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Linear spectral statistics of eigenvectors of anisotropic sample covariance matrices

Abstract

Consider sample covariance matrices of the form Q:=Σ1/2XXΣ1/2Q:=\Sigma^{1/2} X X^\top \Sigma^{1/2}, where X=(xij)X=(x_{ij}) is an n×Nn\times N random matrix whose entries are independent random variables with mean zero and variance N1N^{-1}, and Σ\Sigma is a deterministic positive-definite covariance matrix. We study the limiting behavior of the eigenvectors of QQ through the so-called eigenvector empirical spectral distribution FvF_{\mathbf v}, which is an alternative form of empirical spectral distribution with weights given by vξk2|\mathbf v^\top \xi_k|^2, where v\mathbf v is a deterministic unit vector and ξk\xi_k are the eigenvectors of QQ. We prove a functional central limit theorem for the linear spectral statistics of FvF_{\mathbf v}, indexed by functions with H\"older continuous derivatives. We show that the linear spectral statistics converge to some Gaussian processes both on global scales of order 1 and on local scales that are much smaller than 1 but much larger than the typical eigenvalue spacing N1N^{-1}. Moreover, we give explicit expressions for the covariance functions of the Gaussian processes, where the exact dependence on Σ\Sigma and v\mathbf v is identified for the first time in the literature.

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