DocumentCode :
470041
Title :
A novel Bayesian Network structure learning algorithm based on minimal correlated itemset mining techniques
Author :
Kebaili, Zahra ; Aussem, Alexandre
Author_Institution :
LIESP, Univ. Lyon 1, Villeurbanne
Volume :
1
fYear :
2007
fDate :
28-31 Oct. 2007
Firstpage :
121
Lastpage :
126
Abstract :
In this paper, we propose a new constraint-based method for Bayesian network structure learning based on correlated itemset mining techniques. The aim of this method is to identify and to represent conjunctions of Boolean factors implied in probabilistic dependence relationships, that may be ignored by constraint and scoring-based learning proposals when the pairwise dependencies are weak (e.g., noisy- XOR). The method is also able to identify some specific (almost) deterministic relationships in the data that cause the violation of the faithfulness assumption on which are based most constraint-based methods. The algorithm operates in two steps: (1) extraction of minimal supported and correlated itemsets, and (2), construction of the structure by extracting the most significant association rules in these itemsets. The method is illustrated on a simple but realistic benchmark plaguing the standard scoring and constraint- based algorithms.
Keywords :
Boolean functions; belief networks; data mining; learning (artificial intelligence); Bayesian network; Boolean factors; association rules; constraint-based method; deterministic relationships; minimal correlated itemset mining; probabilistic dependence relationships; scoring-based learning; structure learning algorithm; Association rules; Bayesian methods; Data mining; Itemsets; Lattices; Parameter estimation; Probability distribution; Proposals; Statistics; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Digital Information Management, 2007. ICDIM '07. 2nd International Conference on
Conference_Location :
Lyon
Print_ISBN :
978-1-4244-1475-8
Electronic_ISBN :
978-1-4244-1476-5
Type :
conf
DOI :
10.1109/ICDIM.2007.4444211
Filename :
4444211
Link To Document :
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