October 2023 A CLT for the LSS of large-dimensional sample covariance matrices with diverging spikes
Zhijun Liu, Jiang Hu, Zhidong Bai, Haiyan Song
Author Affiliations +
Ann. Statist. 51(5): 2246-2271 (October 2023). DOI: 10.1214/23-AOS2333

Abstract

In this paper, we establish the central limit theorem (CLT) for linear spectral statistics (LSSs) of a large-dimensional sample covariance matrix when the population covariance matrices are involved with diverging spikes. This constitutes a nontrivial extension of the Bai–Silverstein theorem (BST) (Ann. Probab. 32 (2004) 553–605), a theorem that has strongly influenced the development of high-dimensional statistics, especially in the applications of random matrix theory to statistics. Recently, there has been a growing realization that the assumption of uniform boundedness of the population covariance matrices in the BST is not satisfied in some fields, such as economics, where the variances of principal components may diverge as the dimension tends to infinity. Therefore, in this paper, we aim to eliminate this obstacle to applications of the BST. Our new CLT accommodates spiked eigenvalues, which may either be bounded or tend to infinity. A distinguishing feature of our result is that the variance in the new CLT is related to both spiked eigenvalues and bulk eigenvalues, with dominance being determined by the divergence rate of the largest spiked eigenvalues. The new CLT for LSS is then applied to test the hypothesis that the population covariance matrix is the identity matrix or a generalized spiked model. The asymptotic distributions of the corrected likelihood ratio test statistic and the corrected Nagao’s trace test statistic are derived under the alternative hypothesis. Moreover, we present power comparisons between these two LSSs and Roy’s largest root test. In particular, we demonstrate that except for the case in which there is only one spike, the LSSs could exhibit higher asymptotic power than Roy’s largest root test.

Funding Statement

Jiang Hu was partially supported by NSFC Grants No. 12171078, No. 12292980, No. 12292982, National Key R&D Program of China No. 2020YFA0714102 and Fundamental Research Funds for the Central Universities No. 2412023YQ003.
Zhidong Bai was partially supported by NSFC Grants No. 12171198, No. 12271536 and Team Project of Jilin Provincial Department of Science and Technology No. 20210101147JC.

Acknowledgments

The authors would like to thank Professor Jeff Yao for many helpful suggestions and discussions. The authors would also like to thank the Editor, Associate Editor and two referees for their constructive comments.

Citation

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Zhijun Liu. Jiang Hu. Zhidong Bai. Haiyan Song. "A CLT for the LSS of large-dimensional sample covariance matrices with diverging spikes." Ann. Statist. 51 (5) 2246 - 2271, October 2023. https://doi.org/10.1214/23-AOS2333

Information

Received: 1 December 2022; Revised: 1 September 2023; Published: October 2023
First available in Project Euclid: 14 December 2023

Digital Object Identifier: 10.1214/23-AOS2333

Subjects:
Primary: 60B20
Secondary: 60F05

Keywords: Empirical spectral distribution , linear spectral statistic , Random matrix , Stieltjes transform

Rights: Copyright © 2023 Institute of Mathematical Statistics

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Vol.51 • No. 5 • October 2023
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