Mining rare association rules in a distributed environment using multiple minimum supports

Jutamas Tempaiboolkul
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引用次数: 10

Abstract

Distributed data mining of association rules is an area of data mining which intends to find association rules over items geographically across the network. Several researches have been performed in this field as applications have started to exploit distributed databases. Discovering rare association rules is a new area of distributed mining research. In this paper, an algorithm for discovering rare association rules in distributed environment is proposed. It utilized the idea of using statistic percentile to produce multiple minimum supports to mine rare association rules. Finally, the proposed algorithm has been implemented and evaluated by comparing with the Optimized Distributed Association rule Mining (ODAM) algorithm and the Apriori with Multiple Support Generating by statistic Percentile threshold (Apriori MSG-P) algorithm. The result shows that the proposed algorithm can discover more rare association rules with an optimized communication cost.
使用多个最小支持挖掘分布式环境中的稀有关联规则
关联规则的分布式数据挖掘是数据挖掘的一个领域,其目的是在整个网络的地理位置上发现项目之间的关联规则。随着应用程序开始利用分布式数据库,在这一领域进行了一些研究。稀有关联规则发现是分布式挖掘研究的一个新领域。提出了一种在分布式环境下发现稀有关联规则的算法。它利用统计百分位数产生多个最小支持度的思想来挖掘稀有关联规则。最后,通过与优化的分布式关联规则挖掘(ODAM)算法和基于统计百分位阈值生成多支持度的Apriori算法(Apriori MSG-P)进行比较,对该算法进行了实现和评价。结果表明,该算法能够以优化的通信代价发现更多罕见的关联规则。
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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