Title :
Learning bayesian network by genetic algorithm using structure-parameter restrictions
Author :
Chongyang Zhang ; Ming Cao ; Biao Peng ; Shibao Zheng
Author_Institution :
Shanghai Key Lab. of Digital Media Process. & Transmissions, Shanghai Jiao Tong Univ., Shanghai, China
Abstract :
In this paper, a novel Bayesian Network (BN) learning method is proposed, in which Genetic Algorithm (GA)and structure-parameter restrictions are combined to optimize the BN´s structure and parameters simultaneously. We firstlytransferred the domain knowledge into structure and parameter restrictions, which can be considered `hard´ restrictions in the sense that they are assumed to be true forthe BN representing the domain of knowledge. In order to use these restrictions in conjunction with Genetic Algorithm for learning Bayesian networks, gene restrictions table is designed to kick out the unsatisfied candidate genes, so that more accurate results and less convergence times can be achieved. Experiments show that the proposed algorithm can contribute to the global optimum of the system, and can improve the value of the evaluation function more than 15% while keeping the same detection rate.
Keywords :
belief networks; genetic algorithms; learning (artificial intelligence); BN learning method; BN representation; GA; gene restrictions table; genetic algorithm; learning Bayesian network; same detection rate; structure parameter restrictions; Bayes methods; Convergence; Genetic algorithms; Knowledge engineering; Learning systems; Optimization; Signal processing algorithms; Bayesian Networks; Genetic Algorithm; domain knowledge; restrictions;
Conference_Titel :
Multimedia and Expo Workshops (ICMEW), 2013 IEEE International Conference on
Conference_Location :
San Jose, CA
DOI :
10.1109/ICMEW.2013.6618334