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THIS IS A DRAFT VERSION. FINAL VERSION TO BE PUBLISHED AT NIPS ’06 Structure Learning in Markov Random Fields Sridevi Parise Bren School of Information and Computer Science
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Document Date: 2006-09-04 17:32:02


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San Francisco / Pittsburgh / /

Company

Oxford University Press / BP / using BP / /

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IndustryTerm

Linear response algorithms / generalized belief propagation algorithms / linear chain / free energy / free energy approximations / Tree-reweighted belief propagation algorithms / free energy w.r.t. / linear response algorithm / local propagation algorithm / bayesian networks / /

Organization

MAP BP / American Statistical Association / Markov Random Fields Sridevi Parise Bren School of Information / Max Welling Bren School of Information / Oxford University / /

Person

Max Welling / /

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Position

λMP / MP / representative / general / but inefficient / D.J. / /

ProgrammingLanguage

ML / /

ProvinceOrState

Pennsylvania / California / /

PublishedMedium

Machine Learning / Journal of the American Statistical Association / /

Technology

artificial intelligence / Linear response algorithms / Tree-reweighted belief propagation algorithms / approximate MCMC algorithms / local propagation algorithm / linear response algorithm / variational bayesian EM algorithm / machine learning / generalized belief propagation algorithms / two algorithms / /

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http /

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