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Large sample correlation matrices: a comparison theorem and its applications

Abstract

In this paper, we show that the diagonal of a high-dimensional sample covariance matrix stemming from nn independent observations of a pp-dimensional time series with finite fourth moments can be approximated in spectral norm by the diagonal of the population covariance matrix. We assume that n,pn,p\to \infty with p/np/n tending to a constant which might be positive or zero. As applications, we provide an approximation of the sample correlation matrix R{\mathbf R} and derive a variety of results for its eigenvalues. We identify the limiting spectral distribution of R{\mathbf R} and construct an estimator for the population correlation matrix and its eigenvalues. Finally, the almost sure limits of the extreme eigenvalues of R{\mathbf R} in a generalized spiked correlation model are analyzed.

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