Abstract:
For sample covariance matrices associated with random vectors having
graph dependent entries and a number of dimensions growing with
the sample size, we derive sharp conditions for the limiting spectrum of the
matrices to have the same form as in the case of Gaussian data with similar
covariance structure. Our results are tight. In particular, they give necessary
and sufficient conditions for the Marchenko–Pastur theorem for sample
covariance matrices associated with random vectors having $m$-dependent
orthonormal elements when $m=o(n)$.
Keywords:random matrices, covariance matrices, the Marchenko–Pastur law.