Quantitative invertibility of random matrices: a combinatorial perspective
Vishesh Jain

TL;DR
This paper provides improved probabilistic bounds on the invertibility of certain large random matrices, extending previous results to matrices with exponentially large operator norms using a combinatorial approach.
Contribution
It extends invertibility bounds to matrices with exponentially large norms and refines probability estimates without relying on inverse Littlewood--Offord theorems or net constructions.
Findings
Probability that the matrix is singular is exponentially small.
Handles matrices with operator norm up to exp(n^c).
Improves bounds over previous polynomial norm restrictions.
Abstract
We study the lower tail behavior of the least singular value of an random matrix , where is a fixed complex matrix with operator norm at most and is a random matrix, each of whose entries is an independent copy of a complex random variable with mean and variance . Motivated by applications, our focus is on obtaining bounds which hold with extremely high probability, rather than on the least singular value of a typical such matrix. This setting has previously been considered in a series of influential works by Tao and Vu, most notably in connection with the strong circular law, and the smoothed analysis of the condition number, and our results improve upon theirs in two ways: (i) We are able to handle , whereas the results of Tao and Vu are applicable only for . (ii) Even for $M…
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Taxonomy
TopicsRandom Matrices and Applications · Advanced Combinatorial Mathematics · Advanced Algebra and Geometry
