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Design and behavior study of a grammar-guided genetic programming algorithm for mining association rules

机译:关联规则的语法指导遗传规划算法的设计与行为研究

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This paper presents a proposal for the extraction of association rules called G3PARM (Grammar-Guided Genetic Programming for Association Rule Mining) that makes the knowledge extracted more expressive and flexible. This algorithm allows a context-free grammar to be adapted and applied to each specific problem or domain and eliminates the problems raised by discretization. This proposal keeps the best individuals (those that exceed a certain threshold of support and confidence) obtained with the passing of generations in an auxiliary population of fixed size n. G3PARM obtains solutions within specified time limits and does not require the large amounts of memory that the exhaustive search algorithms in the field of association rules do. Our approach is compared to exhaustive search (Apriori and FP-Growth) and genetic (QuantMiner and ARMGA) algorithms for mining association rules and performs an analysis of the mined rules. Finally, a series of experiments serve to contrast the scalability of our algorithm. The proposal obtains a small set of rules with high support and confidence, over 90 and 99% respectively. Moreover, the resulting set of rules closely satisfies all the dataset instances. These results illustrate that our proposal is highly promising for the discovery of association rules in different types of datasets.
机译:本文提出了一种用于提取关联规则的建议,称为G3PARM(用于关联规则挖掘的语法指导遗传规划),它使提取的知识更具表达性和灵活性。该算法允许将上下文无关的语法调整并应用于每个特定的问题或领域,并消除了离散化带来的问题。该建议使世代相传的最佳个体(那些超过支持和信心阈值的个体)保持在固定大小n的辅助人口中。 G3PARM在指定的时限内获得解决方案,并且不需要关联规则领域中穷举搜索算法所需要的大量内存。我们的方法与穷举搜索(Apriori和FP-Growth)和遗传算法(QuantMiner和ARMGA)进行了关联规则挖掘,并对挖掘的规则进行了分析。最后,一系列实验用来对比我们算法的可扩展性。该提案获得了少量支持和信任的规则,分别超过90%和99%。此外,所产生的规则集非常满足所有数据集实例。这些结果说明,我们的建议对于在不同类型的数据集中发现关联规则非常有前途。

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