This paper is aimed at deriving the universality of the largest eigenvalue of a class of high-dimensional real or complex sample covariance matrices of the form WN = Σ 1/2 XX * Σ 1/2 . Here, X = (xij)M,N is an M ×N random matrix with independent entries xij,For a class of general deterministic positive-definite M × M matrices Σ, under some additional assumptions on the distribution of xij's, we show that the limiting behavior of the largest eigenvalue of WN is universal, via pursuing a Green function comparison strategy raised in [Probab. Theory Related Fields 154 (2012) 341-407, Adv. Math. 229 (2012) 1435-1515] by Erdős, Yau and Yin for Wigner matrices and extended by Pillai and Yin [Ann. Appl. Probab. 24 (2014) 935-1001] to sample covariance matrices in the null case (Σ = I). Consequently, in the standard complex case (Ex 2 ij = 0), combing this universality property and the results known for Gaussian matrices obtained by El Karoui in [Ann. Probab. 35 (2007) 663-714] (nonsingular case) and Onatski in [Ann. Appl. Probab. 18 (2008) 470-490] (singular case), we show that after an appropriate normalization the largest eigenvalue of WN converges weakly to the type 2 Tracy-Widom distribution TW2. Moreover, in the real case, we show that when Σ is spiked with a fixed number of subcritical spikes, the type 1 Tracy-Widom limit TW1 holds for the normalized largest eigenvalue of WN , which extends a result of Féral and Péché in [J. Math. Phys. 50 (2009) 073302] to the scenario of nondiagonal Σ and more generally distributed X.
Abstract:The eigenvalue distribution of the sum of two large Hermitian matrices, when one of them is conjugated by a Haar distributed unitary matrix, is asymptotically given by the free convolution of their spectral distributions. We prove that this convergence also holds locally in the bulk of the spectrum, down to the optimal scales larger than the eigenvalue spacing. The corresponding eigenvectors are fully delocalized. Similar results hold for the sum of two real symmetric matrices, when one is conjugated by Haar orthogonal matrix.
Consider a Gaussian vector z = (x , y ) , consisting of two subvectors x and y with dimensions p and q respectively. With n independent observations of z, we study the correlation between x and y, from the perspective of the Canonical Correlation Analysis. We investigate the high-dimensional case: both p and q are proportional to the sample size n. Denote by Σuv the population crosscovariance matrix of random vectors u and v, and denote by Suv the sample counterpart. The canonical correlation coefficients between x and y are known as the square roots of the nonzero eigenvalues of the canonical correlation matrix Σ −1 xx ΣxyΣ −1 yy Σyx. In this paper, we focus on the case that Σxy is of finite rank k, i.e. there are k nonzero canonical correlation coefficients, whose squares are denoted by r1 ≥ · · · ≥ r k > 0. We study the sample counterparts of ri, i = 1, . . . , k, i.e. the largest k eigenvalues of the sample canonical correlation matrix S −1 xx SxyS −1 yy Syx, denoted by λ1 ≥ · · · ≥ λ k . We show that there exists a threshold rc ∈ (0, 1), such that for each i ∈ {1, . . . , k}, when ri ≤ rc, λi converges almost surely to the right edge of the limiting spectral distribution of the sample canonical correlation matrix, denoted by d+. When ri > rc, λi possesses an almost sure limit in (d+, 1], from which we can recover ri's in turn, thus provide an estimate of the latter in the high-dimensional scenario. We also obtain the limiting distribution of λi's under appropriate normalization. Specifically, λi possesses Gaussian type fluctuation if ri > rc, and follows Tracy-Widom distribution if ri < rc. Some applications of our results are also discussed.
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