MCMC

Results: 235



#Item
21

Austerity in MCMC Land: Cutting the Metropolis-Hastings Budget Anoop Korattikara School of Information & Computer Sciences, University of California, Irvine, CA 92617, USA Yutian Chen Department of Engineering, Universit

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Source URL: www.cantab.net

Language: English - Date: 2016-03-21 20:02:22
    22

    Scalable Probabilistic Databases with Factor Graphs and MCMC Michael Wick Andrew McCallum

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    Source URL: people.cs.umass.edu

    Language: English - Date: 2010-07-12 01:24:29
      23

      FEM-Based Discretization-Invariant MCMC Methods for PDE-constrained Bayesian Inverse Problems Tan Bui-Thanh Department of Aerospace Engineering and Engineering Mechanics Institute for Computational Engineering & Sciences

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      Source URL: users.ices.utexas.edu

      Language: English - Date: 2015-07-01 01:52:36
        24

        Penn State Astrostatistics MCMC tutorial Murali Haran, Penn State Dept. of Statistics A Bayesian change point model Consider the following hierarchical changepoint model for the number of occurrences Yi of some event dur

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        Source URL: sites.stat.psu.edu

        Language: English - Date: 2006-06-09 18:24:39
          25

          Short History of Generalized Ensembles in MCMC Simulations. Bernd A. Berg Florida State University PTCP 2015 Coventry, April 6–8, 2016

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          Source URL: ptcp16.complexity-coventry.org

          Language: English - Date: 2016-05-05 06:42:14
            26

            ACCELERATING MCMC WITH ACTIVE SUBSPACES arXiv:1510.00024v1 [math.NA] 30 Sep 2015 PAUL G. CONSTANTINE∗ , CARSON KENT† , AND TAN BUI-THANH‡ Abstract. The Markov chain Monte Carlo (MCMC) method is the computational w

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            Source URL: users.ices.utexas.edu

            Language: English - Date: 2016-02-13 10:28:09
              27

              Penn State Astrostatistics MCMC tutorial Murali Haran, Penn State Dept. of Statistics Bayesian change point model with Gamma hyperpriors: full conditionals Our goal is to draw samples from the 5-dimensional posterior dis

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              Source URL: sites.stat.psu.edu

              Language: English - Date: 2005-06-15 11:31:25
                28

                Hierarchical Bayesian Modeling with Ensemble MCMC

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                Source URL: astrostatistics.psu.edu

                Language: English - Date: 2014-06-11 04:54:40
                  29

                  Monte Carlo MCMC: Efficient Inference by Sampling Factors Sameer Singh University of Massachusetts 140 Governors Drive Amherst MA 01003

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                  Source URL: people.cs.umass.edu

                  Language: English - Date: 2012-05-10 09:32:30
                    30

                    Penn State Astrostatistics MCMC tutorial Murali Haran, Penn State Dept. of Statistics Bayesian change point model with Gamma hyperpriors Consider the following hierarchical changepoint model for the number of occurrences

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                    Source URL: sites.stat.psu.edu

                    Language: English - Date: 2005-06-15 11:28:31
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