A novel associative classification algorithm: A combination of LAC and CMAR with new measure of weighted effect of each rule group

Pei-Yi Hao, Yu-De Chen
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引用次数: 5

Abstract

In recent, Association Classification not only has widely adopted but also has performed well in data mining. The literatures have been argued that the small disjunction and using multiple class-association rules have significant effect on classification accuracy. This paper is based on CMAR (Classification based on Multiple Class-Association Rules) and Adriano Veloso proposed Lazy Associative Classifier algorithm for Small Disjunction mining. In addition, we collocate with a new weight calculation method in our algorithm to solve weight bias problem of CMAR. This paper uses UCI 26 data set for experiment on our proposed algorithm. The finally results convincingly demonstrated that our proposed algorithm is high accuracy.
一种新的关联分类算法:将LAC和CMAR结合起来,并对每个规则组的加权效果进行新的度量
近年来,关联分类不仅在数据挖掘中得到了广泛的应用,而且在数据挖掘中也取得了不错的成绩。已有文献认为,小分离和使用多个类关联规则对分类精度有显著影响。本文基于基于多类关联规则的分类(Classification based on Multiple Class-Association Rules)和Adriano Veloso提出的用于小分离挖掘的Lazy Associative Classifier算法。此外,我们在算法中引入了一种新的权重计算方法来解决CMAR的权重偏差问题。本文使用uci26数据集对我们提出的算法进行了实验。最后的结果令人信服地证明了我们提出的算法具有较高的精度。
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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