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Attribute Index and Uniform Design Based Multiobjective Association Rule Mining with Evolutionary Algorithm

机译:基于属性索引和统一设计的多目标关联规则的进化算法挖掘

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摘要

In association rule mining, evaluating an association rule needs to repeatedly scan database to compare the whole database with the antecedent, consequent of a rule and the whole rule. In order to decrease the number of comparisons and time consuming, we present an attribute index strategy. It only needs to scan database once to create the attribute index of each attribute. Then all metrics values to evaluate an association rule do not need to scan database any further, but acquire data only by means of the attribute indices. The paper visualizes association rule mining as a multiobjective problem rather than a single objective one. In order to make the acquired solutions scatter uniformly toward the Pareto frontier in the objective space, elitism policy and uniform design are introduced. The paper presents the algorithm of attribute index and uniform design based multiobjective association rule mining with evolutionary algorithm, abbreviated as IUARMMEA. It does not require the user-specified minimum support and minimum confidence anymore, but uses a simple attribute index. It uses a well-designed real encoding so as to extend its application scope. Experiments performed on several databases demonstrate that the proposed algorithm has excellent performance, and it can significantly reduce the number of comparisons and time consumption.
机译:在关联规则挖掘中,评估关联规则需要重复扫描数据库,以将整个数据库与规则和整个规则的先行结果进行比较。为了减少比较次数和耗时,我们提出了一种属性索引策略。它只需扫描数据库一次即可创建每个属性的属性索引。然后,所有用于评估关联规则的度量值都无需进一步扫描数据库,而仅通过属性索引来获取数据。本文将关联规则挖掘可视化为一个多目标问题,而不是一个单一目标问题。为了使获得的解决方案在客观空间中均匀地向帕累托边界扩散,引入了精英政策和统一设计。提出了一种基于属性索引和统一设计的基于多目标关联规则挖掘的进化算法,简称为IUARMMEA。它不再需要用户指定的最小支持和最小置信度,而是使用简单的属性索引。它使用经过精心设计的真实编码,以扩展其应用范围。在多个数据库上进行的实验表明,该算法具有出色的性能,并且可以显着减少比较次数和时间消耗。

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