Another look at Bootstrapping the Student t-statistic
Miklos Csorgo, Yuliya Martsynyuk, Masoud Nasari

TL;DR
This paper investigates the asymptotic behavior of bootstrap t-statistics under weighted resampling, providing new theoretical justifications for bootstrap validity conditioned on weights and data.
Contribution
It introduces a novel approach to justify bootstrap methods by conditioning on weights, extending previous results and analyzing the validity of bootstrap t-intervals under these conditions.
Findings
Asymptotic behavior of bootstrap t-statistics is characterized under weight conditioning.
Validity of bootstrap t-intervals is established for both data and weight conditioning.
Conditions on weights ensure almost sure or probabilistic convergence of bootstrap procedures.
Abstract
Let X, X_1,X_2,... be a sequence of i.i.d. random variables with mean . Let be vectors of non-negative random variables (weights), independent of the data sequence , and put . Consider , , a bootstrap sample, resulting from re-sampling or stochastically re-weighing a random sample , . Put , the original sample mean, and define , the bootstrap sample mean. Thus, . Put and let , respectively be the the original sample variance and the bootstrap sample variance. The main aim of this exposition is to study the asymptotic behavior of…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Mathematical Approximation and Integration · Probability and Risk Models
