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A Comparison of Different Fitness Functions for Extracting Membership Functions Used in Fuzzy Data Mining

机译:模糊数据挖掘中提取隶属度函数的不同适应度函数的比较

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In this paper, a GA-based framework for finding membership functions suitable for fuzzy mining problems is proposed. Each individual represents a possible set of membership functions for the items and is divided into two parts, control genes and parametric genes. Control genes are encoded into binary strings and used to determine whether membership functions are active or not. Each set of membership functions for an item is encoded as parametric genes with real-number schema. Seven fitness functions are proposed, each of which is used to evaluate the goodness of the obtained membership functions and used as the evolutionary criteria in GA. Experiments are also made to show the effectiveness of the framework and to compare the seven fitness functions.
机译:在本文中,提出了一种用于寻找适合于模糊挖掘问题的遗址函数的基于GA的框架。每个单独代表物品的可能成员函数集,分为两部分,控制基因和参数基因。控制基因被编码为二进制字符串,并用于确定成员函数是否有效。项目的每组成员函数都被编码为具有实数模式的参数基因。提出了七种健身功能,每个功能用于评估所获得的隶属功能的良好,并用作GA的进化标准。还制定了实验来展示框架的有效性,并比较七种健身功能。

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