Notes on the dimension dependence in high-dimensional central limit theorems for hyperrectangles (1911.00160v3)
Abstract: Let $X_1,\dots,X_n$ be independent centered random vectors in $\mathbb{R}d$. This paper shows that, even when $d$ may grow with $n$, the probability $P(n{-1/2}\sum_{i=1}nX_i\in A)$ can be approximated by its Gaussian analog uniformly in hyperrectangles $A$ in $\mathbb{R}d$ as $n\to\infty$ under appropriate moment assumptions, as long as $(\log d)5/n\to0$. This improves a result of Chernozhukov, Chetverikov & Kato [Ann. Probab. 45 (2017) 2309-2353] in terms of the dimension growth condition. When $n{-1/2}\sum_{i=1}nX_i$ has a common factor across the components, this condition can be further improved to $(\log d)3/n\to0$. The corresponding bootstrap approximation results are also developed. These results serve as a theoretical foundation of simultaneous inference for high-dimensional models.
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