Self-switching random walks on Erd\"os-R\'enyi random graphs feel the phase transition

Abstract

We study random walks on Erd\"os-R\'enyi random graphs in which, every time the random walk returns to the starting point, first an edge probability is independently sampled according to a priori measure μ, and then an Erd\"os-R\'enyi random graph is sampled according to that edge probability. When the edge probability p does not depend on the size of the graph n (dense case), we show that the proportion of time the random walk spends on different values of p -- occupation measure -- converges to the a priori measure μ as n goes to infinity. More interestingly, when p=λ/n (sparse case), we show that the occupation measure converges to a limiting measure with a density that is a function of the survival probability of a Poisson branching process. This limiting measure is supported on the supercritial values for the Erd\"os-R\'enyi random graphs, showing that self-witching random walks can detect the phase transition.

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