Journal of Japan Society for Fuzzy Theory and Systems
Online ISSN : 2432-9932
Print ISSN : 0915-647X
ISSN-L : 0915-647X
Fuzzy Regression Analysis Using RCE-based Fuzzy Learning Network
Xinxue ZHANGShin'ichiro OMACHIHirotomo ASO
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1997 Volume 9 Issue 4 Pages 533-540

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Abstract
When we attempt to model a complex system including human as an important component, it may be difficult to represent the system by a deterministic mathematical model. The main reason of this difficulty is that the system itself inherently has some fuzziness concerning subjective judgement of human. In this paper, we propose a fuzzy nonlinear regresion analysis method with RFLN(RCE-based Fuzzy Learning Network), which is capable of extracting knowledge of the experts automatically, RFLN is an extended RCE (Restricted Coulomb Energy) model, hence it needs few iterations in learning and its additional learning is easy. The proposed method has higher flexibility than fuzzy linear regression analysis models. We propose learning algorithms to identify a nonlinear interval model which approximately includes all the given input-output data. The proposed method has characteristics of faster learning and of easier additional learning. The effectiveness of the method is shown by numerical experiments.
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© 1997 Japan Society for Fuzzy Theory and Intelligent Informatics
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