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MCMC with Strings and Branes: The Suburban Algorithm

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arxiv 1605.06122 v1 pith:AC4ZWEEE submitted 2016-05-19 stat.CO cond-mat.dis-nnhep-thphysics.comp-ph

MCMC with Strings and Branes: The Suburban Algorithm

classification stat.CO cond-mat.dis-nnhep-thphysics.comp-ph
keywords performancesuburbanabovealgorithmaveragebranesmcmcnumber
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Motivated by the physics of strings and branes, we introduce a general suite of Markov chain Monte Carlo (MCMC) "suburban samplers" (i.e., spread out Metropolis). The suburban algorithm involves an ensemble of statistical agents connected together by a random network. Performance of the collective in reaching a fast and accurate inference depends primarily on the average number of nearest neighbor connections. Increasing the average number of neighbors above zero initially leads to an increase in performance, though there is a critical connectivity with effective dimension d_eff ~ 1, above which "groupthink" takes over, and the performance of the sampler declines.

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