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G3PARM: A Grammar Guided Genetic Programming algorithm for mining association rules

机译:G3PARM:用于关联规则挖掘的语法指导遗传规划算法

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This paper presents the G3PARM algorithm for mining representative association rules. G3PARM is an evolutionary algorithm that uses G3P (Grammar Guided Genetic Programming) and an auxiliary population made up of its best individuals who will then act as parents for the next generation. Due to the nature of G3P, the G3PARM algorithm allows us to obtain valid individuals by defining them through a context-free grammar and, furthermore, this algorithm is generic with respect to data type. We compare our algorithm to two multiobjective algorithms frequently used in literature and known as NSGA2 (Non dominated Sort Genetic Algorithm) and SPEA2 (Strength Pareto Evolutionary Algorithm) and demonstrate the efficiency of our algorithm in terms of running-time, coverage and average support, providing the user with high representative rules.
机译:本文提出了用于挖掘代表性关联规则的G3PARM算法。 G3PARM是一种进化算法,它使用G3P(语法指导遗传编程)和由其最佳个体组成的辅助种群,这些个体将作为下一代的父母。由于G3P的性质,G3PARM算法允许我们通过上下文无关的语法定义有效的个体,从而获得有效的个体,此外,该算法在数据类型方面是通用的。我们将我们的算法与文献中经常使用的称为NSGA2(非主导排序遗传算法)和SPEA2(强度帕累托进化算法)的两种多目标算法进行了比较,并从运行时间,覆盖范围和平均支持等方面证明了我们算法的效率,为用户提供较高的代表规则。

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