On the asymptotic behavior of the eigenvalue distribution of block correlation matrices of high-dimensional time series

被引:0
作者
Loubaton, Philippe [1 ]
Mestre, Xavier [2 ]
机构
[1] Univ Paris Est Marne La Vallee, Lab Informat Gaspard Monge, UMR 8049, 5 Bd Descartes, F-77454 Marne La Vallee 2, France
[2] Ctr Tecnol Tetecomunicac Cataluna, Av Carl Friedrich Gauss,7,Parc Mediterrani Tecnol, Caslelldefels 08860, Spain
关键词
Large random matrices; Stieltjes transform; correlated time series; sample block correlation matrices; LINEAR SPECTRAL STATISTICS; LIKELIHOOD RATIO TESTS; INDEPENDENCE;
D O I
10.1142/S2010326322500241
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
We consider linear spectral statistics built from the block-normalized correlation matrix of a set of M mutually independent scalar time series. This matrix is composed of M-2 blocks. Each block has size L x L and contains the sample cross-correlation measured at L consecutive time lags between each pair of time series. Let N denote the total number of consecutively observed windows that are used to estimate these correlation matrices. We analyze the asymptotic regime where M, L, N -> +infinity while ML/N -> c(*), 0 <c(*) < infinity. We study the behavior of linear statistics of the eigenvalues of this block correlation matrix under these asymptotic conditions and show that the empirical eigenvalue distribution converges to a Marcenko-Pastur distribution. Our results are potentially useful in order to address the problem of testing whether a large number of time series are uncorrelated or not.
引用
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页数:83
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