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Date: 2011-05-21 11:48:52Computational statistics Stochastic optimization Statistical mechanics Estimation theory Markov chain Monte Carlo Langevin dynamics Stochastic approximation Metropolis–Hastings algorithm Mixture model Statistics Probability and statistics Monte Carlo methods | Bayesian Learning via Stochastic Gradient Langevin DynamicsAdd to Reading ListSource URL: www.ics.uci.eduDownload Document from Source WebsiteFile Size: 284,43 KBShare Document on Facebook |
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