Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure Learning

Bayesian network is an important theoretical model in artificial intelligence field and also a powerful tool for processing uncertainty issues. Considering the slow convergence speed of current Bayesian network structure learning algorithms, a fast hybrid learning method is proposed in this paper. W...

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Bibliographic Details
Main Authors: Guangyi Liu, Ou Li, Dalong Zhang, Tao Song
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2014/625173
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spelling doaj-33a6763eef114e19939b027b037721a92020-11-24T23:13:42ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472014-01-01201410.1155/2014/625173625173Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure LearningGuangyi Liu0Ou Li1Dalong Zhang2Tao Song3Zhengzhou Information Science and Technology Institute, Zhengzhou 450000, ChinaZhengzhou Information Science and Technology Institute, Zhengzhou 450000, ChinaZhengzhou Information Science and Technology Institute, Zhengzhou 450000, ChinaZhengzhou Information Science and Technology Institute, Zhengzhou 450000, ChinaBayesian network is an important theoretical model in artificial intelligence field and also a powerful tool for processing uncertainty issues. Considering the slow convergence speed of current Bayesian network structure learning algorithms, a fast hybrid learning method is proposed in this paper. We start with further analysis of information provided by low-order conditional independence testing, and then two methods are given for constructing graph model of network, which is theoretically proved to be upper and lower bounds of the structure space of target network, so that candidate sets are given as a result; after that a search and scoring algorithm is operated based on the candidate sets to find the final structure of the network. Simulation results show that the algorithm proposed in this paper is more efficient than similar algorithms with the same learning precision.http://dx.doi.org/10.1155/2014/625173
collection DOAJ
language English
format Article
sources DOAJ
author Guangyi Liu
Ou Li
Dalong Zhang
Tao Song
spellingShingle Guangyi Liu
Ou Li
Dalong Zhang
Tao Song
Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure Learning
Mathematical Problems in Engineering
author_facet Guangyi Liu
Ou Li
Dalong Zhang
Tao Song
author_sort Guangyi Liu
title Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure Learning
title_short Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure Learning
title_full Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure Learning
title_fullStr Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure Learning
title_full_unstemmed Upper-Lower Bounds Candidate Sets Searching Algorithm for Bayesian Network Structure Learning
title_sort upper-lower bounds candidate sets searching algorithm for bayesian network structure learning
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2014-01-01
description Bayesian network is an important theoretical model in artificial intelligence field and also a powerful tool for processing uncertainty issues. Considering the slow convergence speed of current Bayesian network structure learning algorithms, a fast hybrid learning method is proposed in this paper. We start with further analysis of information provided by low-order conditional independence testing, and then two methods are given for constructing graph model of network, which is theoretically proved to be upper and lower bounds of the structure space of target network, so that candidate sets are given as a result; after that a search and scoring algorithm is operated based on the candidate sets to find the final structure of the network. Simulation results show that the algorithm proposed in this paper is more efficient than similar algorithms with the same learning precision.
url http://dx.doi.org/10.1155/2014/625173
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AT ouli upperlowerboundscandidatesetssearchingalgorithmforbayesiannetworkstructurelearning
AT dalongzhang upperlowerboundscandidatesetssearchingalgorithmforbayesiannetworkstructurelearning
AT taosong upperlowerboundscandidatesetssearchingalgorithmforbayesiannetworkstructurelearning
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