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On the rate of convergence in the CLT for LSS of large-dimensional sample covariance matrices (2506.02880v2)

Published 3 Jun 2025 in math.PR, math.ST, and stat.TH

Abstract: This paper investigates the rate of convergence for the central limit theorem of linear spectral statistic (LSS) associated with large-dimensional sample covariance matrices. We consider matrices of the form ${\mathbf B}n=\frac{1}{n}{\mathbf T}_p{1/2}{\mathbf X}_n{\mathbf X}_n*{\mathbf T}_p{1/2},$ where ${\mathbf X}_n= (x{i j} ) $ is a $p \times n$ matrix whose entries are independent and identically distributed (i.i.d.) real or complex variables, and ${\mathbf T} p$ is a $p\times p$ nonrandom Hermitian nonnegative definite matrix with its spectral norm uniformly bounded in $p$. Employing Stein's method, we establish that if the entries $x{ij}$ satisfy $\mathbb{E}|x_{ij}|{10}<\infty$ and the ratio of the dimension to sample size $p/n\to y>0$ as $n\to\infty$, then the convergence rate of the normalized LSS of ${\mathbf B}_n$ to the standard normal distribution, measured in the Kolmogorov-Smirnov distance, is $O(n{-1/2+\kappa})$ for any fixed $\kappa>0$.

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