Asymptotic variance-covariance matrix of sample autocorrelations for threshold-asymmetric GARCH processes
  • Hwang, S. Y.
  • Baek, J. S.
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초록

In the field of financial time series, threshold-asymmetric conditional variance models can be used to explain asymmetric volatilities [C.W. Li and W.K. Li, On a double-threshold autoregressive heteroscedastic time series model, J. Appl. Econometrics 11 (1996), pp. 253-274]. In this paper, we consider a broad class of threshold-asymmetric GARCH processes (TAGARCH, hereafter) including standard ARCH and GARCH models as special cases. Since sample autocorrelation function provides a useful information to identify an appropriate time-series model for the data, we derive asymptotic distributions of sample autocorrelations both for original process and for squared process. It is verified that standard errors of sample autocorrelations for TAGARCH models are significantly different from unity for lower lags and they are exponentially converging to unity for higher lags. Furthermore they are shown to be asymptotically dependent while being independent of standard GARCH models. These results will be interesting in the light of the fact that TAGARCH processes are serially uncorrelated. A simulation study is reported to illustrate our results.

키워드

joint asymptotic distributionsample autocorrelationssquared processthreshold-asymmetric GARCHRESIDUAL AUTOCORRELATIONSMODELSTESTSERRORS
제목
Asymptotic variance-covariance matrix of sample autocorrelations for threshold-asymmetric GARCH processes
저자
Hwang, S. Y.Baek, J. S.
DOI
10.1080/02331880802172818
발행일
2009-02
유형
Article
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Statistics
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