Multivariate versions of Bartlett’s formula |
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Authors: | Nan Su Robert Lund |
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Affiliation: | Department of Mathematical Sciences, Clemson University, Clemson, SC 29634-0975, United States |
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Abstract: | This paper quantifies the form of the asymptotic covariance matrix of the sample autocovariances in a multivariate stationary time series—the classic Bartlett formula. Such quantification is useful in many statistical inferences involving autocovariances. While joint asymptotic normality of the sample autocovariances is well-known in univariate settings, explicit forms of the asymptotic covariances have not been investigated in the general multivariate non-Gaussian case. We fill this gap by providing such an analysis, bookkeeping all skewness terms. Additionally, following a recent univariate paper by Francq and Zakoian, we consider linear processes driven by non-independent errors, a feature that permits consideration of multivariate GARCH processes. |
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Keywords: | 60G10 60F05 |
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