Association Classification Based on Compactness of Rules

Q. Niu, Shixiong Xia, Lei Zhang
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引用次数: 33

Abstract

Associative classification has high classification accuracy and strong flexibility. However, it still suffers from overfitting since the classification rules satisfied both minimum support and minimum confidence are returned as strong association rules back to the classifier. In this paper, we propose a new association classification method based on compactness of rules, it extends Apriori Algorithm¿which considers the interestingness, importance, overlapping relationships among rules. At last, experimental results shows that the algorithm has better classification accuracy in comparison with CBA and CMAR are highly comprehensible and scalable.
基于规则紧密度的关联分类
关联分类具有分类精度高、灵活性强的特点。然而,由于满足最小支持度和最小置信度的分类规则作为强关联规则返回给分类器,因此它仍然存在过拟合的问题。本文提出了一种基于规则紧密度的关联分类方法,它扩展了Apriori算法,该算法考虑了规则之间的兴趣度、重要性和重叠关系。最后,实验结果表明,该算法与CBA相比具有更好的分类精度,CMAR具有较高的可理解性和可扩展性。
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