Integrated Generic Association Rule Based Classifier

I. Bouzouita, S. Elloumi
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引用次数: 17

Abstract

Associative classification is a supervised classification method. Many experimental studies have shown that associative classification is a promising approach. There are several associative classification approaches. However, the latter suffer from a major drawback: the huge number of the generated classification rules which takes efforts to select the best ones in order to construct the classifier. To overcome such drawback, we propose in this paper a new direct associative classification method called IGARC, an improvement of GARC approach, that extracts directly generic associative classification rules from a training set in order to reduce the number of associative classification rules without jeopardizing the classification accuracy. A detailed description of this method is presented, as well as the experimentation study on 12 benchmark data sets proving that IGARC is highly competitive in terms of accuracy in comparison with popular classification approaches.
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基于通用关联规则的集成分类器
关联分类是一种监督分类方法。许多实验研究表明,联想分类是一种很有前途的方法。有几种关联分类方法。然而,后者有一个主要的缺点:生成的分类规则数量巨大,需要努力选择最好的规则来构建分类器。为了克服这一缺点,本文提出了一种新的直接关联分类方法IGARC,它是GARC方法的改进,直接从训练集中提取通用的关联分类规则,以减少关联分类规则的数量而不影响分类精度。对该方法进行了详细的描述,并在12个基准数据集上进行了实验研究,证明了IGARC在准确率方面与常用的分类方法相比具有很强的竞争力。
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