Title of article :
Higher-order improvements of the parametric bootstrap for long-memory Gaussian processes
Author/Authors :
Andrews، نويسنده , , Donald W.K. and Lieberman، نويسنده , , Offer and Marmer، نويسنده , , Vadim، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2006
Pages :
30
From page :
673
To page :
702
Abstract :
This paper determines coverage probability errors of both delta method and parametric bootstrap confidence intervals (CIs) for the covariance parameters of stationary long-memory Gaussian time series. CIs for the long-memory parameter d 0 are included. The results establish that the bootstrap provides higher-order improvements over the delta method. Analogous results are given for tests. The CIs and tests are based on one or other of two approximate maximum likelihood estimators. The first estimator solves the first-order conditions with respect to the covariance parameters of a “plug-in” log-likelihood function that has the unknown mean replaced by the sample mean. The second estimator does likewise for a plug-in Whittle log-likelihood. gnitudes of the coverage probability errors for one-sided bootstrap CIs for covariance parameters for long-memory time series are shown to be essentially the same as they are with iid data. This occurs even though the mean of the time series cannot be estimated at the usual n 1 / 2 rate.
Keywords :
Delta method , Edgeworth expansion , Gaussian process , Long memory , Maximum likelihood estimator , Whittle likelihood , t statistic , Asymptotics , Confidence intervals , Parametric bootstrap
Journal title :
Journal of Econometrics
Serial Year :
2006
Journal title :
Journal of Econometrics
Record number :
1558994
Link To Document :
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