Article ID Journal Published Year Pages File Type
1145987 Journal of Multivariate Analysis 2012 16 Pages PDF
Abstract

The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correlation coefficients between the columns of the random matrix, is an important quantity for a wide range of applications including high-dimensional statistics and signal processing. Inspired by these applications, this paper studies the limiting laws of the coherence of n×pn×p random matrices for a full range of the dimension pp with a special focus on the ultra high-dimensional setting. Assuming the columns of the random matrix are independent random vectors with a common spherical distribution, we give a complete characterization of the behavior of the limiting distributions of the coherence. More specifically, the limiting distributions of the coherence are derived separately for three regimes: 1nlogp→0, 1nlogp→β∈(0,∞), and 1nlogp→∞. The results show that the limiting behavior of the coherence differs significantly in different regimes and exhibits interesting phase transition phenomena as the dimension pp grows as a function of nn. Applications to statistics and compressed sensing in the ultra high-dimensional setting are also discussed.

Related Topics
Physical Sciences and Engineering Mathematics Numerical Analysis
Authors
, ,