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Learning The Membership Function Contexts For Mining Fuzzy Association Rules By Using Genetic Algorithms

机译:用遗传算法学习模糊关联规则的隶属函数上下文

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摘要

Different studies have proposed methods for mining fuzzy association rules from quantitative data, where the membership functions were assumed to be known in advance. However, it is not an easy task to know a priori the most appropriate fuzzy sets that cover the domains of quantitative attributes for mining fuzzy association rules. This paper thus presents a new fuzzy data-mining algorithm for extracting both fuzzy association rules and membership functions by means of a genetic learning of the membership functions and a basic method for mining fuzzy association rules. It is based on the 2-tup!es linguistic representation model allowing us to adjust the context associated to the linguistic term membership functions. Experimental results show the effectiveness of the framework.
机译:不同的研究提出了从定量数据中挖掘模糊关联规则的方法,其中假定成员函数事先已知。但是,要事先了解覆盖挖掘模糊关联规则的定量属性域的最合适的模糊集并不是一件容易的事。因此,本文提出了一种新的模糊数据挖掘算法,该算法通过隶属函数的遗传学习来提取模糊关联规则和隶属函数,以及一种挖掘模糊关联规则的基本方法。它基于2语种语言表示模型,使我们能够调整与语言术语隶属函数相关的上下文。实验结果表明了该框架的有效性。

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