BOOTSTRAP CONFIDENCE SETS UNDER MODEL MISSPECIFICATION

Citation
Vladimir Spokoiny et Mayya Zhilova, BOOTSTRAP CONFIDENCE SETS UNDER MODEL MISSPECIFICATION, Annals of statistics , 43(6), 2015, pp. 2653-2675
Journal title
ISSN journal
00905364
Volume
43
Issue
6
Year of publication
2015
Pages
2653 - 2675
Database
ACNP
SICI code
Abstract
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered for finite samples and a possible model misspecification. Theoretical results justify the bootstrap validity for a small or moderate sample size and allow to control the impact of the parameter dimension p: the bootstrap approximation works if p³/n is small. The main result about bootstrap validity continues to apply even if the underlying parametric model is misspecified under the so-called small modelling bias condition. In the case when the true model deviates significantly from the considered parametric family, the bootstrap procedure is still applicable but it becomes a bit conservative: the size of the constructed confidence sets is increased by the modelling bias. We illustrate the results with numerical examples for misspecified linear and logistic regressions.