基于约束约束的关联规则挖掘

Anh N. Tran, Tin C. Truong, H. Le, Hai V. Duong
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引用次数: 7

摘要

本文的目的是解决基于一个经常变化的给定约束项集的关联规则挖掘问题。在构建系统时,在给定的数据库上,首先挖掘封闭项集的格。在此基础上,当约束或最小支持度发生变化时,得到所有受限频繁闭项集的格。所有受约束约束的关联规则的集合划分为不相交的等价类。每个类由一对两个嵌套的频繁封闭项集表示。然后,我们单独挖掘每个规则类。用户可以选择他们感兴趣的规则类。只花一点时间,我们就能挖掘出那门课的基本规则。它们对用户很有用,因为它们的左手边是最小的,右手边是最大的。必要时,所有剩余的结果集合及其置信度可以从基本集合中快速生成。该结果集还根据不同的生成操作符划分为不同的子集。因此,我们的方法是非常高效和接近用户!理论验证和实验结果证明了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Association Rules Restricted on Constraint
The aim of this paper is to solve the problem of mining association rule restricted on a given constraint itemset which often changes. At the time of building the system, on given database, we mine first the lattice of closed itemsets. Based on that lattice, whenever the constraint or the minimum support changes, the lattice of all restricted frequent closed itemsets is obtained. The set of all association rules restricted on constraint partitions into disjoint equivalence classes. Each class is represented by a pair of two nested frequent closed itemsets. Then, we just mine independently each rule class. Users can select the rule class that they are interested in. Spending only a little of time, we can mine and figure out the basic rules of that class. They are useful for users because their left-handed sides are minimal and their right-handed sides are maximal. When necessary, the set of all remaining consequence ones together with their confidences can be quickly generated from the basic ones. This consequence set also splits into the different subsets according to different generating operators. Hence, our approach is very efficient and close to user! The theoretical affirmations and experimental results prove that.
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