Using Significant, Positively Associated and Relatively Class Correlated Rules for Associative Classification of Imbalanced Datasets

Florian Verhein, S. Chawla
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引用次数: 50

Abstract

The application of association rule mining to classification has led to a new family of classifiers which are often referred to as "associative classifiers (ACs)". An advantage of ACs is that they are rule-based and thus lend themselves to an easier interpretation. Rule-based classifiers can play a very important role in applications such as medical diagnosis and fraud detection where "imbalanced data sets" are the norm and not the exception. The focus of this paper is to extend and modify ACs for classification on imbalanced data sets using only statistical techniques. We combine the use of statistically significant rules with a new measure, the Class Correlation Ratio (CCR), to build an AC which we call SPARCCC. Experiments show that in terms of classification quality, SPARCCC performs comparably on balanced datasets and outperforms other AC techniques on imbalanced data sets. It also has a significantly smaller rule base and is much more computationally efficient.
利用显著、正相关和相对类相关规则对不平衡数据集进行关联分类
关联规则挖掘在分类中的应用产生了一类新的分类器,通常被称为“关联分类器”。ac的一个优点是它们是基于规则的,因此可以更容易地解释它们。基于规则的分类器可以在医疗诊断和欺诈检测等应用中发挥非常重要的作用,在这些应用中,“不平衡数据集”是常态,而不是例外。本文的重点是扩展和修改仅使用统计技术对不平衡数据集进行分类的ACs。我们将统计显著性规则的使用与一种新的度量相结合,即类别相关比率(CCR),以构建我们称之为SPARCCC的AC。实验表明,在分类质量方面,SPARCCC在平衡数据集上表现相当,在不平衡数据集上优于其他AC技术。它的规则库也小得多,计算效率也高得多。
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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