On the smoothed analysis of the smallest singular value with discrete noise (2009.01699v1)
Abstract: Let $A$ be an $n\times n$ real matrix, and let $M$ be an $n\times n$ random matrix whose entries are i.i.d sub-Gaussian random variables with mean $0$ and variance $1$. We make two contributions to the study of $s_n(A+M)$, the smallest singular value of $A+M$. (1) We show that for all $\epsilon \geq 0$, $$\mathbb{P}[s_n(A + M) \leq \epsilon] = O(\epsilon \sqrt{n}) + 2e{-\Omega(n)},$$ provided only that $A$ has $\Omega (n)$ singular values which are $O(\sqrt{n})$. This extends a well-known result of Rudelson and Vershynin, which requires all singular values of $A$ to be $O(\sqrt{n})$. (2) We show that any bound of the form $$\sup_{|{A}|\leq n{C_1}}\mathbb{P}[s_n(A+M)\leq n{-C_3}] \leq n{-C_2}$$ must have $C_3 = \Omega (C_1 \sqrt{C_2})$. This complements a result of Tao and Vu, who proved such a bound with $C_3 = O(C_1C_2 + C_1 + 1)$, and counters their speculation of possibly taking $C_3 = O(C_1 + C_2)$.