Organizing association rules with meta-rules using knowledge clustering

Y. Djenouri, H. Drias, Z. Habbas, A. Chemchem
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引用次数: 7

Abstract

The effectiveness and the robustness of the existing association rule mining algorithms provides a huge number of high quality rules that the user can not understand. Consequently, thinking about another representation of the generated rules becomes vital task. For this, the present paper explores meta-rules discovery. It focuses on clustering association rules for large data sets. This allows the user better organizing and interpreting the rules. The main idea is to develop a clustering algorithm for the whole rules extracted by the association rule mining process (ARM). As a result, a set of meta-rules that the user or the data analyst can interpret are obtained, which permits to take a wise decision in a given domain. The issue for addressing such problem is to find an approach to perform clustering of association rules, which is a challenging problem not dealt with thus far. An adaptation of the k-means algorithm for association rules is proposed, by using new designed similarity measures and specific centroid computation. The clustering approach has been tested on a large data set obtained by merging three different public benchmarks. The result is promising. The proposed clustering generates three clusters, each includes one of the three benchmarks with a success rate varying from 70% to 90%.
使用知识聚类组织带有元规则的关联规则
现有关联规则挖掘算法的有效性和鲁棒性提供了大量用户无法理解的高质量规则。因此,考虑生成的规则的另一种表示就变得至关重要。为此,本文探讨了元规则的发现。它主要关注大型数据集的聚类关联规则。这允许用户更好地组织和解释规则。其主要思想是对关联规则挖掘过程(ARM)提取的全部规则开发一种聚类算法。结果,获得了一组用户或数据分析人员可以解释的元规则,从而允许在给定领域中做出明智的决策。解决这类问题的问题是找到一种方法来执行关联规则的聚类,这是一个迄今为止没有处理过的具有挑战性的问题。提出了一种基于k-means的关联规则自适应算法,该算法采用了新的相似性度量和特定质心计算。聚类方法已经在合并三个不同的公共基准测试获得的大型数据集上进行了测试。结果是有希望的。建议的聚类生成三个聚类,每个聚类包含三个基准中的一个,成功率从70%到90%不等。
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