Frequent pattern generation in association rule mining using weighted support

Subrata Bose, Subrata Datta
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引用次数: 12

Abstract

Determination of frequent sets from a large database is the key to Association Rule mining from the point view of efficiency of algorithms to scale up and discovering frequent sets which lead to useful association rules. Some of the existing methods have either very low or very high pruning, which is the cause of generation of larger or lesser number of frequent patterns. In this paper we have adopted a balanced approach for frequent pattern selection. Our proposed measure weighted support considers association and dissociation among items as well as the impact of null transactions on them for frequent set generation. Impact of increasing itemset size on weighted support gives rise to variable threshold The experimental results obtained after implementation of the proposed algorithm justify the approach.
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基于加权支持的关联规则挖掘频繁模式生成
从算法扩展和发现频繁集的效率的角度来看,从大型数据库中确定频繁集是关联规则挖掘的关键,从而产生有用的关联规则。现有的一些方法具有非常低或非常高的剪枝,这是产生或多或少数量的频繁模式的原因。在本文中,我们采用了一种平衡的方法来进行频繁模式选择。我们提出的度量加权支持考虑了项目之间的关联和分离,以及null事务对频繁集合生成的影响。增大项目集大小对加权支持度的影响会产生可变阈值,实现后的实验结果证明了该方法的有效性。
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