Nonstationarities in Stock Returns

The paper outlines a methodology for analyzing daily stock returns that relinquishes the assumption of global stationarity. Giving up this common working hypothesis reflects our belief that fundamental features of the financial markets are continuously and significantly changing. Our approach approximates the nonstationary data locally by stationary models. The methodology is applied to the S&P 500 series of returns covering a period of over seventy years of market activity. We find most of the dynamics of this time series to be concentrated in shifts of the unconditional variance. The forecasts based on our nonstationary unconditional modeling were found to be superior to those obtained in a stationary long-memory framework and to those based on a stationary Garch(1, 1) data-generating process.

[1]  Christopher G. Lamoureux,et al.  Persistence in Variance, Structural Change, and the GARCH Model , 1990 .

[2]  F. Massey,et al.  Distribution Table for the Deviation Between two Sample Cumulatives , 1952 .

[3]  Dominique Picard,et al.  TESTING AND ESTIMATING CHANGE-POINTS , 1985 .

[4]  T. Mikosch Periodogram estimates from heavy-tailed data , 1998 .

[5]  Timo Teräsvirta,et al.  A simple nonlinear time series model with misleading linear properties , 1999 .

[6]  R. Lund Estimation in Conditionally Heteroscedastic Time Series Models , 2006 .

[7]  Murad S. Taqqu,et al.  A Practical Guide to Heavy Tails: Statistical Techniques for Analysing Heavy-Tailed Distributions , 1998 .

[8]  Wolfgang Härdle,et al.  Adaptive Estimation for a Time Inhomogeneous Stochastic-Volatility Model , 2000 .

[9]  Richard A. Davis,et al.  Time Series: Theory and Methods (2nd ed.). , 1992 .

[10]  J. R. M. Hosking,et al.  FRACTIONAL DIFFERENCING MODELING IN HYDROLOGY , 1985 .

[11]  Clive W. J. Granger,et al.  Occasional Structural Breaks and Long Memory , 1999 .

[12]  J. Stock,et al.  Evidence on Structural Instability in Macroeconomic Time Series Relations , 1994 .

[13]  C. Stărică,et al.  A simple non-stationary model for stock returns , 2002 .

[14]  Francis X. Dieobold Modeling The persistence Of Conditional Variances: A Comment , 1986 .

[15]  T. Bollerslev,et al.  Answering the Critics: Yes, Arch Models Do Provide Good Volatility Forecasts , 1997 .

[16]  T. Bollerslev,et al.  ANSWERING THE SKEPTICS: YES, STANDARD VOLATILITY MODELS DO PROVIDE ACCURATE FORECASTS* , 1998 .

[17]  K. West,et al.  Asymptotic Inference about Predictive Ability , 1996 .

[18]  D. Straumann Estimation in Conditionally Herteroscedastic Time Series Models , 2004 .

[19]  Murad S. Taqqu,et al.  Theory and applications of long-range dependence , 2003 .

[20]  C. Granger,et al.  AN INTRODUCTION TO LONG‐MEMORY TIME SERIES MODELS AND FRACTIONAL DIFFERENCING , 1980 .

[21]  J. Wellner,et al.  Empirical Processes with Applications to Statistics , 2009 .

[22]  D. Picard Testing and estimating change-points in time series , 1985, Advances in Applied Probability.

[23]  Why does the GARCH(1,1) model fail to provide sensible longer- horizon volatility forecasts? , 2005 .

[24]  R. Miller,et al.  On the Stable Paretian Behavior of Stock-Market Prices , 1974 .

[25]  Ignacio N. Lobato,et al.  Real and Spurious Long-Memory Properties of Stock-Market Data , 1996 .

[26]  R. Nelsen An Introduction to Copulas , 1998 .

[27]  Jean-Guy Simonato Estimation of GARCH process in the presence of structural change , 1992 .

[28]  Javier Hidalgo,et al.  Testing for structural change in a long-memory environment☆ , 1996 .

[29]  Liudas Giraitis,et al.  Testing and estimating in the change-point problem of the spectral function , 1992 .

[30]  D. B. Preston Spectral Analysis and Time Series , 1983 .

[31]  R. Dahlhaus Fitting time series models to nonstationary processes , 1997 .

[32]  Richard T. Baillie,et al.  Modeling Long Memory and Structural Breaks in Conditional Variances: an Adaptive FIGARCH Approach , 2009, ICER 2007.

[33]  F. Diebold,et al.  Long Memory and Regime Switching , 2000 .

[34]  R. Tütüncü,et al.  A non-stationary multivariate model for financial returns , 2002 .

[35]  James D. Hamilton,et al.  Autoregressive conditional heteroskedasticity and changes in regime , 1994 .

[36]  Thomas Mikosch,et al.  Gaussian limit fields for the integrated periodogram , 1996 .

[37]  T. W. Anderson Goodness of Fit Tests for Spectral Distributions , 1993 .

[38]  Ke-Li Xu,et al.  Adaptive Estimation of Autoregressive Models with Time-Varying Variances , 2006 .

[39]  F. Diebold,et al.  Comparing Predictive Accuracy , 1994, Business Cycles.

[40]  F. Massey,et al.  The Distribution of the Maximum Deviation Between two Sample Cumulative Step Functions , 1951 .

[41]  Paul Newbold,et al.  Testing the equality of prediction mean squared errors , 1997 .

[42]  Jun Cai A Markov Model of Switching-Regime ARCH , 1994 .