基于概率先验的稀有关联规则挖掘方法

Sandeep Singh Rawat, L. Rajamani
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引用次数: 14

摘要

设置罕见的关联规则来处理不可预测的项目是一项困难的任务,因为诸如apriori算法和频繁的模式增长等方法,基于单个最小支持应用程序的最小支持度或高或低。如果将最低支持设置为高以覆盖很少出现的项目,它将错过涉及稀有项目的频繁模式,因为稀有项目无法满足高最低支持。在文献中,已经努力提取具有多个最小支持度的稀有关联规则。在本文中,我们探索了概率,提出了基于多个minsup的类先验方法,称为概率Apriori多重最小支持(probability Apriori multiple Minimum Support, PAMMS)来有效地发现罕见关联规则。实验结果表明,该方法是有效的。
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Probability apriori based approach to mine rare association rules
It is a difficult task to set rare association rules to handle unpredictable items since approaches such as apriori algorithm and frequent pattern-growth, a single minimum support application based suffers from low or high minimum support. If minimum support is set high to cover the rarely appearing items it will miss the frequent patterns involving rare items since rare items fail to satisfy high minimum support. In the literature, an effort has been made to extract rare association rules with multiple minimum supports. In this paper, we explore the probability and propose multiple minsup based apriori-like approach called Probability Apriori Multiple Minimum Support (PAMMS) to efficiently discover rare association rules. Experimental results show that the proposed approach is efficient.
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