High-dimensional Data Bootstrap
Statistics Theory
2022-05-20 v1 Econometrics
Statistics Theory
Abstract
This article reviews recent progress in high-dimensional bootstrap. We first review high-dimensional central limit theorems for distributions of sample mean vectors over the rectangles, bootstrap consistency results in high dimensions, and key techniques used to establish those results. We then review selected applications of high-dimensional bootstrap: construction of simultaneous confidence sets for high-dimensional vector parameters, multiple hypothesis testing via stepdown, post-selection inference, intersection bounds for partially identified parameters, and inference on best policies in policy evaluation. Finally, we also comment on a couple of future research directions.
Cite
@article{arxiv.2205.09691,
title = {High-dimensional Data Bootstrap},
author = {Victor Chernozhukov and Denis Chetverikov and Kengo Kato and Yuta Koike},
journal= {arXiv preprint arXiv:2205.09691},
year = {2022}
}
Comments
27 pages; review article