introduction of the Euro: A Note*

MODELING EXCHANGE RATE VOLATILITY OF UZBEK SUM BY USING ARCH FAMILY MODELS

Why the saving rate has been falling in Japan

ARCH modeling of the returns of first bank of Nigeria

Volatility in the Indian Financial Market Before, During and After the Global Financial Crisis

Testing the Stability of Demand for Money in Tonga

MAGNT Research Report (ISSN ) Vol.6(1). PP , 2019

Unemployment and Labor Force Participation in Turkey

Comovement of Asian Stock Markets and the U.S. Influence *

Impact of Energy Price Variability on Global Fertilizer Price: Application of Alternative Volatility Models

Transcription:

U.S. Department of the Treasury From the SelectedWorks of John Thornton March, 2008 Inflation and inflation uncertainty in Argentina, 1810 2005 John Thornton Available at: https://works.bepress.com/john_thornton/10/

Available online at www.sciencedirect.com Economics Letters 98 (2008) 247 252 www.elsevier.com/locate/econbase Inflation and inflation uncertainty in Argentina, 1810 2005 John Thornton 1 Fiscal Affairs Department, International Monetary Fund, Room HQ2 6-811, 700 19th Street NW, Washington D.C. 20008, USA Received 3 February 2006; received in revised form 1 March 2007; accepted 27 April 2007 Available online 6 May 2007 Abstract Unit root tests results suggest that inflation in Argentina for the period 1810 2005 is a stationary series when account is taken of structural breaks that coincide with bouts of hyperinflation. A GARCH (1,1) model of annual inflation suggests a positive short-run relation between the mean and variance of inflation, supporting Friedman's hypothesis that high inflation is associated with more variable inflation. 2007 Elsevier B.V. All rights reserved. Keywords: Unit roots; Inflation uncertainty; Conditional variance JEL classification: C22; E31 1. Introduction In a seminal paper, Friedman (1977) argued that increased variability or uncertainty of inflation distorts relative prices and adds an additional risk to long term contracting. In addition, he asserted that high levels of inflation are costly since they raise inflation variability. This hypothesis has given rise to a host of empirical studies examining the link between inflation and inflation uncertainty. A review of the many early studies on the issue by Davis and Kanago (2000) highlights the mixed results, partly reflecting differences in the countries studied, sample periods, frequency of the data sets, and empirical methodologies, including the representation of inflation uncertainty. Many of the more recent studies have E-mail address: jthornton@imf.org. 1 The views expressed in this paper are those of the author and should not be attributed to the International Monetary Fund. 0165-1765/$ - see front matter 2007 Elsevier B.V. All rights reserved. doi:10.1016/j.econlet.2007.04.034

248 J. Thornton / Economics Letters 98 (2008) 247 252 tended to favor the use of GARCH-based measures of inflation uncertainty to test the Friedman hypothesis. These studies typically either have used the simultaneous estimation approach to determine whether a positive short-run relationship between the mean and variance of inflation exists, and/or have employed a Granger-causality approach to determine the direction of the impact of a change in inflation on inflation uncertainty. Recent studies of this type generally have been supportive of Friedman's hypothesis, and include Fountas (2001) for the UK inflation experience over long time span, Fountas et al. (2004) for the recent inflation experience in five out of six European countries, and Conrad and Karanasos (2005) in a study of recent inflation in the USA, the UK, and Japan. In contrast, Hwang (2001) found no evidence that high inflation led to a high variance of inflation using a long series of monthly US inflation data. Most recent empirical tests of the hypothesis have been on the inflation experience of one or more of the G7 advanced economies, where average inflation rates typically have been low, with the exception of a brief period in the 1970s. This note contributes to the empirical evidence by using GARCH measures of inflation uncertainty to test for a positive short-run relation between the mean and variance of inflation in Argentina using a long series of consumer price data. It reports results from annual data spanning almost 200 years, which covers a variety of inflation and deflation experiences, including bouts of hyperinflation in the beginning in the early 1970s and the late 1980s. The results provide empirical support for Friedman's hypothesis. 2. The model The GARCH time series studies that examine the link between inflation and inflation uncertainty use a variety of empirical methodologies. Following Fountas (2001), I use a GARCH (1,1) model extended to allow for the inclusion of the inflation rate as an exogenous regressor in the variance equation in which inflation, y t, is an AR(2) process with time varying conditional variance: y t ¼ L 0 þ L 1 y t 1 þ N þ L p y t p þ e t ; Eðe t =h t 1 Þ¼0; Varðe t =h t 1 Þ¼r 2 t ; ð1þ r 2 t ¼ a 0 þ a 1 e 2 t 1 þ N a qe 2 t q þ b 1r 2 t 1 þ N þ b vr 2 t υ þ dy t; ð2þ where α 0 N0, α i 0, i=1, q, β j 0, j=1,, υ and θ t is the information set available at time t, and where according to Friedman's hypothesis, δ N 0. 3. Data and results I use annual data for the Argentine consumer price index for 1810 2005 from Ferres (2005) and the International Monetary Fund's International Financial Statistics data base. Fig. 1 illustrates the volatility of price changes over the period and summary statistics for the series are given in Table 1. The large value of the Jarque Bera statistic implies a deviation from normality, and the significant Q statistics of the squared deviations of the inflation rate from the sample means indicates the existence of ARCH effects. This evidence is also supported by the LM(1) statistic, which is highly significant.

J. Thornton / Economics Letters 98 (2008) 247 252 249 Fig. 1. In light of the instability in the series, I use three types of unit root tests to examine the stationarity properties of consumer prices. The first type of tests is relatively common in the literature but has been criticized because of their bias towards non-rejection of the null hypothesis of a unit root against the alternative of (trend) stationarity in the presence of structural breaks and low power for near-integrated processes. These are the Augmented Dickey and Fuller (1979) test and the Phillips and Perron (1988) test. The second type of tests allows for one break in the series, and is the tests developed by Zivot and Andrews (1992) and Lee and Strazicich (2004). The Zivot-Andrews test considers the null hypothesis of unit root with no break against the alternative of a trend-stationary process with a break occurring at an unknown point in time. In the presence of a break under the null, however, the asymptotic results are not valid and the test exhibits size distortions such that the unit root null hypothesis is rejected too often. The Lee and Strazicich (2004) unit root test with one endogenously determined structural break is based on a Lagrange multiplier (LM) test (with a distribution invariant to breakpoint nuisance parameters) and allows for a break under both the null and alternative hypotheses, such that the alternative hypothesis unambiguously implies trend stationarity. The third type of test allows for two breaks in the series and is the Clemente et al. (1998) test, which allows for two changes in the mean for non-trending additive and innovative outliers models. Table 2 reports the unit root test results for the series in first differences over the full sample. The tests, both with and without breaks, suggest that the hypothesis of a unit root can be Table 1 Summary statistics for consumer price inflation, 1810 2005 Mean 0.1780 Maximum 3.4587 Minimum 0.5108 Standard deviation 0.4746 Skewness 4.1482 Kurtosis 24.0285 Jarque-Bera statistic 4152.097 (0.000) Q 2 5.2013 (0.023) LM(1) 5.1813 (0.024) Q 2 is the Ljung-Box test for serial correlation in the squared deviations of the inflation rate from its sample mean, where the 1st order test statistic is reported. LM(1) is the Engle test for ARCH effects. Values in parenthesis are P-values.

250 J. Thornton / Economics Letters 98 (2008) 247 252 Table 2 Unit root tests results for consumer prices, 1810 2005 Dickey and Fuller (1979) 3.46* (3) Phillips and Perron (1988) 5.36 (17) Zivot and Andrews (1992) break: 1974 6.29* (3) Lee and Strazicich (2004) break: 1973 5.26* (8) Clemente et al. (1998) breaks: 1973; 1992 5.01* (12) Tests are for the first difference of the log of the consumer price index; in each case; in each case, results for the level of the index were not statistically significant. * indicates significance at the 95% level. All equations include an intercept trend. strongly rejected. However, both the Zivot and Andrews (1992) and Lee and Strazicich (2004) tests indicate a structural break in the early 1970s (1973 and 1974, respectively), which coincides with the first bout of hyperinflation in the twentieth century. The Clemente et al. (1998) test also confirms a structural break in 1973 and indicates a second break in 1992, which coincides with the second bout of hyperinflation in modern times. On the basis of the unit root test results, I confine the estimate of the GARCH model to the period 1810 1972, for which no structural break is indicated. 2 The maximum likelihood estimates of the GARCH model are reported in Table 3. In carrying out the estimates, I began with an inflation lag of 24 years, which was then shortened on the basis of the minimum value of the Schwarz Bayesian Criterion. The results strongly support the existence of a positive relationship between the level and variability of inflation. The reported parameters in the inflation and covariance equations are highly significant and of the hypothesized signs. The intercept in the conditional variance equation is positive, which is consistent with nonnegativity of the variance. The sum of the ARCH and GARCH coefficients in the conditional variance equation is less than one, which is consistent with the conditional variance of inflation being stationary. Finally, the parameter δ in the covariance equation is positive and significant, and indicates that if inflation rises by one unit, its conditional variance rises sharply (by 0.2 units for each 1 unit rise in inflation). 3 The Q statistics for the standardized residuals and squared residuals indicate no serial correlation. Finally, a Granger-causality test of the inflation inflation uncertainty relation indicates that it is strongly bi-causal and positive. For example, using a four-year lag the null hypothesis that inflation does not Granger-cause inflation uncertainty is rejected with an F-statistic of F 1,189 =2653.02; and the null hypothesis that inflation uncertainty does not Granger-cause inflation is rejected with an F-statistic of F 1,189 =8,03. 4 4. Conclusions Unit root tests results suggest that inflation in Argentina for the period 1810 2005 is a stationary series when account is taken of structural breaks that coincide with bouts of hyperinflation. In addition, a 2 The remaining years of the sample period do not provide sufficient observations for sensible estimates from a GARCH model. 3 As the unit of measurement for the inflation series is 0.1 or 10%, the unit of measurement for the conditional variance is 0.01 or 1%. 4 Granger-causality tests were run with lags from 2 to 12 years and in each confirmed a positive bicausal relation between inflation and inflation uncertainty.

J. Thornton / Economics Letters 98 (2008) 247 252 251 Table 3 GARCH (q,v) model for inflation, 1810 1973 Variable Coefficient P-value Inflation equation AR(1) Intercept 0.0102 0.3168 P( 1) 0.3742** 0.0000 Variance equation Intercept 0.0005 0.1172 ARCH(1) 0.0822* 0.0161 GARCH(1) 0.8365** 0.0000 P 0.0234** 0.0000 Diagnostics R 2 adj. 0.095 SBC 7.960 LM(1) 0.656 Q(4)/P-value 3.214 (0.523) Q(12)/P-value 13.471 (0.336) Q 2 (4)/P-value 2.807 (0.591) Q 2 (12)/P-value 7.646 (0.812) Notes: Inflation, p, is the annual percent change in the consumer price index. Q(k) Q 2 (k) are the Box-Pierce statistics of the levels of the residuals and the squared residuals, respectively. SBC is the Schwarz Bayesian Criterion. LM1 is the ARCH LM test statistic of Chi-square(1). * and ** indicates statistical significance at the 95 percent and 99 percent levels, respectively. GARCH model of annual inflation suggests a positive short-run relation between the mean and variance of inflation for the period 1810 1973. The results are in line with those from several recent studies that have used GARCH models to examine the inflation experience in one or more of the G7 economies and provide further evidence in favor of Friedman's hypothesis that inflationary periods are associated with high inflation uncertainty. References Clemente, J., Montañés, A., Reyes, M., 1998. Testing for a unit root in variables with a double change in the mean. Economics Letters 59, 175 182. Conrad, C., Karanasos, M., 2005. On the inflation-uncertainty hypothesis in the USA, Japan and the UK: a dual long memory approach. Japan and the World Economy 17, 327 343. Davis, G.K., Kanago, B.E., 2000. The level and uncertainty of inflation: results from OECD forecasts. Economic Enquiry 1, 58 72. Dickey, D.A., Fuller, W.A., 1979. Distribution of the estimators for autoregressive time series with a unit root. Journal of the American Statistical Association 74, 427 431. Ferres, O., 2005. Dos siglos de economia argentina, 1810 2004: historia in cifras. Grupo Fundacion Norte y Sur, Buenos Aires. Fountas, S., 2001. The relationship between inflation and inflation uncertainty in the UK: 1885 1998. Economics Letters 74, 77 83. Fountas, S., Ioannidi, A., Karanasos, M., 2004. Inflation, inflation uncertainty, and a common European monetary policy. Manchester School 72, 221 242. Friedman, M., 1977. Inflation and unemployment. Journal of Political Economy 85, 451 472.

252 J. Thornton / Economics Letters 98 (2008) 247 252 Hwang, Y., 2001. Relationship between inflation rate and inflation uncertainty. Economics Letters 73, 179 186. Lee, J., Strazicich, M., 2004. Minimum LM unit root test with one structural break, Appalachian State University Working Papers No. 04-17, Department of Economics. Available at: http://econ.appstate.edu/repec/pdf/wp0417.pdf. Phillips, P.C.B., Perron, P., 1988. Testing for a unit root in time series regression. Biometrika 75, 335 346. Zivot, E., Andrews, D.W.K., 1992. Further evidence of the great crash, the oil price shock and the unit root hypothesis. Journal of Business and Economics Statistics 10, 251 270.