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1A NON-UNIFORMLY SAMPLED MARKOV RANDOM FIELD MODEL FOR MAP RECONSTRUCTION OF MAGNETOENCEPHALOGRAM IMAGES * Alan H. Gardinert and Brian D. Jeffst t Lockheed Martin Federal Systems $ Department of Electrical and Computer En

A NON-UNIFORMLY SAMPLED MARKOV RANDOM FIELD MODEL FOR MAP RECONSTRUCTION OF MAGNETOENCEPHALOGRAM IMAGES * Alan H. Gardinert and Brian D. Jeffst t Lockheed Martin Federal Systems $ Department of Electrical and Computer En

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Source URL: www.et.byu.edu

- Date: 2009-10-14 12:22:26
    2Shape Parameter Estimation for Generalized Gaussian Markov Random Field Models used in MAP Image Wai Ho Pun and Brian D. Jeffs Department of Electrical and Computer Engineering, Brigham Young University 459 CB, Provo, UT

    Shape Parameter Estimation for Generalized Gaussian Markov Random Field Models used in MAP Image Wai Ho Pun and Brian D. Jeffs Department of Electrical and Computer Engineering, Brigham Young University 459 CB, Provo, UT

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    Source URL: www.et.byu.edu

    - Date: 2009-10-14 12:22:27
      3MARKOV RANDOM FIELD IMAGE PRIOR MODELS FOR MAP RECONSTRUCTION OF MAGNETOENCEPHALOGRAM IMAGES B r i a n D. Jeffst a n d A l a n H. Gardiner$ Young University, 459 CB, Provo, U T 84602, email  $ Lockheed M

      MARKOV RANDOM FIELD IMAGE PRIOR MODELS FOR MAP RECONSTRUCTION OF MAGNETOENCEPHALOGRAM IMAGES B r i a n D. Jeffst a n d A l a n H. Gardiner$ Young University, 459 CB, Provo, U T 84602, email $ Lockheed M

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      Source URL: www.et.byu.edu

      - Date: 2009-10-14 12:22:28
        4Perturb-and-MAP Random Fields - Using Discrete Optimization to Learn and Sample from Energy Models

        Perturb-and-MAP Random Fields - Using Discrete Optimization to Learn and Sample from Energy Models

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        Source URL: www.stat.ucla.edu

        - Date: 2011-11-08 00:20:32
          5Rounding Guarantees for Message-Passing MAP Inference with Logical Dependencies Stephen H. Bach Computer Science Dept. University of Maryland

          Rounding Guarantees for Message-Passing MAP Inference with Logical Dependencies Stephen H. Bach Computer Science Dept. University of Maryland

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          Source URL: stephenbach.net

          Language: English - Date: 2014-12-17 17:02:10
          6Journal of Machine Learning Research1094  Submitted 12/06; Revised 5/08; Published 5/09 An Algorithm for Reading Dependencies from the Minimal Undirected Independence Map of a Graphoid that Satisfies Weak

          Journal of Machine Learning Research1094 Submitted 12/06; Revised 5/08; Published 5/09 An Algorithm for Reading Dependencies from the Minimal Undirected Independence Map of a Graphoid that Satisfies Weak

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          Source URL: www.jmlr.org

          Language: English - Date: 2009-05-03 20:39:39
          7Rounding Guarantees for Message-Passing MAP Inference with Logical Dependencies I  S

          Rounding Guarantees for Message-Passing MAP Inference with Logical Dependencies I S

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          Source URL: stephenbach.net

          Language: English - Date: 2014-12-17 16:58:03
          8PSMAGE: Balanced Map Generation for StarCraft Alberto Uriarte Santiago Onta˜no´ n  Drexel University

          PSMAGE: Balanced Map Generation for StarCraft Alberto Uriarte Santiago Onta˜no´ n Drexel University

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          Source URL: eldar.mathstat.uoguelph.ca

          Language: English - Date: 2016-07-12 12:05:04
          9Microsoft Word - Random Plots Workbook - Pre Stratification.doc

          Microsoft Word - Random Plots Workbook - Pre Stratification.doc

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          Source URL: www.itreetools.org

          Language: English - Date: 2009-06-15 00:37:00
          10Perturb-and-MAP Random Fields: Using Discrete Optimization to Learn and Sample from Energy Models – ICCV 2011 paper supplementary material – George Papandreou and Alan Yuille Department of Statistics, University of C

          Perturb-and-MAP Random Fields: Using Discrete Optimization to Learn and Sample from Energy Models – ICCV 2011 paper supplementary material – George Papandreou and Alan Yuille Department of Statistics, University of C

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          Source URL: www.stat.ucla.edu

          Language: English - Date: 2011-10-20 23:22:53