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Tail bounds for gaps between eigenvalues of sparse random matrices (1901.05948v3)
Published 17 Jan 2019 in math.PR
Abstract: We prove the first eigenvalue repulsion bound for sparse random matrices. As a consequence, we show that these matrices have simple spectrum, improving the range of sparsity and error probability from the work of the second author and Vu. As an application of our tail bounds, we show that for sparse Erd\H{o}s--R\'enyi graphs, weak and strong nodal domains are the same, answering a question of Dekel, Lee, and Linial.
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