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Article type: Research Article
Authors: Kłopotek, Mieczysław Alojzy
Affiliations: Institute of Computer Science, Polish Academy of Sciences, ul. Ordona 21, 01-237 Warszawa, Poland
Abstract: Bayesian networks have many practical applications due to their capability to represent joint probability distribution in many variables in a compact way. There exist efficient reasoning methods for Bayesian networks. Many algorithms for learning Bayesian networks from empirical data have been developed. A well-known problem with Bayesian networks is the practical limitation for the number of variables for which a Bayesian network can be learned in reasonable time. A remarkable exception here is the Chow/Liu algorithm for learning tree-like Bayesian networks. However, its quadratic time and space complexity in the number of variables may prove also prohibitive for high dimensional data. The paper presents a novel algorithm overcoming this limitation for the tree-like class of Bayesian networks. The new algorithm space consumption grows linearly with the number of variables n while the execution time is proportional to n·ln(n), hence both are better than those of Chow/Liu algorithm. This opens new perspectives in construction of Bayesian networks from data containing tens of thousands and more variables, e.g. in automatic text categorization.
Keywords: machine learning, Bayesian networks, time and space complexity
Journal: Fundamenta Informaticae, vol. 49, no. 4, pp. 349-367, 2002
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