Genetic algorithm versus memetic algorithm for association rules mining

H. Drias
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引用次数: 6

Abstract

This paper deals with association rules mining using evolutionary algorithms. All previous bio-inspired based association rules mining approaches generate non admissible rules, which cannot be exploited by the end-user. To cope with this issue, we propose two approaches that avoid non admissible rules by developing a new strategy called delete and decomposition strategy. If an item appears in the antecedent and the consequent parts of a given rule, the latter is decomposed in two admissible rules. Then, we delete such item from the antecedent part of the first rule and from the consequent part of the second rule. Afterwards, we design a genetic algorithm called IARMGA and a memetic algorithm called IARMMA for association rules mining. Several experiments were carried out using both synthetic and reals instances. The results reveal a compromise between the execution time and the quality of output rules. IARMGA is faster than IARMMA whereas the latter outperforms the former in terms of rules quality.
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遗传算法与模因算法的关联规则挖掘
本文研究了基于进化算法的关联规则挖掘。以前所有基于生物启发的关联规则挖掘方法都会生成不可接受的规则,这些规则不能被最终用户利用。为了解决这个问题,我们提出了两种方法,通过开发一种称为删除和分解的新策略来避免不允许的规则。如果一个条目出现在给定规则的先行部分和后置部分,则后置部分分解为两个可接受的规则。然后,我们从第一条规则的前置部分和第二条规则的后置部分中删除该条目。随后,我们设计了一种名为IARMGA的遗传算法和一种名为IARMMA的模因算法用于关联规则挖掘。利用合成实例和实际实例进行了若干实验。结果揭示了执行时间和输出规则质量之间的折衷。IARMGA比IARMMA更快,而后者在规则质量方面优于前者。
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