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 |
|