A Measurable Bayesian Network Structure Learning Method
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Graphical Abstract
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Abstract
In this paper, a Bayesian network structure learning method via variable ordering based on mutual information (BNS\+vo-learning) is presented, which includes two components: the metric information matrix learning and the “lazy” heuristic strategy. The matrix of measurement information characterizes the degree of dependency among variables and implies the degree of strength comparison, which effectively solves the problem of misjudgment due to order of variables in the independence test process. Under the guidance of metric information matrix, the “lazy” heuristic strategy selectively adds variables to the condition set in order to effectively reduce high-order tests and reduce the number of tests. We theoretically prove the reliability of the new method and experimentally demonstrate that the new method searches significantly faster than other search processes. And BNS\+vo-learning is easily extended to small and sparse data sets without losing the quality of the learning structure.
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