Difference between revisions of "Belief Propagation"

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This is a [[Category::method]] proposed in [[RelatedPaper::Judea Pearl, 1982: Reverend Bayes on inference engines: A distributed hierarchical approach, AAAI 1982]].
 
This is a [[Category::method]] proposed in [[RelatedPaper::Judea Pearl, 1982: Reverend Bayes on inference engines: A distributed hierarchical approach, AAAI 1982]].
  
Belief Propagation is a message passing inference method for statistical graphical models (e.g. Markov random fields), especially when the graphical model is both a factor graph and a tree (it can compute exact marginals). The basic idea of belief propagation is to compute the marginal distribution of unobserved nodes, based on the conditional distribution of observed nodes.
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Belief Propagation is a message passing inference method for statistical graphical models (e.g. Markov random fields). The basic idea is to compute the marginal distribution of unobserved nodes, based on the conditional distribution of observed nodes. A simple and intuitive case is when the graphical model is both a factor graph and a tree, then it will can compute the exact marginals.
  
 
== Definition ==
 
== Definition ==
  
 
== Inference ==
 
== Inference ==

Revision as of 17:19, 26 September 2011

This is a method proposed in Judea Pearl, 1982: Reverend Bayes on inference engines: A distributed hierarchical approach, AAAI 1982.

Belief Propagation is a message passing inference method for statistical graphical models (e.g. Markov random fields). The basic idea is to compute the marginal distribution of unobserved nodes, based on the conditional distribution of observed nodes. A simple and intuitive case is when the graphical model is both a factor graph and a tree, then it will can compute the exact marginals.

Definition

Inference