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Model Similarity and Rank-Order Based Classification of Bayesian Networks

机译:贝叶斯网络的模型相似度和基于排序的分类

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Suppose that we rank-order the conditional probabilities for a group of subjects that are provided from a Bayesian network (BN) model of binary variables. The conditional probability is the probability that a subject has a certain attribute given an outcome of some other variables and the classification is based on the rank-order. Under the condition that the class sizes are equal across the class levels and that all the variables in the model are positively associated with each other, we compared the classification results between models of binary variables which share the same model structure. In the comparison, we used a BN model, called a similar BN model, which was constructed under some rule based on a set of BN models satisfying certain conditions. Simulation results indicate that the agreement level of the classification between a set of BN models and their corresponding similar BN model is considerably high with the exact agreement for about half of the subjects or more and the agreement up to one-class-level difference for about 90% or more.
机译:假设我们对从二元变量的贝叶斯网络(BN)模型提供的一组主题的条件概率进行排序。条件概率是给定一些其他变量的结果,对象具有某种属性的概率,并且分类基于排名顺序。在每个班级的班级大小相等且模型中的所有变量彼此正相关的条件下,我们比较了共享相同模型结构的二元变量模型之间的分类结果。在比较中,我们使用了一个称为类似BN模型的BN模型,该模型是根据一组满足特定条件的BN模型在某些规则下构造的。仿真结果表明,一组BN模型与其对应的类似BN模型之间的分类一致性水平很高,其中约一半或更多的受试者具有确切的一致性,而约一类水平的差异达到约一类水平的一致性。 90%以上。

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