SPECTRAL ANALYSIS OF GRAM MATRICES WITH MISSING AT RANDOM OBSERVATIONS: CONVERGENCE, CENTRAL LIMIT THEOREMS, AND APPLICATIONS IN STATISTICAL INFERENCE
成果类型:
Article
署名作者:
Li, Huiqin; Pan, Guangming; Yin, Yanqing; Zhou, Wang
署名单位:
Chongqing University; Nanyang Technological University; National University of Singapore
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/24-AOS2392
发表日期:
2024
页码:
1254-1275
关键词:
sample covariance matrices
2-sample test
eigenvalues
摘要:
Motivated by the statistical inference using the Gram matrix in the context of missing at random observations, this paper investigates the spectral resents a Hadamard random matrix with entries determined by independent Bernoulli variables D. Operating within the high-dimensional framework, we establish the convergence of the empirical spectral distribution of Sn to a well-defined limiting distribution. In addition, we explore the impact of the missing mechanism on the second-order properties of the spectral distribution of the Gram matrix Sn. We establish the central limit theorem for the linear spectral statistics of Sn, shedding light on their fluctuations. Surprisingly, our analysis reveals that even in the ideal Gaussian distribution scenario, the fluctuations of statistics generated by eigenvalues are influenced by the eigenvectors of the population covariance matrix in the missing-at-random case. This discovery uncovers a remarkable phenomenon that starkly contrasts with the classical case. Subsequently, we demonstrate the practical application of our central limit theorem in hypothesis testing for the population covariance matrix.