Abstract :
Let n be a large integer and Mn be an n by n complex matrix whose entries are independent (but not
necessarily identically distributed) discrete random variables. The main goal of this paper is to prove a general
upper bound for the probability that Mn is singular. For a constant 0< p <1 and a constant positive
integer r, we will define a property p-bounded of exponent r. Our main result shows that if the entries ofMn
satisfy this property, then the probability that Mn is singular is at most (p1/r + o(1))n. All of the results
in this paper hold for any characteristic zero integral domain replacing the complex numbers. In the special
case where the entries of Mn are “fair coin flips” (taking the values +1,−1 each with probability 1/2),
our general bound implies that the probability that Mn is singular is at most ( 1 √2 + o(1))n, improving on
the previous best upper bound of (34
+ o(1))n, proved by Tao and Vu [Terence Tao, Van Vu, On the singularity
probability of random Bernoulli matrices, J. Amer. Math. Soc. 20 (2007) 603–628]. In the special
case where the entries of Mn are “lazy coin flips” (taking values +1,−1 each with probability 1/4 and
value 0 with probability 1/2), our general bound implies that the probability that Mn is singular is at most
(12
+ o(1))n, which is asymptotically sharp. Our method is a refinement of those from [Jeff Kahn, János
Komlós, Endre Szemerédi, On the probability that a random ±1-matrix is singular, J. Amer. Math. Soc.
8 (1) (1995) 223–240; Terence Tao, Van Vu, On the singularity probability of random Bernoulli matrices,
J. Amer. Math. Soc. 20 (2007) 603–628]. In particular, we make a critical use of the structure theorem from
[Terence Tao, Van Vu, On the singularity probability of random Bernoulli matrices, J. Amer. Math. Soc. 20
(2007) 603–628], which was obtained using tools from additive combinatorics.
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