首页> 外文会议>Advances in Neural Networks - ISNN 2007 pt.2; Lecture Notes in Computer Science; 4492 >Learning Bayesian Networks Based on a Mutual Information Scoring Function and EMI Method
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Learning Bayesian Networks Based on a Mutual Information Scoring Function and EMI Method

机译:基于互信息评分功能和EMI方法的贝叶斯网络学习

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At present, most of the algorithms for learning Bayesian Networks (BNs) use EM algorithm to deal with incomplete data. They are of low efficiency because EM algorithm has to perform iterative process of probability reasoning to complete the incomplete data. In this paper we present an efficient BN learning algorithm, which use the combination of EMI method and a scoring function based on mutual information theory. The algorithm first uses EMI method to estimate, from incomplete data, probability distributions over local structures of BNs, then evaluates BN structures with the scoring function and searches for the best one. The detailed procedure of the algorithm is depicted in the paper. The experimental results on Asia and Alarm networks show that when achieving high accuracy, the algorithm is much more efficient than two EM based algorithms, SEM and EM-EA algorithms.
机译:目前,用于学习贝叶斯网络(BN)的大多数算法都使用EM算法来处理不完整的数据。它们的效率很低,因为EM算法必须执行概率推理的迭代过程才能完成不完整的数据。在本文中,我们提出了一种有效的BN学习算法,该算法结合了EMI方法和基于互信息理论的评分功能。该算法首先使用EMI方法从不完整的数据中估计BN局部结构上的概率分布,然后使用评分函数评估BN结构并搜索最佳结构。本文描述了该算法的详细过程。在亚洲和警报网络上的实验结果表明,该算法在实现高精度时比两个基于EM的算法SEM和EM-EA算法效率更高。

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