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贝叶斯网络结构学习及其应用研究
引用本文:黄解军,万幼川,潘和平.贝叶斯网络结构学习及其应用研究[J].武汉大学学报(信息科学版),2004,29(4):315-318.
作者姓名:黄解军  万幼川  潘和平
作者单位:武汉大学遥感信息工程学院,武汉市珞喻路129号,430079
基金项目:国家自然科学基金资助项目 (60 175 0 2 2 )
摘    要:阐述了贝叶斯网络结构学习的内容与方法 ,提出一种基于条件独立性 (CI)测试的启发式算法。从完全潜在图出发 ,融入专家知识和先验常识 ,有效地减少网络结构的搜索空间 ,通过变量之间的CI测试 ,将全连接无向图修剪成最优的潜在图 ,近似于有向无环图的无向版。通过汽车故障诊断实例 ,验证了该算法的可行性与有效性。

关 键 词:贝叶斯网络  结构学习  条件独立性  概率推理  图论
文章编号:1671-8860(2004)04-0315-04
修稿时间:2004年1月23日

Bayesian Network Structure Learning and Its Applications
HUANG Jiejun,WAN Youchuan,PAN Heping.Bayesian Network Structure Learning and Its Applications[J].Geomatics and Information Science of Wuhan University,2004,29(4):315-318.
Authors:HUANG Jiejun  WAN Youchuan  PAN Heping
Institution:HUANG Jiejun1 WAN Youchuan1 PAN Heping1
Abstract:This paper discusses the purposes and methods of Bayesian network structure learning, then proposes a new algorithm for this task. Based on a fully connected potential graph, we enter the expert knowledge and prior knowledge in order to reduce the query space of the structures. By using CI (conditional independence) tests, it can be pruned a fully connected potential graph to a best PG, which is expected to approximate the undirected version of the underlying directed graph. The experimental results of fault diagnosis in automobile are provided to illustrate the feasibility and efficiency of the new algorithm.
Keywords:Bayesian network  structure learning  conditional independence  probabilistic reasoning  graph theory
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