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Journal of Information Science and Engineering, Vol. 23 No. 3, pp. 839-853


Multiple Compensatory Neural Fuzzy Networks Fusion Using Fuzzy Integral


Chi-Yung Lee and Cheng-Jian Lin*
Department of Computer Science and Information Engineering 
Nan Kai Institute of Technology 
Nantou, 542 Taiwan 
*Department of Computer Science and Information Engineering 
Chaoyang University of Technology 
Taichung, 413 Taiwan 
E-mail: cjlin@mail.cyut.edu.tw


    This paper presents a novel method for combining multiple compensatory neural fuzzy networks (CNFN) using fuzzy integral. The fusion of multiple classifiers can overcome the limitations of a single classifier since the classifiers complement each other. A fuzzy integral is a better combination scheme than majority voting method that uses the subjectively defined relevance of classifiers. A combination of multiple CNFN classifiers with fuzzy integral (FI) is proposed to achieve data classification with higher accuracy than existing traditional methods. The advantage of the proposed method is that not only are the classification results combined but the relative importance of the different networks is also considered. Experimental results show that the fusion of multiple CNFNs using fuzzy integral can perform better than existing traditional methods.


Keywords: compensatory operation, neural fuzzy network, classification, fuzzy integral, fuzzy measures, on-line learning

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