Central Limit Theorem and Near classical Berry-Esseen rate for self normalized sums in high dimensions
Debraj Das

TL;DR
This paper establishes high-dimensional central limit theorems for self-normalized sums with polynomial moment conditions, determining optimal growth rates and Berry-Esseen bounds, and applies results to high-dimensional Student's t-statistics.
Contribution
It provides the first near-optimal Berry-Esseen rates and growth rate bounds for high-dimensional self-normalized sums under polynomial moment conditions, reducing the need for exponential moments.
Findings
Optimal polynomial moment conditions for high-dimensional CLT.
Near-n^{-κ/2} Berry-Esseen rate established.
Growth rate of log p cannot exceed o(n^{1/2}).
Abstract
In this article, we are interested in the high dimensional normal approximation of in uniformly over the class of hyper-rectangles , where are non-degenerate independent dimensional random vectors. We assume that the components of are independent and identically distributed (iid) and investigate the optimal cut-off rate of in the uniform central limit theorem (UCLT) for over . The aim is to reduce the exponential moment conditions, generally assumed for exponential growth of the dimension with respect to the sample size in high dimensional CLT, to some…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Mathematical Dynamics and Fractals · Theoretical and Computational Physics
