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Nearly optimal central limit theorem and bootstrap approximations in high dimensions

The Annals of Applied Probability (Ann. Appl. Probab.), 2020
Abstract

In this paper, we derive new, nearly optimal bounds for the Gaussian approximation to scaled averages of nn independent high-dimensional centered random vectors X1,,XnX_1,\dots,X_n over the class of rectangles in the case when the covariance matrix of the scaled average is non-degenerate. In the case of bounded XiX_i's, the implied bound for the Kolmogorov distance between the distribution of the scaled average and the Gaussian vector takes the form C(Bn2log3d/n)1/2logn,C (B^2_n \log^3 d/n)^{1/2} \log n, where dd is the dimension of the vectors and BnB_n is a uniform envelope constant on components of XiX_i's. This bound is sharp in terms of dd and BnB_n, and is nearly (up to logn\log n) sharp in terms of the sample size nn. In addition, we show that similar bounds hold for the multiplier and empirical bootstrap approximations. Moreover, we establish bounds that allow for unbounded XiX_i's, formulated solely in terms of moments of XiX_i's. Finally, we demonstrate that the bounds can be further improved in some special smooth and zero-skewness cases.

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