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CLT and Edgeworth Expansion for m-out-of-n Bootstrap Estimators of The Studentized Median

CLT and Edgeworth Expansion for m-out-of-n Bootstrap Estimators of The Studentized Median

来源:Arxiv_logoArxiv
英文摘要

The m-out-of-n bootstrap, originally proposed by Bickel, Gotze, and Zwet (1992), approximates the distribution of a statistic by repeatedly drawing m subsamples (with m much smaller than n) without replacement from an original sample of size n. It is now routinely used for robust inference with heavy-tailed data, bandwidth selection, and other large-sample applications. Despite its broad applicability across econometrics, biostatistics, and machine learning, rigorous parameter-free guarantees for the soundness of the m-out-of-n bootstrap when estimating sample quantiles have remained elusive. This paper establishes such guarantees by analyzing the estimator of sample quantiles obtained from m-out-of-n resampling of a dataset of size n. We first prove a central limit theorem for a fully data-driven version of the estimator that holds under a mild moment condition and involves no unknown nuisance parameters. We then show that the moment assumption is essentially tight by constructing a counter-example in which the CLT fails. Strengthening the assumptions slightly, we derive an Edgeworth expansion that provides exact convergence rates and, as a corollary, a Berry Esseen bound on the bootstrap approximation error. Finally, we illustrate the scope of our results by deriving parameter-free asymptotic distributions for practical statistics, including the quantiles for random walk Metropolis-Hastings and the rewards of ergodic Markov decision processes, thereby demonstrating the usefulness of our theory in modern estimation and learning tasks.

Imon Banerjee、Sayak Chakrabarty

数学

Imon Banerjee,Sayak Chakrabarty.CLT and Edgeworth Expansion for m-out-of-n Bootstrap Estimators of The Studentized Median[EB/OL].(2025-05-16)[2025-06-06].https://arxiv.org/abs/2505.11725.点此复制

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