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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- 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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- Junction tree algorithm?oldid=1068870476&ns=0
- WikiPageLength
- 10669
- Wikipage page ID
- 4855682
- Wikipage revision ID
- 1068870476
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