A SAR-based interesting rule mining algorithm

Jiexun Li, Guoqing Chen
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引用次数: 2

Abstract

Association rule mining is one of the most important fields in data mining. Rules explosion is a problem of concern, as conventional mining algorithms often produce too many rules for decision makers to digest. This paper discusses how to mine interesting rules with the antecedent constraint being positively associated with the consequent. Notions of simple association rules (SAR), interestingness measures and antecedent constraints are incorporated in the process of interesting rules discovery. The entire set of interesting rules can be derived from the simple rules without any information loss, and the proposed SAR-based mining algorithm performs better than conventional methods by reducing the number of candidate rules.
基于sar的有趣规则挖掘算法
关联规则挖掘是数据挖掘的重要领域之一。规则爆炸是一个值得关注的问题,因为传统的挖掘算法经常产生太多的规则,决策者难以消化。本文讨论了如何挖掘前因式约束与后因式约束正相关的有趣规则。在有趣规则发现过程中引入了简单关联规则(SAR)、兴趣度量和先行约束的概念。在不丢失任何信息的情况下,可以从简单规则中提取出完整的感兴趣规则集,并且所提出的基于sar的挖掘算法通过减少候选规则的数量而优于传统方法。
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