English

Random matrices: Universality of ESDs and the circular law

Probability 2009-04-24 v5

Abstract

Given an n×nn \times n complex matrix AA, let μA(x,y):=1n{1in,λix,λiy}\mu_{A}(x,y):= \frac{1}{n} |\{1\le i \le n, \Re \lambda_i \le x, \Im \lambda_i \le y\}| be the empirical spectral distribution (ESD) of its eigenvalues λi\BBC,i=1,...n\lambda_i \in \BBC, i=1, ... n. We consider the limiting distribution (both in probability and in the almost sure convergence sense) of the normalized ESD μ1nAn\mu_{\frac{1}{\sqrt{n}} A_n} of a random matrix An=(aij)1i,jnA_n = (a_{ij})_{1 \leq i,j \leq n} where the random variables aij\E(aij)a_{ij} - \E(a_{ij}) are iid copies of a fixed random variable xx with unit variance. We prove a \emph{universality principle} for such ensembles, namely that the limit distribution in question is {\it independent} of the actual choice of xx. In particular, in order to compute this distribution, one can assume that xx is real of complex gaussian. As a related result, we show how laws for this ESD follow from laws for the \emph{singular} value distribution of 1nAnzI\frac{1}{\sqrt{n}} A_n - zI for complex zz. As a corollary we establish the Circular Law conjecture (in both strong and weak forms), that asserts that μ1nAn\mu_{\frac{1}{\sqrt{n}} A_n} converges to the uniform measure on the unit disk when the aija_{ij} have zero mean.

Keywords

Cite

@article{arxiv.0807.4898,
  title  = {Random matrices: Universality of ESDs and the circular law},
  author = {Terence Tao and Van Vu and Manjunath Krishnapur},
  journal= {arXiv preprint arXiv:0807.4898},
  year   = {2009}
}

Comments

45 pages, 8 figures, submitted, Acta Math. The main article is by Tao and Vu, the appendix is by Krishnapur, and the figures are by Phillip Wood. A simplified proof of the replacement principle added; some other corrections

R2 v1 2026-06-21T11:06:00.695Z