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arXiv:1312.0037 [math.PR]AbstractReferencesReviewsResources

On the limiting spectral distribution for a large class of random matrices with correlated entries

Florence Merlevede, Magda Peligrad, Marwa Banna

Published 2013-11-29, updated 2014-11-07Version 2

For symmetric random matrices with correlated entries, which are functions of independent random variables, we show that the asymptotic behavior of the empirical eigenvalue distribution can be obtained by analyzing a Gaussian matrix with the same covariance structure. This class contains both cases of short and long range dependent random fields. The technique is based on a blend of blocking procedure and Lindeberg's method. This method leads to a variety of interesting asymptotic results for matrices with dependent entries, including applications to linear processes as well as nonlinear Volterra-type processes entries.

Comments: 27 pages. In this version we shorten the title and removed one of the conditions used in the previous version
Categories: math.PR
Subjects: 60F15, 60G60, 60G10, 62E20
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