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From Intra-transaction to Generalized Inter-transaction: Landscaping Multidimensional Contexts in Association Rule Mining

机译:从交易内到广义交易:在关联规则挖掘中对多维上下文进行美化

摘要

The problem of mining multidimensional inter-transactional association rules was recently introduced in [ACM Trans. Inform. Syst. 18(4) (2000) 423; Proc. of the ACM SIGMOD Workshop on Research Issues on Data Mining and Knowledge Discovery, Seattle, Washington, June 1998, p. 12:1]. It extends the scope of mining association rules from traditional single-dimensional intra-transactional associations to multidimensional inter-transactional associations. Inter-transactional association rules can represent not only the associations of items happening within transactions as traditional intra-transactional association rules do, but also the associations of items among different transactions under a multidimensional context. "After McDonald and Burger King open branches, KFC will open a branch two months later and one mile away" is an example of such rules. In this paper, we extend the previous problem definition based on context expansion, and present a more general form of association rules, named generalized multidimensional inter-transactional association rules. An algorithm for mining such generalized inter-transactional association rules is presented by extension of a priori. We report our experiments on applying the algorithm to both real-life and synthetic data sets. Empirical evaluation shows that with the generalized inter-transactional association rules, more comprehensive and interesting association relationships can be detected from data sets.
机译:最近,在[ACM Trans。通知。 Syst。 18(4)(2000)423;程序1998年6月在华盛顿州西雅图市举行的ACM SIGMOD关于数据挖掘和知识发现的研究问题研讨会上的讨论。 12:1]。它将挖掘关联规则的范围从传统的单维交易内关联扩展到多维交易间关联。事务间关联规则不仅可以像传统的事务内关联规则一样表示事务中发生的项目关联,还可以表示多维上下文下不同事务之间的项目关联。 “在麦当劳和汉堡王开设分行之后,肯德基将在两个月后又相距一英里的地方开设分行”。在本文中,我们基于上下文扩展扩展了先前的问题定义,并提出了一种更通用的关联规则形式,称为广义多维事务间关联规则。通过先验的扩展,提出了一种用于挖掘这种通用的交易间关联规则的算法。我们报告了将算法应用于实际和综合数据集的实验。实证评估表明,使用通用的事务间关联规则,可以从数据集中检测到更全面,更有趣的关联关系。

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    Li Q; Feng L.; Wong A.K.Y.;

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  • 年度 2005
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