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Cutoff for non-negatively curved Markov chains

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arxiv 2102.05597 v2 pith:2HN22543 submitted 2021-02-10 math.PR math.CO

Cutoff for non-negatively curved Markov chains

classification math.PR math.CO
keywords cutoffchainsmarkovabeliancayleyconditionemphparticular
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Discovered in the context of card shuffling by Aldous, Diaconis and Shahshahani, the cutoff phenomenon has since then been established in a variety of Markov chains. However, proving cutoff remains a delicate affair, which requires a detailed knowledge of the chain. Identifying the general mechanisms underlying this phase transition -- without having to pinpoint its precise location -- remains one of the most fundamental open problems in the area of mixing times. In the present paper, we make a step in this direction by establishing cutoff for Markov chains with non-negative curvature, under a suitably refined product condition. The result applies, in particular, to random walks on abelian Cayley expanders satisfying a mild degree condition, hence in particular to \emph{almost all} abelian Cayley graphs. Our proof relies on a quantitative \emph{entropic concentration principle}, which we believe to lie behind all cutoff phenomena.

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