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Experimental study on generalization capability of extended naive Bayesian classifier

机译:扩展朴素贝叶斯分类器泛化能力的实验研究

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摘要

Extended naive Bayesian classifier (ENBC) is a general framework of NBCs, which is developed based on -norm based ordered weighted averaging (t-OWA) operator and uses the weighted summation of products of margin probabilities to determine class-conditional probability. Since ENBC was proposed in 2006, there is no such a study which tests the performances of ENBC on the real classification datasets. Thus, in this paper we conduct an experimental investigation to ENBC's generalization capability based on 44 benchmark KEEL and UCI datasets. The analysis shows that (1) ENBC is instable and its aggregation weights are sensitive to the order of training samples and (2) ENBC indeed has higher generalization capability than the existing NBCs, e.g., normal naive Bayesian and flexible naive Bayesian when its weight is properly selected.
机译:扩展朴素贝叶斯分类器(ENBC)是NBC的通用框架,它是基于基于-norm的有序加权平均(t-OWA)运算符开发的,并使用余量概率乘积的加权总和来确定类条件概率。自从2006年提出ENBC以来,没有这样的研究可以测试ENBC在真实分类数据集上的性能。因此,在本文中,我们基于44个基准KEEL和UCI数据集对ENBC的泛化能力进行了实验研究。分析表明:(1)ENBC不稳定,其聚集权重对训练样本的顺序敏感;(2)ENBC的确具有比现有NBC更高的泛化能力,例如,当权重为NEC时,常规朴素贝叶斯和灵活朴素贝叶斯。正确选择。

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