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An improved approach to find membership functions and multiple minimum supports in fuzzy data mining

机译:在模糊数据挖掘中查找隶属函数和多个最小支持的改进方法

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摘要

Fuzzy mining approaches have recently been discussed for deriving fuzzy knowledge. Since items may have their own characteristics, different minimum supports and membership functions may be specified for different items. In the past, we proposed a genetic-fuzzy data-mining algorithm for extracting minimum supports and membership functions for items from quantitative transactions. In that paper, minimum supports and membership functions of all items are encoded in a chromosome such that it may be not easy to converge. In this paper, an enhanced approach is proposed, which processes the items in a divide-and-conquer strategy. The approach is called divide-and-conquer genetic-fuzzy mining algorithm for items with Multiple Minimum Supports (DGFMMS), and is designed for finding minimum supports, membership functions, and fuzzy association rules. Possible solutions are evaluated by their requirement satisfaction divided by their suitability of derived membership functions. The proposed GA framework maintains multiple populations, each for one item's minimum support and membership functions. The final best minimum supports and membership functions in all the populations are then gathered together to be used for mining fuzzy association rules. Experimental results also show the effectiveness of the proposed approach.
机译:最近已经讨论了模糊挖掘方法来推导模糊知识。由于项目可能具有自己的特征,因此可以为不同的项目指定不同的最小支持和成员资格功能。过去,我们提出了一种遗传模糊数据挖掘算法,用于从定量交易中提取项目的最小支持和隶属函数。在那篇论文中,所有项目的最小支持度和隶属度函数都编码在一条染色体中,因此可能不容易收敛。本文提出了一种增强的方法,该方法以分而治之的策略处理项目。该方法称为具有多重最小支持(DGFMMS)的物品的分治法遗传模糊挖掘算法,旨在查找最小支持,隶属函数和模糊关联规则。可能的解决方案通过其需求满意度除以其派生隶属度函数的适用性来评估。拟议的通用航空框架保留了多个人群,每个人群都具有一项项目的最低支持和成员职能。然后将所有种群中的最终最佳最小支持度和隶属度函数汇总在一起,以用于挖掘模糊关联规则。实验结果也表明了该方法的有效性。

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