We consider a class of sparse random matrices of the form An=(ξi,jδi,j)i,j=1n, where {ξi,j} are i.i.d. centered random variables, and {δi,j} are i.i.d. Bernoulli random variables taking value 1 with probability pn, and prove a quantitative estimate on the smallest singular value for pn=Ω(lognn), under a suitable assumption on the spectral norm of the matrices. This establishes the invertibility of a large class of sparse matrices. For pn=Ω(n−α) with some α∈(0,1), we deduce that the condition number of An is of order n with probability tending to one under the optimal moment assumption on {ξi,j}. This in particular, extends a conjecture of von Neumann about the condition number to sparse random matrices with heavy-tailed entries. In the case that the random variables {ξi,j} are i.i.d. sub-Gaussian, we further show that a sparse random matrix is singular with probability at most exp(−cnpn) whenever pn is above the critical threshold pn=Ω(lognn). The results also extend to the case when {ξi,j} have a non-zero mean. We further find quantitative estimates on the smallest singular value of the adjacency matrix of a directed Erdős–Réyni graph whenever its edge connectivity probability is above the critical threshold Ω(lognn).
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CITATION STYLE
Basak, A., & Rudelson, M. (2017). Invertibility of sparse non-Hermitian matrices. Advances in Mathematics, 310, 426–483. https://doi.org/10.1016/j.aim.2017.02.009