Augmenting learning function to Bayesian network inferences with maximum likelihood parameters

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摘要

Computing the posterior probability distribution for a set of query variables by search result is an important task of inferences with a Bayesian network. Starting from real applications, it is also necessary to make inferences when the evidence is not contained in training data. In this paper, we are to augment the learning function to Bayesian network inferences, and extend the classical “search”-based inferences to “search + learning”-based inferences. Based on the support vector machine, we use a class of hyperplanes to construct the hypothesis space. Then we use the method of solving an optimal hyperplane to find a maximum likelihood hypothesis for the value not contained in training data. Further, we give a convergent Gibbs sampling algorithm for approximate probabilistic inference with the presence of maximum likelihood parameters. Preliminary experiments show the feasibility of our proposed methods.

论文关键词:Bayesian network,Inference,Learning function,Support vector machine,Maximum likelihood hypothesis

论文评审过程:Available online 29 February 2008.

论文官网地址:https://doi.org/10.1016/j.eswa.2008.02.018