Random Matrices: The circular Law
Abstract
Let be a complex random variable with mean zero and bounded variance . Let be a random matrix of order with entries being i.i.d. copies of . Let be the eigenvalues of . Define the empirical spectral distribution of by the formula \mu_n(s,t) := \frac{1}{n} # \{k \leq n| \Re(\lambda_k) \leq s; \Im(\lambda_k) \leq t \}. The Circular law conjecture asserts that converges to the uniform distribution over the unit disk as tends to infinity. We prove this conjecture under the slightly stronger assumption that the -moment of is bounded, for any . Our method builds and improves upon earlier work of Girko, Bai, G\"otze-Tikhomirov, and Pan-Zhou, and also applies for sparse random matrices. The new key ingredient in the paper is a general result about the least singular value of random matrices, which was obtained using tools and ideas from additive combinatorics.
Cite
@article{arxiv.0708.2895,
title = {Random Matrices: The circular Law},
author = {Terence Tao and Van Vu},
journal= {arXiv preprint arXiv:0708.2895},
year = {2008}
}
Comments
46 pages, no figures, submitted. More minor corrections