DocumentCode :
2602422
Title :
Bayesian network structure learning using factorized NML universal models
Author :
Roos, Teemu ; Silander, Tomi ; Kontkanen, Petri ; Myllymaki, Petri
Author_Institution :
Complex Syst. Comput. Group, Helsinki&Helsinki Univ. of Technol., Univ., Helsinki
fYear :
2008
fDate :
Jan. 27 2008-Feb. 1 2008
Firstpage :
272
Lastpage :
276
Abstract :
Universal codes/models can be used for data compression and model selection by the minimum description length (MDL) principle. For many interesting model classes, such as Bayesian networks, the minimax regret optimal normalized maximum likelihood (NML) universal model is computationally very demanding. We suggest a computationally feasible alternative to NML for Bayesian networks, the factorized NML universal model, where the normalization is done locally for each variable. This can be seen as an approximate sum-product algorithm. We show that this new universal model performs extremely well in model selection, compared to the existing state-of-the-art, even for small sample sizes.
Keywords :
Bayes methods; belief networks; data compression; maximum likelihood decoding; minimax techniques; Bayesian network structure learning; data compression; factorized NML universal models; minimax regret optimal normalized maximum likelihood universal model; minimum description length principle; model selection; sum-product algorithm; universal codes; Bayesian methods; Computational modeling; Computer networks; Computer science; Context modeling; Data compression; Information technology; Minimax techniques; Stochastic processes; Sum product algorithm;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Theory and Applications Workshop, 2008
Conference_Location :
San Diego, CA
Print_ISBN :
978-1-4244-2670-6
Type :
conf
DOI :
10.1109/ITA.2008.4601061
Filename :
4601061
Link To Document :
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