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Nonreversible Markov chain Monte Carlo algorithm for efficient generation of Self-Avoiding Walks (2107.11542v2)

Published 24 Jul 2021 in cond-mat.stat-mech, cs.IT, math.IT, math.PR, and stat.AP

Abstract: We introduce an efficient nonreversible Markov chain Monte Carlo algorithm to generate self-avoiding walks with a variable endpoint. In two dimensions, the new algorithm slightly outperforms the two-move nonreversible Berretti-Sokal algorithm introduced by H.~Hu, X.~Chen, and Y.~Deng in \cite{old}, while for three-dimensional walks, it is 3--5 times faster. The new algorithm introduces nonreversible Markov chains that obey global balance and allows for three types of elementary moves on the existing self-avoiding walk: shorten, extend or alter conformation without changing the walk's length.

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