arXiv:2007.06318 [math.PR]AbstractReferencesReviewsResources
The smallest singular value of random combinatorial matrices
Published 2020-07-13Version 1
Let $Q_n$ be a random $n\times n$ matrix with entries in $\{0,1\}$ whose rows are independent vectors of exactly $n/2$ zero components. We show that the smallest singular value $s_n(Q_n)$ of $Q_n$ satisfies \[ \mathbb{P}\Big\{s_n(Q_n)\le \frac{\varepsilon}{n^{3/2}}\Big\} \le C\varepsilon + 2 e^{-cn}, \quad \varepsilon \ge 0. \] This improves on earlier results of Ferber, Jain, Luh and Samotij, as well as Jain. In particular, for $\varepsilon=0$, we obtain the first exponential bound in dimension for the singularity probability \[ \mathbb{P}\big\{Q_n \,\,\text{is singular}\big\} \le 2 e^{-cn}, \] which is optimal up to the constant $c>0$. To overcome the lack of independence between entries of $Q_n$, we introduce an arithmetic-combinatorial invariant of a pair of vectors, which we call a Combinatorial Least Common Denominator (CLCD). We prove a small ball probability inequality for the combinatorial statistic $\sum_{i=1}^{n}a_iv_{\sigma(i)}$ in terms of the CLCD of the pair $(a,v)$, where $\sigma$ is a uniformly random permutation of $\{1,2,\ldots,n\}$ and $a:=(a_1,\ldots,a_n), v:=(v_1,\ldots,v_n)$ are real vectors. This inequality allows us to derive strong anti-concentration properties for the distance between a fixed row of $Q_n$ and the linear space spanned by the remaining rows, and prove the main result.