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An Efficient Approach for Mining Association Rules in Large Databases

机译:大型数据库中关联规则的有效挖掘方法

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Association rules are if/then statements that help uncover relationships between seemingly unrelated data in a relational database or other information repository. In data mining , association rules are useful for analyzing and predicting customer behavior. They play an important part in shopping basket data analysis, product clustering, catalog design and store layout.?However, when the number of association rules become large, it becomes less interesting to the user. It is crucial to help the decision-maker with an efficient postprocessing step in order to select interesting association rules throughout huge volumes of discovered rules. This motivates the need for association analysis. Thus, this paper presents a novel approach to prune mined association rules in large databases. Further, an analysis of different association rule mining techniques for market basket analysis, highlighting strengths of different association rule mining techniques are also discussed. We want to point out potential pitfalls as well as challenging issues need to be addressed by an association rule mining technique. We believe that the results of this approach will help decision maker for making important decisions.
机译:关联规则是if / then语句,可帮助发现关系数据库或其他信息存储库中看似无关的数据之间的关系。在数据挖掘中,关联规则对于分析和预测客户行为非常有用。它们在购物篮数据分析,产品聚类,目录设计和商店布局中起着重要的作用。但是,当关联规则的数量变大时,对用户来说就不那么有趣了。至关重要的是,帮助决策者进行有效的后处理步骤,以便在大量发现的规则中选择有趣的关联规则。这激发了关联分析的需要。因此,本文提出了一种在大型数据库中修剪关联规则的新颖方法。此外,还对用于市场篮分析的不同关联规则挖掘技术进行了分析,重点介绍了不同关联规则挖掘技术的优势。我们想指出潜在的陷阱以及需要通过关联规则挖掘技术解决的难题。我们认为,这种方法的结果将有助于决策者做出重要的决策。

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