Title :
ϵ-insensitive fuzzy c-regression models: introduction to ϵ-insensitive fuzzy modeling
Author_Institution :
Div. of Biomed. Electron., Silesian Univ. of Technol., Zabrze, Poland
Abstract :
This paper introduces a new ε-insensitive fuzzy c-regression models (εFCRM), that can be used in fuzzy modeling. To fit these regression models to real data, a weighted ε-insensitive loss function is used. The proposed method make it possible to exclude an intrinsic inconsistency of fuzzy modeling, where crisp loss function (usually quadratic) is used to match real data and the fuzzy model. The ε-insensitive fuzzy modeling is based on human thinking and learning. This method allows easy control of generalization ability and outliers robustness. This approach leads to c simultaneous quadratic programming problems with bound constraints and one linear equality constraint. To solve this problem, computationally efficient numerical method, called incremental learning, is proposed. Finally, examples are given to demonstrate the validity of introduced approach to fuzzy modeling.
Keywords :
fuzzy neural nets; generalisation (artificial intelligence); learning (artificial intelligence); pattern clustering; quadratic programming; regression analysis; ϵ-insensitive fuzzy c-regression models; ϵ-insensitive loss function; bound constraints; c simultaneous quadratic programming problems; crisp loss function; fuzzy clustering; generalization ability; human learning; human thinking; incremental learning; linear equality constraint; outliers robustness; real data; Computational modeling; Error correction; Fuzzy sets; Loss measurement; Minimization methods; Noise robustness; Statistical learning; Training data;
Journal_Title :
Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
DOI :
10.1109/TSMCB.2002.804371