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ARM-AMO: An efficient association rule mining algorithm based on animal migration optimization

机译:ARM-AMO:一种基于动物迁徙优化的有效关联规则挖掘算法

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Association rule mining (ARM) aims to find out association rules that satisfy predefined minimum support and confidence from a given database. However, in many cases ARM generates extremely large number of association rules, which are impossible for end users to comprehend or validate, thereby limiting the usefulness of data mining results. In this paper, we propose a new mining algorithm based on animal migration optimization (AMO), called ARM AMO, to reduce the number of association rules. It is based on the idea that rules which are not of high support and unnecessary are deleted from the data. Firstly, Apriori algorithm is applied to generate frequent itemsets and association rules. Then, AMO is used to reduce the number of association rules with a new fitness function that incorporates frequent rules. It is observed from the experiments that, in comparison with the other relevant techniques, ARM AMO greatly reduces the computational time for frequent item set generation, memory for association rule generation, and the number of rules generated.
机译:关联规则挖掘(ARM)旨在从给定的数据库中找出满足预定义的最小支持和置信度的关联规则。但是,在许多情况下,ARM会生成大量的关联规则,最终用户无法理解或验证这些关联规则,从而限制了数据挖掘结果的实用性。在本文中,我们提出了一种基于动物迁徙优化(AMO)的新挖掘算法,称为ARM AMO,以减少关联规则的数量。它基于这样的想法,即从数据中删除了不被高度支持和不必要的规则。首先,采用Apriori算法生成频繁项集和关联规则。然后,AMO用于通过结合了频繁规则的新适应性函数来减少关联规则的数量。从实验中可以看出,与其他相关技术相比,ARM AMO大大减少了频繁项集生成的计算时间,关联规则生成的内存以及生成的规则数量。

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