A Gaussian Mixed Model for Learning Discrete Bayesian Networks.

Statistics & Probability Letters(2011)

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摘要
In this paper, we address the problem of learning discrete Bayesian networks from noisy data. A graphical model based on a mixture of Gaussian distributions with categorical mixing structure coming from a discrete Bayesian network is considered. The network learning is formulated as a maximum likelihood estimation problem and performed by employing an EM algorithm. The proposed approach is relevant to a variety of statistical problems for which Bayesian network models are suitable—from simple regression analysis to learning gene/protein regulatory networks from microarray data.
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关键词
Bayesian networks,Learning,Mixture models,MLE,EM algorithm
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