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Spectral properties of sample covariance matrices arising from random matrices with independent non identically distributed columns

Abstract

Given a random matrix X=(x1,,xn)Mp,nX= (x_1,\ldots, x_n)\in \mathcal M_{p,n} with independent columns and satisfying concentration of measure hypotheses and a parameter zz whose distance to the spectrum of 1nXXT\frac{1}{n} XX^T should not depend on p,np,n, it was previously shown that the functionals tr(AR(z))\text{tr}(AR(z)), for R(z)=(1nXXTzIp)1R(z) = (\frac{1}{n}XX^T- zI_p)^{-1} and AMpA\in \mathcal M_{p} deterministic, have a standard deviation of order O(A/n)O(\|A\|_* / \sqrt n). Here, we show that E[R(z)]R~(z)FO(1/n)\|\mathbb E[R(z)] - \tilde R(z)\|_F \leq O(1/\sqrt n), where R~(z)\tilde R(z) is a deterministic matrix depending only on zz and on the means and covariances of the column vectors x1,,xnx_1,\ldots, x_n (that do not have to be identically distributed). This estimation is key to providing accurate fluctuation rates of functionals of XX of interest (mostly related to its spectral properties) and is proved thanks to the introduction of a semi-metric dsd_s defined on the set Dn(H)\mathcal D_n(\mathbb H) of diagonal matrices with complex entries and positive imaginary part and satisfying, for all D,DDn(H)D,D' \in \mathcal D_n(\mathbb H): ds(D,D)=maxi[n]DiDi/((Di)(Di))1/2d_s(D,D') = \max_{i\in[n]} |D_i - D_i'|/ (\Im(D_i) \Im(D_i'))^{1/2}. Possibly most importantly, the underlying concentration of measure assumption on the columns of XX finds an extremely natural ground for application in modern statistical machine learning algorithms where non-linear Lipschitz mappings and high number of classes form the base ingredients.

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