Title :
Improving Bayesian Network Structure Learning with Mutual Information-Based Node Ordering in the K2 Algorithm
Author :
Chen, Xue-wen ; Anantha, Gopalakrishna ; Lin, Xiaotong
Author_Institution :
Univ. of Kansas, Lawrence
fDate :
5/1/2008 12:00:00 AM
Abstract :
Structure learning of Bayesian networks is a well-researched but computationally hard task. We present an algorithm that integrates an information-theory-based approach and a scoring-function-based approach for learning structures of Bayesian networks. Our algorithm also makes use of basic Bayesian network concepts like d-separation and condition independence. We show that the proposed algorithm is capable of handling networks with a large number of variables. We present the applicability of the proposed algorithm on four standard network data sets and also compare its performance and computational efficiency with other standard structure-learning methods. The experimental results show that our method can efficiently and accurately identify complex network structures from data.
Keywords :
belief networks; computational complexity; information theory; learning (artificial intelligence); search problems; Bayesian network structure learning; K2 algorithm; condition independence; d-separation; directed graph; information-theory-based approach; mutual information-based node ordering; scoring-function-based approach; search method; Machine learning; classification; data mining;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2007.190732