Junction tree algorithm

Junction tree algorithm

The junction tree algorithm (also known as 'Clique Tree') is a method used in machine learning to extract marginalization in general graphs. In essence, it entails performing belief propagation on a modified graph called a junction tree. The graph is called a tree because it branches into different sections of data; nodes of variables are the branches. The basic premise is to eliminate cycles by clustering them into single nodes. Multiple extensive classes of queries can be compiled at the same time into larger structures of data. There are different algorithms to meet specific needs and for what needs to be calculated. Inference algorithms gather new developments in the data and calculate it based on the new information provided.

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enThe junction tree algorithm (also known as 'Clique Tree') is a method used in machine learning to extract marginalization in general graphs. In essence, it entails performing belief propagation on a modified graph called a junction tree. The graph is called a tree because it branches into different sections of data; nodes of variables are the branches. The basic premise is to eliminate cycles by clustering them into single nodes. Multiple extensive classes of queries can be compiled at the same time into larger structures of data. There are different algorithms to meet specific needs and for what needs to be calculated. Inference algorithms gather new developments in the data and calculate it based on the new information provided.
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Chordal-graph.svg
Cutset-4.svg
Hmm temporal bayesian net.svg
Junction-tree-example.gif
Has abstract
enThe junction tree algorithm (also known as 'Clique Tree') is a method used in machine learning to extract marginalization in general graphs. In essence, it entails performing belief propagation on a modified graph called a junction tree. The graph is called a tree because it branches into different sections of data; nodes of variables are the branches. The basic premise is to eliminate cycles by clustering them into single nodes. Multiple extensive classes of queries can be compiled at the same time into larger structures of data. There are different algorithms to meet specific needs and for what needs to be calculated. Inference algorithms gather new developments in the data and calculate it based on the new information provided.
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Junction tree algorithm
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enJunction tree algorithm
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arxiv.org/ftp/arxiv/papers/1301/1301.7394.pdf
citeseer.ist.psu.edu/huang94inference.html
ai.stanford.edu/~paskin/gm-short-course/lec3.pdf
web.archive.org/web/20150319085443/https:/ai.stanford.edu/~paskin/gm-short-course/lec3.pdf
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Algorithm
Approximate inference
Autoencoder
Bayesian networks
Belief functions
Belief propagation
Category:Bayesian networks
Category:Graph algorithms
Chordal graph
Clique graph
Computation
Cutset
Cycle (graph theory)
Exact solutions
File:Chordal-graph.svg
File:Cutset-4.svg
File:Hmm temporal bayesian net.svg
File:Junction-tree-example.gif
Graph (discrete mathematics)
Inference network
Joint distributions
Junction tree
Kruskal's algorithm
Loopy belief propagation
Machine learning
Marginal distribution
Message passing in computer clusters
Moral graph
Random variable
Separatrix (mathematics)
Sum-product algorithm
Supernode (circuit)
Treewidth
Triangulation (geometry)
Undirected
Variable elimination
Vertex (graph theory)
SameAs
2fK1j
Algorithme de l'arbre de jonction
Junction tree algorithm
m.011q1lrj
Q2859761
Алгоритм для дерева сочленений
Subject
Category:Bayesian networks
Category:Graph algorithms
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