Scalar and Matrix Chernoff Bounds from ∞-Independence

Abstract

We present new scalar and matrix Chernoff-style concentration bounds for a broad class of probability distributions over the binary hypercube \0,1\n. Motivated by recent tools developed for the study of mixing times of Markov chains on discrete distributions, we say that a distribution is ∞-independent when the infinity norm of its influence matrix I is bounded by a constant. We show that any distribution which is ∞-independent satisfies a matrix Chernoff bound that matches the matrix Chernoff bound for independent random variables due to Tropp. Our matrix Chernoff bound is a broad generalization and strengthening of the matrix Chernoff bound of Kyng and Song (FOCS'18). Using our bound, we can conclude as a corollary that a union of O(|V|) random spanning trees gives a spectral graph sparsifier of a graph with |V| vertices with high probability, matching results for independent edge sampling, and matching lower bounds from Kyng and Song.

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