Multi-level Fuzzy Association Rules Mining via Determining Minimum Supports and Membership Functions

E. Mahmoudi, Elahe Sabetnia, M. N. Torshiz, Mehrdad Jalali, G. T. Tabrizi
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引用次数: 12

Abstract

Association rule mining is sought for items through a fairly large data set relation are certainly consequential. The traditional association mining based on a uniform minimum support, either missed interesting patterns of low support or suffered from the bottleneck of itemset generation. An alternative solution relies on exploiting support constraints which specifies the required minimum support itemsets. This paper proposes an ACS-based algorithm to determine membership functions for each item followed by computing minimum supports. It therefore will run the fuzzy multi-level mining algorithm for extracting knowledge implicit in quantitative transactions, immediately. In order to address this need, the new approach can express three profits includes specifying the membership functions for each items, computing the minimum support for each item regarding to characteristic for each item in database and making a system automation. We considered an algorithm that can cover the multiple level association rules under multiple item supports, significantly.
基于最小支持度和隶属度函数的多级模糊关联规则挖掘
关联规则挖掘是通过一个相当大的数据集寻找项目的关系,当然是相应的。传统的基于统一最小支持度的关联挖掘要么错过了低支持度的有趣模式,要么存在项集生成的瓶颈。另一种解决方案依赖于利用支持约束,它指定了所需的最小支持项集。本文提出了一种基于acs的算法来确定每个项目的隶属函数,然后计算最小支持度。因此,它将立即运行模糊多级挖掘算法来提取定量交易中隐含的知识。为了满足这一需求,该方法可以实现三个方面的好处:指定每个项目的隶属函数,根据数据库中每个项目的特征计算每个项目的最小支持度,实现系统自动化。我们考虑了一种能够覆盖多条目支持下的多级关联规则的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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