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Optimal Bootstrap Sample Size in Construction of Percentile Confidence Bounds
Authors:Kam-Hin Chung,&   Stephen M. S. Lee
Affiliation:The University of Hong Kong
Abstract:In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, n say. Recent studies have shown that using a bootstrap sample size different from n may sometimes provide a more satisfactory solution. In this paper we apply the latter approach to correct for coverage error in construction of bootstrap confidence bounds. We show that the coverage error of a bootstrap percentile method confidence bound, which is of order O ( n −2/2) typically, can be reduced to O ( n −1) by use of an optimal bootstrap sample size. A simulation study is conducted to illustrate our findings, which also suggest that the new method yields intervals of shorter length and greater stability compared to competitors of similar coverage accuracy.
Keywords:backwards percentile    confidence bound    Cornish–Fisher expansion    coverage error    double bootstrap, Edgeworth expansion    hybrid percentile    m/n bootstrap    smooth function model
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