首页> 外文会议>Data Compression Conference (DCC), 2012 >Bayesian Network Structure Estimation Based on the Bayesian/MDL Criteria When Both Discrete and Continuous Variables Are Present
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Bayesian Network Structure Estimation Based on the Bayesian/MDL Criteria When Both Discrete and Continuous Variables Are Present

机译:离散变量和连续变量同时存在时基于贝叶斯/ MDL准则的贝叶斯网络结构估计

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We consider estimation of Bayesian network structures given a finite number of examples when both discrete and continuous random variables are present in a Bayesian network. It is not hard to estimate Bayesian network structures based on the MDL/Bayesian criteria if each variable takes a finite value. On the other hand, because continuous data contain infinite precisions, its posterior probability cannot be evaluated in a well defined manner. We extend the notion of the MDL/Bayesian criteria in the most general setting in terms of Radon-Nikodym derivatives, and propose a method to estimate Bayesian network structures without assuming each variable to be either discrete or continuous.
机译:当贝叶斯网络中同时存在离散和连续随机变量时,我们考虑给定有限数量的示例来估计贝叶斯网络结构。如果每个变量取有限值,则不难根据MDL /贝叶斯准则估计贝叶斯网络结构。另一方面,由于连续数据包含无限精度,因此无法以明确定义的方式评估其后验概率。我们根据Radon-Nikodym导数在最一般的情况下扩展了MDL /贝叶斯准则的概念,并提出了一种估计贝叶斯网络结构的方法,而无需假设每个变量都是离散或连续的。

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