Convergence rates of spectral distributions of large dimensional quaternion sample covariance matrices

被引:0
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作者
Huiqin Li
Zhidong Bai
机构
[1] Northeast Normal University,KLASMOE and School of Mathematics & Statistics
关键词
primary 15B52; 60F15; 62E20; secondary 60F17; Empirical spectral distribution; Marčenko-Pastur law; Weak convergence rate; Strong convergence rate; Quaternion sample covariance matrix;
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摘要
In this paper, we study the convergence rates of empirical spectral distributions of large dimensional quaternion sample covariance matrices. Assume that the entries of Xn (p × n) are independent quaternion random variables with means zero, variances 1 and uniformly bounded sixth moments. Denote ++++. Using Bai’s inequality, we prove that the expected empirical spectral distribution (ESD) converges to the limiting Marčenko-Pastur distribution with the ratio of dimension to sample size yp = p/n at a rate of O(n−1/2an−3/4) when an > n−2/5 or O (n−1/5) when an ≤ n−2/5, where an = (1 − √yp)2. Moreover, the rates for both the convergence in probability and the almost sure convergence are also established. The weak convergence rate of the ESD is O(n−2/5an−1/2) when an > n−2/5 or O (n−1/5) when an ≤ n−2/5. The strong convergence rate of the ESD is O(n−2/5+ηan−1/2) when an > κn−2/5 or O (n−1/5) when an ≤ κn−2/5 for any η > 0 where κ is a positive constant.
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页码:28 / 44
页数:16
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