基于关联规则挖掘的商店关系可视化

Sanetoshi Yamada, T. Funayama, Yoshiro Yamamoto
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引用次数: 5

摘要

对于问卷数据,需要一种方法来理解问卷结果,并根据性别和代际来发现问卷结果的特征。我们之前建议可视化关联规则来提取属性的特征(Yamada and Yamamoto, 2014)。在本研究中,我们利用关联规则对采购数据的可视化来发现项目分类之间的关系。但是,当我们对大量数据进行关联规则分析时,由于支持度普遍下降,很难找到有意义的规则。在提取低支持度规则时,提取的规则过多。因此,我们提出了条件关联规则分析和带用户属性的关联规则分析。在本研究中,我们通过条件关联规则分析和带用户属性的关联规则分析来改进关联规则的可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization of relations of stores by using Association Rule mining
For questionnaire data, a method is needed to understand questionnaire results and to find characteristics of questionnaire results by gender and generation. We previously suggested visualization of Association Rules to extract the characteristics of attributes (Yamada and Yamamoto, 2014). In this study, we find the relations between item classifications by using visualization of Association Rules for purchasing data. But, when we perform an Association Rule analysis for a large quantity of data, it is difficult to find meaningful rules because the support generally falls. When we extract rules of lower support, too many rules are extracted. Therefore, we propose a Conditional Association Rule Analysis and an Association Rule Analysis with User Attributes. In this study, we improve the visualization of Association Rules by Conditional Association Rule Analysis and the Association Rule Analysis with User Attributes.
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