发现关联分类的信息关联规则

Zhitong Su, Wei Song, Danyang Cao, Jinhong Li
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引用次数: 2

摘要

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(ACs)。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。然而,众所周知,关联规则挖掘通常会产生大量的规则,从而违背了人类可读模型的目的。因此,在不损害分类准确性的情况下选择一小部分高质量规则并对其进行排序是至关重要的,但也是非常具有挑战性的。本文提出了一种新的基于熵的关联分类器entropy - ac。首先定义了信息增益和信息规则。然后,给出了基于信息规则的关联分类器的构造算法。实验结果表明,所提出的关联分类器是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering Informative Association Rules for Associative Classification
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. However, it is common knowledge that association rule mining typically yields a sheer number of rules defeating the purpose of a human readable model. Hence, selecting and ranking a small subset of high-quality rules without jeopardizing the classification accuracy is paramount but very challenging. In this paper, Entropy-AC, a new associative classifier based on entropy, is proposed. Information gain and informative rules are defined at first. Then, the algorithm for constructing associative classifier based on informative rules is presented. Experimental results show the proposed associative classifier is effective.
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