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A Pairwise Naive Bayes Approach to Bayesian Classification

机译:贝叶斯分类的成对朴素贝叶斯方法

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摘要

Despite the relatively high accuracy of the naive Bayes (NB) classifier, there may be several instances where it is not optimal, i.e. does not have the same classification performance as the Bayes classifier utilizing the joint distribution of the examined attributes. However, the Bayes classifier can be computationally intractable due to its required knowledge of the joint distribution. Therefore, we introduce a "pairwise naive" Bayes (PNB) classifier that incorporates all pairwise relationships among the examined attributes, but does not require specification of the joint distribution. In this paper, we first describe the necessary and sufficient conditions under which the PNB classifier is optimal. We then discuss sufficient conditions for which the PNB classifier, and not NB, is optimal for normal attributes. Through simulation and actual studies, we evaluate the performance of our proposed classifier relative to the Bayes and NB classifiers, along with the HNB, AODE, LBR and TAN classifiers, using normal density and empirical estimation methods. Our applications show that the PNB classifier using normal density estimation yields the highest accuracy for data sets containing continuous attributes. We conclude that it offers a useful compromise between the Bayes and NB classifiers.
机译:尽管朴素的贝叶斯(NB)分类器具有相对较高的准确性,但在某些情况下它不是最佳的,即与使用检查属性的联合分布的贝叶斯分类器不具有相同的分类性能。然而,贝叶斯分类器由于其对联合分布的要求知识而在计算上是棘手的。因此,我们引入了一个“成对幼稚”贝叶斯(PNB)分类器,该分类器合并了所检查属性之间的所有成对关系,但不需要指定联合分布。在本文中,我们首先描述了优化PNB分类器的必要条件和充分条件。然后,我们讨论PNB分类器(而不是NB)对于常规属性而言最佳的充分条件。通过模拟和实际研究,我们使用标准密度和经验估计方法评估了拟议分类器相对于Bayes和NB分类器以及HNB,AODE,LBR和TAN分类器的性能。我们的应用表明,使用正常密度估计的PNB分类器对包含连续属性的数据集产生最高的准确性。我们得出的结论是,它在贝叶斯分类器和NB分类器之间提供了有用的折衷方案。

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