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Learning Bayesian Network structures using Multiple Offspring Sampling

机译:使用多个后代采样学习贝叶斯网络结构

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Variable Ordering (VO) plays an important role when inducing Bayesian Networks (BNs). Previous works in the literature suggest that it is worth pursuing the use of evolutionary strategies for identifying a suitable VO, when learning a Bayesian Network structure from data. This paper proposes a hybrid adaptive algorithm named VOMOS (Variable Ordering Multiple Offspring Sampling) where the new individuals are created using a set of recombination operators (crossover and mutation operators). Experiments performed in datasets revealed that the VOMOS approach is promising and tends to generate consistent and representative BNs.
机译:诱导贝叶斯网络(BN)时,变量有序(VO)扮演着重要角色。文献中的先前工作表明,当从数据中学习贝叶斯网络结构时,有必要追求采用进化策略来识别合适的VO。本文提出了一种混合自适应算法,称为VOMOS(可变排序多子代采样),其中使用一组重组算子(交叉算子和变异算子)创建了新个体。在数据集中进行的实验表明,VOMOS方法是有前途的,并且倾向于生成一致且有代表性的BN。

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