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GARC: A New Associative Classification Approach

机译:GARC:一种新的联想分类方法

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摘要

Many studies in data mining have proposed a new classification approach called associative classification. According to several reports associative classification achieves higher classification accuracy than do traditional classification approaches. However, the associative classification suffers from a major drawback: it is based on the use of a very large number of classification rules; and consequently takes efforts to select the best ones in order to construct the classifier. To overcome such drawback, we propose a new associative classification method called GARC that exploits a generic basis of association rules in order to reduce the number of association rules without jeopardizing the classification accuracy. Moreover, GARC proposes a new selection criterion called score, allowing to ameliorate the selection of the best rules during classification. Carried out experiments on 12 benchmark data sets indicate that GARC is highly competitive in terms of accuracy in comparison with popular associative classification methods.
机译:数据挖掘中的许多研究都提出了一种称为联想分类的新分类方法。根据几份报告,联想分类比传统分类方法更高的分类准确性。但是,联想分类遭受了重大缺点:它基于使用大量分类规则;因此,需要努力选择最佳的,以便构建分类器。为了克服这种缺点,我们提出了一种新的关联分类方法,称为GARC,该方法利用关联规则的通用基础,以减少关联规则的数量而不会危及分类准确性。此外,GARC提出了一种名为得分的新选择标准,允许在分类期间改善最佳规则的选择。在12个基准数据集中进行实验表明,GARC在与流行的关联分类方法相比的准确性方面具有竞争力。

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