A hybrid continuity preserving inference strategy to speed up Takagi-Sugeno multiobjective genetic fuzzy systems

M. Cococcioni, R. Grasso, M. Rixen
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引用次数: 3

Abstract

The most popular inference method in Takagi-Sugeno (TS) fuzzy systems is the weighted averaging (WA), whereas the most investigated inference method in fuzzy rule-based classifier is probably the winner-takes-all (WTA). This paper first shows the time complexities associated with WA and WTA inference methods in Takagi-Sugeno fuzzy rule-based systems, also highlighting the strengths and the weaknesses of both approaches. Then it argues that using a hybrid of the two inference methods, namely the WTA during identification and the WA during the evaluation, allows advantaging of the strong points of the two methods, without inheriting most of their weakness. In particular, the hybrid formulation has a nice property which can be even mandatory in particular applications: it both guarantees that the TS system is continuous (provided that infinite support membership functions are used) and that it performs an approximate reasoning, by combining the conclusions of more than one rule. The interesting features of the hybrid method are demonstrated on a multiobjective genetic rule learning framework used for regression.
一种加速Takagi-Sugeno多目标遗传模糊系统的混合连续性保持推理策略
Takagi-Sugeno (TS)模糊系统中最常用的推理方法是加权平均(WA),而基于规则的模糊分类器中研究最多的推理方法可能是赢家通吃(WTA)。本文首先展示了基于Takagi-Sugeno模糊规则的系统中与WA和WTA推理方法相关的时间复杂性,并突出了这两种方法的优缺点。然后,它认为使用两种推理方法的混合,即在识别过程中使用WTA和在评估过程中使用WA,可以利用两种方法的优点,而不会继承它们的大部分缺点。特别是,混合公式有一个很好的性质,在特定的应用中甚至是强制性的:它既保证TS系统是连续的(只要使用无限支持隶属函数),又通过组合多个规则的结论来执行近似推理。在一个用于回归的多目标遗传规则学习框架上展示了混合方法的有趣特征。
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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