On dual mining: from patterns to circumstances, and back

G. Grahne, L. Lakshmanan, Xiaohong Wang, M. Xie
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引用次数: 19

Abstract

Previous work on frequent item set mining has focused on finding all itemsets that are frequent in a specified part of a database. We motivate the dual question of finding under what circumstances a given item set satisfies a pattern of interest (e.g., frequency) in a database. Circumstances form a lattice that generalizes the instance lattice associated with datacube. Exploiting this, we adapt known cube algorithms and propose our own, minCirc, for mining the strongest (e.g., minimal) circumstances under which an itemset satisfies a pattern. Our experiments show that minCirc is competitive with the adapted algorithms. We motivate mining queries involving migration between item set and circumstance lattices and propose the notion of Armstrong Basis as a structure that provides efficient support for such migration queries, as well as a simple algorithm for computing it.
关于双重挖掘:从模式到环境,再回来
以前关于频繁项集挖掘的工作主要集中在查找数据库指定部分中频繁出现的所有项集。我们激发了一个双重问题,即在什么情况下给定的项目集满足数据库中感兴趣的模式(例如,频率)。环境形成了一个格,它概括了与数据立方体相关的实例格。利用这一点,我们改编了已知的立方体算法,并提出了我们自己的算法minCirc,用于挖掘项目集满足模式的最强(例如,最小)情况。我们的实验表明,minCirc与自适应算法具有竞争力。我们激发了涉及项目集和环境格之间迁移的挖掘查询,并提出了Armstrong Basis的概念,作为为此类迁移查询提供有效支持的结构,以及计算它的简单算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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