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The hit-and-run version of top-to-random (2009.04977v2)

Published 10 Sep 2020 in math.PR

Abstract: We study an example of a {\em hit-and-run} random walk on the symmetric group $\mathbf S_n$. Our starting point is the well understood {\em top-to-random} shuffle. In the hit-and-run version, at each {\em single step}, after picking the point of insertion, $j$, uniformly at random in ${1,\dots,n}$, the top card is inserted in the $j$-th position $k$ times in a row where $k$ is uniform in ${0,1,\dots,j-1}$. The question is, does this accelerate mixing significantly or not? We show that, in $L2$ and sup-norm, this accelerates mixing at most by a constant factor (independent of $n$). Analyzing this problem in total variation is an interesting open question.

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