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arxiv: 1302.3566 · v1 · pith:PCYQYGQQnew · submitted 2013-02-13 · 💻 cs.AI · cs.LG· stat.ML

Learning Equivalence Classes of Bayesian Networks Structures

classification 💻 cs.AI cs.LGstat.ML
keywords searchbayesianequivalencespacestructuresclassesheuristicnetworks
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Approaches to learning Bayesian networks from data typically combine a scoring function with a heuristic search procedure. Given a Bayesian network structure, many of the scoring functions derived in the literature return a score for the entire equivalence class to which the structure belongs. When using such a scoring function, it is appropriate for the heuristic search algorithm to search over equivalence classes of Bayesian networks as opposed to individual structures. We present the general formulation of a search space for which the states of the search correspond to equivalence classes of structures. Using this space, any one of a number of heuristic search algorithms can easily be applied. We compare greedy search performance in the proposed search space to greedy search performance in a search space for which the states correspond to individual Bayesian network structures.

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