Bayesian optimization

Results: 127



#Item
91Learning Bayesian Network Structure using LP Relaxations  Tommi Jaakkola MIT CSAIL  David Sontag

Learning Bayesian Network Structure using LP Relaxations Tommi Jaakkola MIT CSAIL David Sontag

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Source URL: jmlr.org

Language: English - Date: 2010-03-31 18:51:07
92STAT 538 Lecture 8 Maximum Entropy Models c 
Marina Meil˘a

STAT 538 Lecture 8 Maximum Entropy Models c Marina Meil˘a

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Source URL: www.stat.washington.edu

Language: English - Date: 2015-02-17 20:52:05
93Perturb-and-MAP Random Fields: Using Discrete Optimization to Learn and Sample from Energy Models George Papandreou1 and Alan L. Yuille1,2 Department of Statistics, University of California, Los Angeles 2 Department of B

Perturb-and-MAP Random Fields: Using Discrete Optimization to Learn and Sample from Energy Models George Papandreou1 and Alan L. Yuille1,2 Department of Statistics, University of California, Los Angeles 2 Department of B

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Source URL: www.stat.ucla.edu

Language: English - Date: 2011-11-01 22:20:35
94Semidefinite relaxations for approximate inference on graphs with cycles Speaker:  Martin Wainwright, EECS, UC Berkeley

Semidefinite relaxations for approximate inference on graphs with cycles Speaker: Martin Wainwright, EECS, UC Berkeley

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Source URL: cba.mit.edu

Language: English - Date: 2011-12-13 18:50:19
95Model Reduction for Dynamic Sensor Steering: A Bayesian Approach to Inverse Problems by Sonja Wogrin Submitted to the School of Engineering

Model Reduction for Dynamic Sensor Steering: A Bayesian Approach to Inverse Problems by Sonja Wogrin Submitted to the School of Engineering

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Source URL: raphael.mit.edu

Language: English - Date: 2008-06-02 09:53:51
96Symbolic Methods for Probabilistic Inference, Optimization, and Decision-making Scott Sanner  With much thanks to research collaborators:

Symbolic Methods for Probabilistic Inference, Optimization, and Decision-making Scott Sanner With much thanks to research collaborators:

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Source URL: users.cecs.anu.edu.au

Language: English - Date: 2013-07-15 00:45:08
97Ocean & Sea Ice SAF  VARIATIONAL AMBIGUITY REMOVAL FOR THE SCATTEROMETER ON-LINE PROCESSING (VARSCAT) WP24310

Ocean & Sea Ice SAF VARIATIONAL AMBIGUITY REMOVAL FOR THE SCATTEROMETER ON-LINE PROCESSING (VARSCAT) WP24310

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Source URL: www.knmi.nl

Language: English - Date: 2007-08-28 08:09:17
98Theory and Practice of Data Assimilation for Oceanography Robert N. Miller College of Oceanic and Atmospheric Sciences Oregon State University Corvallis, OR 97330

Theory and Practice of Data Assimilation for Oceanography Robert N. Miller College of Oceanic and Atmospheric Sciences Oregon State University Corvallis, OR 97330

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Source URL: www.jcsda.noaa.gov

Language: English - Date: 2007-08-10 10:31:43
99AND/OR Cutset Conditioning Robert Mateescu and Rina Dechter School of Information and Computer Science University of California, Irvine, CA 92697 {mateescu, dechter}@ics.uci.edu

AND/OR Cutset Conditioning Robert Mateescu and Rina Dechter School of Information and Computer Science University of California, Irvine, CA 92697 {mateescu, dechter}@ics.uci.edu

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Source URL: www.ijcai.org

Language: English - Date: 2005-07-11 15:53:56
100SJNW840-03-NO00007071.tex

SJNW840-03-NO00007071.tex

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Source URL: www.cse.unsw.edu.au

Language: English - Date: 2006-05-15 20:34:29