使用正则化的类关联规则修剪

Mohamed Azmi, A. Berrado
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引用次数: 7

摘要

关联规则挖掘是一种从大量高维分类特征空间中寻找属性之间有趣关联的数据挖掘技术。然而,随着维数的增加,数据变得越来越稀疏,这导致发现大量的关联规则,使其难以理解和解释。本文主要研究一类特殊的关联规则,即类关联规则(CARs),提出了一种基于Lasso正则化的类关联规则剪枝方法。在这种方法中,我们建议利用Lasso正则化的变量选择能力来修剪不太有趣的规则。实验分析表明,该方法在剪枝后得到的规则数量和质量上都优于CBA算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Class-association rules pruning using regularization
Association rules mining is a data mining technique that seeks interesting associations between attributes from massive high-dimensional categorical feature spaces. However, as the dimensionality gets higher, the data gets sparser which results in the discovery of a large number of association rules and makes it difficult to understand and to interpret. In this paper, we focus on a particular type of association rules namely Class-Association Rules (CARs) and we introduce a new approach of Class-Association Rules pruning based on Lasso regularization. In this approach we propose to take advantage of variable selection ability of Lasso regularization to prune less interesting rules. The experimental analysis shows that the introduced approach gives better results than CBA in term of number as well as the quality of the obtained rules after pruning.
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