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首页> 外文期刊>International Journal of Business Intelligence and Data Mining >MCFPTree: An FP-tree-based algorithm for multi-constraint patterns discovery
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MCFPTree: An FP-tree-based algorithm for multi-constraint patterns discovery

机译:MCFPTree:一种用于多约束模式发现的基于FP树的算法

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摘要

In this paper, the problem of constraint-based pattern discovery is investigated. By allowing more user-specified constraints other than traditional rule measurements, e.g., minimum support and minimum confidence, research work on this topic endeavoured to reflect real interest of analysts and relieve them from the overabundance of rules. Surprisingly, very little research has been conducted to deal with multiple types of constraints. In our previous work, we have studied this problem, specifically focusing on three different types of constraints, and an efficient Apriori-like algorithm, called MCFP, is proposed. In this paper, we propose a new algorithm called MCFPTree, which is based on a tree structure for keeping frequent patterns without suffering from the problem of candidate itemsets generation. Experimental results show that our MCFPTree algorithm is significantly faster than MCFP and an intuitive method FP-Growth+, i.e., post-processing the frequent patterns generated by FP-Growth, against user-specified constraints.
机译:本文研究了基于约束的模式发现问题。通过允许除传统规则度量之外的更多用户指定约束,例如最小支持和最小置信度,有关此主题的研究工作旨在反映分析人员的真正兴趣,并使他们摆脱规则过多的困扰。令人惊讶的是,很少进行研究来处理多种类型的约束。在我们之前的工作中,我们专门针对三种不同类型的约束条件研究了此问题,并提出了一种有效的类似于Apriori的算法,称为MCFP。在本文中,我们提出了一种称为MCFPTree的新算法,该算法基于树结构,用于保持频繁的模式而不会出现候选项目集生成的问题。实验结果表明,我们的MCFPTree算法比MCFP和一种直观的FP-Growth +方法(即针对用户指定的约束,对FP-Growth生成的频繁模式进行后处理)明显快得多。

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