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A Cluster-Based Method for Mining Generalized Fuzzy Association Rules

机译:基于聚类的广义模糊关联规则挖掘方法

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The discovery of generalized fuzzy association rules is a very important data-mining task, because more general and qualitative knowledge can be uncovered for decision making. In the literature, few algorithms have been proposed for such a problem, moreover, the efficiency of these algorithms needs to be improved to handle real-world large datasets. In this paper, we present-an efficient method named cluster-based fuzzy association rule (CBFAR). The CBFAR method creates cluster-based fuzzy-sets tables by scanning the database once, and then clustering the transaction records to the k-th cluster table, where the length of a record is k. Based on the information stored in the table, less contrast and database scans are required to generate large itemsets. Experimental results show that CBFAR outperforms a known Apriori-based fuzzy association rules mining algorithm.
机译:广义模糊关联规则的发现是一项非常重要的数据挖掘任务,因为可以发现更多的一般性和定性知识用于决策。在文献中,很少有人提出针对该问题的算法,此外,需要提高这些算法的效率以处理现实世界中的大型数据集。在本文中,我们提出了一种名为基于聚类的模糊关联规则(CBFAR)的有效方法。 CBFAR方法通过扫描数据库一次,然后将事务记录聚类到第k个聚簇表(其中记录的长度为k)来创建基于聚类的模糊集表。根据表中存储的信息,需要较少的对比和数据库扫描即可生成大项目集。实验结果表明,CBFAR优于已知的基于Apriori的模糊关联规则挖掘算法。

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