arXiv Analytics

Sign in

arXiv:1406.1216 [math.PR]AbstractReferencesReviewsResources

On the empirical spectral distribution for matrices with long memory and independent rows

Florence Merlevede, Magda Peligrad

Published 2014-06-04, updated 2014-08-10Version 2

In this paper we show that the empirical eigenvalue distribution of any sample covariance matrix generated by independent copies of a stationary regular sequence has a limiting distribution depending only on the spectral density of the sequence. We characterize this limit in terms of Stieltjes transform via a certain simple equation. No rate of convergence to zero of the covariances is imposed. If the entries of the stationary sequence are functions of independent random variables the result holds without any other additional assumptions. As a method of proof, we study the empirical eigenvalue distribution for a symmetric matrix with independent rows below the diagonal; the entries satisfy a Lindeberg-type condition along with mixingale-type conditions without rates. In this nonstationary setting we point out a property of universality, meaning that, for large matrix size, the empirical eigenvalue distribution depends only on the covariance structure of the sequence and is independent on the distribution leading to it. These results have interest in themselves, allowing to study symmetric random matrices generated by random processes with both short and long memory.

Related articles: Most relevant | Search more
arXiv:2103.03204 [math.PR] (Published 2021-03-04)
On the empirical spectral distribution for certain models related to sample covariance matrices with different correlations
arXiv:math/0502535 [math.PR] (Published 2005-02-25)
The empirical eigenvalue distribution of a Gram matrix: From independence to stationarity
arXiv:1812.11500 [math.PR] (Published 2018-12-30)
Diffusive and Super-Diffusive Limits for Random Walks and Diffusions with Long Memory