Incorrect asymptotic size of subsampling procedures based on post-consistent model selection estimators
Subsampling and the m out of n bootstrap have been suggested in the literature as methods for carrying out inference based on post-model selection estimators and shrinkage estimators. In this paper we consider a subsampling confidence interval (CI) that is based on an estimator that can be viewed either as a post-model selection estimator that employs a consistent model selection procedure or as a super-efficient estimator. We show that the subsampling CI (of nominal level 1-[alpha] for any [alpha][set membership, variant](0,1)) has asymptotic confidence size (defined to be the limit of finite-sample size) equal to zero in a very simple regular model. The same result holds for the m out of n bootstrap provided m2/n-->0 and the observations are i.i.d. Similar zero-asymptotic-confidence-size results hold in more complicated models that are covered by the general results given in the paper and for super-efficient and shrinkage estimators that are not post-model selection estimators. Based on these results, subsampling and the m out of n bootstrap are not recommended for obtaining inference based on post-consistent model selection or shrinkage estimators.
Year of publication: |
2009
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Authors: | Andrews, Donald W.K. ; Guggenberger, Patrik |
Published in: |
Journal of Econometrics. - Elsevier, ISSN 0304-4076. - Vol. 152.2009, 1, p. 19-27
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Publisher: |
Elsevier |
Keywords: | Asymptotic size Confidence set Finite-sample size m out of n bootstrap Model selection Shrinkage estimator Subsample Subsampling |
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