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A Confidence-Lift Support Specification for Interesting Associations Mining

机译:感兴趣的协会挖掘的信心提升支持规范

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Recently, the weakness of the canonical support-confidence framework for associations mining has been widely studied in the literature. One of the difficulties in applying association rules mining to real world applications is the setting of support constraint. A high support constraint avoids the combinatorial explosion in discovering frequent itemsets, but at the expense of missing interesting patterns of low support. Instead of seeking the way for setting the appropriate support constraint, all current approaches leave the users in charge of the support setting, which, however, puts the users in a dilemma. This paper is an effort to answer this long-standing open question. Based on the notion of confidence and lift measures, we propose an automatic support specification for mining high confidence and positive lift associations without consulting the users. Experimental results show that this specification is good at discovering the low support, but high confidence and positive lift associations, and is effective in reducing the spurious frequent itemsets.
机译:最近,在文献中广泛研究了规范挖掘支持-信任框架用于关联挖掘的弱点。将关联规则挖掘应用于现实世界应用程序时的困难之一是设置支持约束。高支持约束避免了在发现频繁项集时的组合爆炸,但以丢失有趣的低支持模式为代价。所有当前的方法都没有寻求设置合适的支持约束的方法,而是由用户来负责支持设置,但是这使用户陷入了困境。本文旨在回答这个长期存在的开放性问题。基于置信度和提升量度的概念,我们提出了一种自动支持规范,用于挖掘高置信度和积极的提升关联,而无需咨询用户。实验结果表明,该规范擅长发现低支持度,高置信度和正提升关联,并有效地减少了虚假频繁项集。

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