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Wild Bootstrap of the Sample Mean in the Infinite Variance Case
Authors:Giuseppe Cavaliere  Iliyan Georgiev
Affiliation:1. Department of Statistical Sciences , University of Bologna , Bologna , Italy;2. Faculdade de Economia , Universidade Nova de Lisboa , Lisbon , Portugal
Abstract:It is well known that the standard independent, identically distributed (iid) bootstrap of the mean is inconsistent in a location model with infinite variance (α-stable) innovations. This occurs because the bootstrap distribution of a normalised sum of infinite variance random variables tends to a random distribution. Consistent bootstrap algorithms based on subsampling methods have been proposed but have the drawback that they deliver much wider confidence sets than those generated by the iid bootstrap owing to the fact that they eliminate the dependence of the bootstrap distribution on the sample extremes. In this paper we propose sufficient conditions that allow a simple modification of the bootstrap (Wu, 1986 Wu , C. F. J. ( 1986 ). Jackknife, bootstrap, and other resampling methods . Annals of Statistics 14 : 12611295 .[Crossref], [Web of Science ®] [Google Scholar]) to be consistent (in a conditional sense) yet to also reproduce the narrower confidence sets of the iid bootstrap. Numerical results demonstrate that our proposed bootstrap method works very well in practice delivering coverage rates very close to the nominal level and significantly narrower confidence sets than other consistent methods.
Keywords:Bootstrap  Random probability measures  Stable distributions  Weak convergence
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