ARUBAS: An Association Rule Based Similarity Framework for Associative Classifiers

B. Depaire, K. Vanhoof, G. Wets
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引用次数: 11

Abstract

This article introduces ARUBAS, a new framework to build associative classifiers. In contrast with many existing associative classifiers, it uses class association rules to transform the feature space and uses instance-based reasoning to classify new instances. The framework allows the researcher to use any association rule mining algorithm to produce the class association rules. Every aspect of the framework is extensively introduced and discussed and five different fitness measures used for classification purposes are defined. The empirical results determine which fitness measure is the best and compares the framework with other classifiers. These results show that the ARUBAS framework is able to produce associative classifiers which are competitive with other classification techniques. More specifically, with ARUBAS-Scheffer-phi5 we have introduced a parameter-free algorithm which is competitive with classification techniques such as C4.5, RIPPER and CBA.
基于关联规则的关联分类器相似度框架
本文介绍了一种构建关联分类器的新框架ARUBAS。与现有的许多关联分类器相比,它使用类关联规则对特征空间进行变换,并使用基于实例的推理对新实例进行分类。该框架允许研究者使用任何关联规则挖掘算法来生成类关联规则。广泛介绍和讨论了框架的每个方面,并定义了用于分类目的的五种不同的适应度度量。经验结果确定了哪个适应度度量是最好的,并将框架与其他分类器进行比较。这些结果表明,ARUBAS框架能够产生与其他分类技术相竞争的关联分类器。更具体地说,在ARUBAS-Scheffer-phi5中,我们引入了一种与C4.5、RIPPER和CBA等分类技术相竞争的无参数算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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