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2007
IEEE

Learning Undirected Possibilistic Networks with Conditional Independence Tests

13 years 10 months ago
Learning Undirected Possibilistic Networks with Conditional Independence Tests
—Approaches based on conditional independence tests are among the most popular methods for learning graphical models from data. Due to the predominance of Bayesian networks in the field, they are usually developed for directed graphs. For possibilistic networks of a certain kind, however, undirected graphs are a more natural basis and thus algorithms for learning undirected graphs are desirable in this area. In this paper I present an algorithm for learning undirected graphical models, which is derived from the well-known Cheng–Bell–Liu algorithm. Its main advantage is the lower number of conditional independence tests that are needed, while it achieves results of comparable quality.
Christian Borgelt
Added 02 Jun 2010
Updated 02 Jun 2010
Type Conference
Year 2007
Where FUZZIEEE
Authors Christian Borgelt
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