模糊隶属函数生成的一种新范式

Anagha Vaidya, P. Metkewar, S. Naik
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引用次数: 4

摘要

隶属度函数(MF)是一条曲线,它定义了如何将输入空间中的每个点映射到0到1之间的隶属度值(或隶属度)。输入空间有时被称为语域。本文进一步发展了基于模糊的算法,在算法的模糊逻辑模块中增加了自动生成隶属函数的特性。在此背景下,简要回顾了隶属函数生成的相关工作,并纳入了与之相关的规则。本文针对模糊逻辑设计的特点,提出了一种适合度查找方法。本文还对基于控制参数的关联规则的隶属度函数推导算法及其实现进行了评价。并以股票市场数据为例进行了应用,并与直观案例进行了分析比较
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Paradigm For Generation Of Fuzzy Membership Function
A membership function (MF) is a curve that defines how each point in the input space is mapped to a membership value (or degree of membership) between 0 and 1. The input space is sometimes referred to as the universe of discourse. This paper further develops the fuzzy-based algorithm to add the feature of automatic membership function generation in the fuzzy logic module of the algorithm. From this context, a short review of related work in membership function generation is given, and rules associated with it have been incorporated. In this paper, a one step ahead to the nature of the fuzzy logic-based design, a fitness finding method has been proposed. This paper also evaluates the proposed algorithm for deriving membership function based on association rule using control parameters with its implementation. The algorithm is applied by considering a case study of share market data and results are analyzed and compared with the intuitive cases
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