Limiting spectral distribution of a new random matrix model with dependence across rows and columns

Abstract

We introduce a random matrix model where the entries are dependent across both rows and columns. More precisely, we investigate matrices of the form =(X(i-1)n+t)it∈p× n derived from a linear process Xt=Σj cj Zt-j, where the \Zt\ are independent random variables with bounded fourth moments. We show that, when both p and n tend to infinity such that the ratio p/n converges to a finite positive limit y, the empirical spectral distribution of p-1 converges almost surely to a deterministic measure. This limiting measure, which depends on y and the spectral density of the linear process Xt, is characterized by an integral equation for its Stieltjes transform. The matrix p-1 can be interpreted as an approximation to the sample covariance matrix of a high-dimensional process whose components are independent copies of Xt.

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