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APRIORI-SD: Adapting Association Rule Learning to Subgroup Discovery

机译:APRIORI-SD:使关联规则学习适应亚组发现

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摘要

This paper presents a subgroup discovery algorithm APRIORI-SD, developed by adapting association rule learning to subgroup discovery. This was achieved by building a classification rule learner APRIORI-C, enhanced with a novel post-processing mechanism, a new quality measure for induced rules (weighted relative accuracy) and using probabilistic classification of instances. Results of APRIORI-SD are similar to the subgroup discovery algorithm CN2-SD while experimental comparisons with CN2, RIPPER and APRIORI-C demonstrate that the subgroup discovery algorithm APRIORI-SD produces substantially smaller rule sets, where individual rules have higher coverage and significance.
机译:本文提出了一种子组发现算法APRIORI-SD,该算法是通过将关联规则学习应用于子组发现而开发的。这是通过构建分类规则学习器APRIORI-C来实现的,该学习器使用了新颖的后处理机制,用于诱导规则的新质量度量(加权相对准确度)并使用实例的概率分类进行了增强。 APRIORI-SD的结果与子组发现算法CN2-SD相似,而与CN2,RIPPER和APRIORI-C进行的实验比较表明,子组发现算法APRIORI-SD产生的规则集要小得多,其中各个规则的覆盖范围和重要性更高。

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