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Domains of competence of the semi-naive Bayesian network classifiers

机译:半朴素贝叶斯网络分类器的能力范围

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The motivation for this paper comes from observing the recent tendency to assert that rather than a unique and globally superior classifier, there exist local winners. Hence, the proposal of new classifiers can be seen as an attempt to cover new areas of the complexity space of datasets, or even to compete with those previously assigned to others. Several complexity measures for supervised classification have been designed to define these areas. In this paper, we want to discover which type of datasets, defined by certain range values of the complexity measures for supervised classification, fits for some of the most well-known semi-naive Bayesian network classifiers. This study is carried out on continuous and discrete domains for naive Bayes and Averaged One-Dependence Estimators (AODE), which are two widely used incremental classifiers that provide some of the best trade-offs between error performance and efficiency. Furthermore, an automatic procedure to advise on the best semi-naive BNC to use for classification, based on the values of certain complexity measures, is proposed
机译:本文的动机来自于观察到最近的趋势,即断言存在一个本地赢家,而不是一个独特的,全球领先的分类器。因此,新分类器的建议可以看作是尝试覆盖数据集复杂性空间的新领域,甚至与先前分配给其他人的竞争。已经设计了几种用于监督分类的复杂性度量来定义这些区域。在本文中,我们想发现哪种类型的数据集(由用于监督分类的复杂性度量的某些范围值定义)适合某些最著名的半朴素贝叶斯网络分类器。这项研究是针对朴素贝叶斯和平均一依赖估计量(AODE)的连续域和离散域进行的,这两个广泛使用的增量分类器在错误性能和效率之间提供了一些最佳折衷。此外,提出了一种自动程序,该程序可基于某些复杂性度量的值,建议最佳的半天然BNC用于分类。

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