Spectral gap for random-to-random shuffling on linear extensions

Abstract

In this paper, we propose a new Markov chain which generalizes random-to-random shuffling on permutations to random-to-random shuffling on linear extensions of a finite poset of size n. We conjecture that the second largest eigenvalue of the transition matrix is bounded above by (1+1/n)(1-2/n) with equality when the poset is disconnected. This Markov chain provides a way to sample the linear extensions of the poset with a relaxation time bounded above by n2/(n+2) and a mixing time of O(n2 n). We conjecture that the mixing time is in fact O(n n) as for the usual random-to-random shuffling.

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