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arxiv: cond-mat/9411081 · v3 · submitted 1994-11-18 · ❄️ cond-mat · adap-org· comp-gas· hep-lat· nlin.AO· nlin.CG

Monte Carlo with Absorbing Markov Chains: Fast Local Algorithms for Slow Dynamics

classification ❄️ cond-mat adap-orgcomp-gashep-latnlin.AOnlin.CG
keywords algorithmscarlomonteabsorbingappliedchainsfoldmarkov
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A class of Monte Carlo algorithms which incorporate absorbing Markov chains is presented. In a particular limit, the lowest-order of these algorithms reduces to the $n$-fold way algorithm. These algorithms are applied to study the escape from the metastable state in the two-dimensional square-lattice nearest-neighbor Ising ferromagnet in an unfavorable applied field, and the agreement with theoretical predictions is very good. It is demonstrated that the higher-order algorithms can be many orders of magnitude faster than either the traditional Monte Carlo or $n$-fold way algorithms.

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