A threshold for cutoff in two-community random graphs
Abstract
In this paper, we are interested in the impact of communities on the mixing behavior of the non-backtracking random walk. We consider sequences of sparse random graphs of size N generated according to a variant of the classical configuration model which incorporates a two-community structure. The strength of the bottleneck is measured by a parameter α which roughly corresponds to the fraction of edges that go from one community to the other. We show that if α 1 N, then the non-backtracking random walk exhibits cutoff at the same time as in the one-community case, but with a larger cutoff window, and that the distance profile inside this window converges to the Gaussian tail function. On the other hand, if α 1 N or α 1 N, then the mixing time is of order 1/α and there is no cutoff.
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