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Computational 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
Date: 2011-05-21 11:48:52
Computational 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 Dynamics

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