Fuzzy regression analysis using neural networks

IF 3.2 1区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS
Hisao Ishibuchi, Hideo Tanaka
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引用次数: 143

Abstract

In this paper, we propose simple but powerful methods for fuzzy regression analysis using neural networks. Since neural networks have high capability as an approximator of nonlinear mappings, the proposed methods can be applied to more complex systems than the existing LP based methods. First we propose learning algorithms of neural networks for determining a nonlinear interval model from the given input-output patterns. A nonlinear interval model whose outputs approximately include all the given patterns can be determined by two neural networks. Next we show two methods for deriving nonlinear fuzzy models from the interval model determined by the proposed algorithms. Nonlinear fuzzy models whose h-level sets approximately include all the given patterns can be derived. Last we show an application of the proposed methods to a real problem.

神经网络模糊回归分析
在本文中,我们提出了一种简单而强大的神经网络模糊回归分析方法。由于神经网络作为非线性映射的逼近器具有很高的能力,因此所提出的方法可以应用于比现有的基于LP的方法更复杂的系统。首先,我们提出了神经网络的学习算法,用于从给定的输入输出模式中确定非线性区间模型。一个输出近似包含所有给定模式的非线性区间模型可以由两个神经网络确定。接下来,我们展示了两种从所提出算法确定的区间模型导出非线性模糊模型的方法。可以导出h级集近似包含所有给定模式的非线性模糊模型。最后,给出了所提方法在实际问题中的应用。
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来源期刊
Fuzzy Sets and Systems
Fuzzy Sets and Systems 数学-计算机:理论方法
CiteScore
6.50
自引率
17.90%
发文量
321
审稿时长
6.1 months
期刊介绍: Since its launching in 1978, the journal Fuzzy Sets and Systems has been devoted to the international advancement of the theory and application of fuzzy sets and systems. The theory of fuzzy sets now encompasses a well organized corpus of basic notions including (and not restricted to) aggregation operations, a generalized theory of relations, specific measures of information content, a calculus of fuzzy numbers. Fuzzy sets are also the cornerstone of a non-additive uncertainty theory, namely possibility theory, and of a versatile tool for both linguistic and numerical modeling: fuzzy rule-based systems. Numerous works now combine fuzzy concepts with other scientific disciplines as well as modern technologies. In mathematics fuzzy sets have triggered new research topics in connection with category theory, topology, algebra, analysis. Fuzzy sets are also part of a recent trend in the study of generalized measures and integrals, and are combined with statistical methods. Furthermore, fuzzy sets have strong logical underpinnings in the tradition of many-valued logics.
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