Spectral measure of empirical autocovariance matrices of high-dimensional Gaussian stationary processes
Article Type
Research Article
Publication Title
Random Matrices: Theory and Application
Abstract
Consider the empirical autocovariance matrices at given non-zero time lags, based on observations from a multivariate complex Gaussian stationary time series. The spectral analysis of these autocovariance matrices can be useful in certain statistical problems, such as those related to testing for white noise. We study the behavior of their spectral measure in the asymptotic regime where the time series dimension and the observation window length both grow to infinity, and at the same rate. Following a general framework in the field of the spectral analysis of large random non-Hermitian matrices, at first the probabilistic behavior of the small singular values of a shifted version of the autocovariance matrix is obtained. This is then used to obtain the asymptotic behavior of the empirical spectral measure of the autocovariance matrices at any lag. Matrix orthogonal polynomials on the unit circle play a crucial role in our study.
DOI
https://10.1142/S2010326322500538
Publication Date
4-1-2023
Recommended Citation
Bose, Arup and Hachem, Walid, "Spectral measure of empirical autocovariance matrices of high-dimensional Gaussian stationary processes" (2023). Journal Articles. 3794.
https://digitalcommons.isical.ac.in/journal-articles/3794
Comments
Open Access, Green