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arxiv: 1504.02429 · v1 · pith:T2ZFHTEVnew · submitted 2015-04-09 · 🧮 math.PR · math.CO

Cutoff for non-backtracking random walks on sparse random graphs

classification 🧮 math.PR math.CO
keywords cutoffrandomchaingraphsmarkovnon-backtrackingphenomenonwalks
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A finite ergodic Markov chain is said to exhibit cutoff if its distance to stationarity remains close to 1 over a certain number of iterations and then abruptly drops to near 0 on a much shorter time scale. Discovered in the context of card shuffling (Aldous-Diaconis, 1986), this phenomenon is now believed to be rather typical among fast mixing Markov chains. Yet, establishing it rigorously often requires a challengingly detailed understanding of the underlying chain. Here we consider non-backtracking random walks on random graphs with a given degree sequence. Under a general sparsity condition, we establish the cutoff phenomenon, determine its precise window, and prove that the (suitably rescaled) cutoff profile approaches a remarkably simple, universal shape.

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