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High-dimensional Central Limit Theorems by Stein's Method

29 January 2020
Xiao Fang
Yuta Koike
ArXiv (abs)PDFHTML
Abstract

We obtain explicit error bounds for the ddd-dimensional normal approximation on hyperrectangles for a random vector that has a Stein kernel, or admits an exchangeable pair coupling, or is a non-linear statistic of independent random variables or a sum of nnn locally dependent random vectors. We assume the approximating normal distribution has a non-singular covariance matrix. The error bounds vanish even when the dimension ddd is much larger than the sample size nnn. We prove our main results using the approach of G\"otze (1991) in Stein's method, together with modifications of an estimate of Anderson, Hall and Titterington (1998) and a smoothing inequality of Bhattacharya and Rao (1976). For sums of nnn independent and identically distributed isotropic random vectors having a log-concave density, we obtain an error bound that is optimal up to a log⁡n\log nlogn factor. We also discuss an application to multiple Wiener-It\^{o} integrals.

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