Bootstrapping the Mean Vector for the Observations in the Domain of Attraction of a Multivariate Stable Law

Abstract

We consider a robust estimation of the mean vector for a sequence of i.i.d. observations in the domain of attraction of a stable law with different indices of stability, DS(α1, …, αp), such that 1<αi≤ 2, i=1,…,p. The suggested estimator is asymptotically Gaussian with unknown parameters. We apply an asymptotically valid bootstrap to construct a confidence region for the mean vector. A simulation study is performed to show that the estimation method is efficient for conducting inference about the mean vector for multivariate heavy-tailed distributions.

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