An OrdinationFuzzy MinMax Neural Network Classifier on Unlabelled Pattern Classification
HU Jing, YANG Jing, GAO Jun
Laboratory of Image Information Processing, School of Computer and Information, Hefei University of Technology, Hefei 230009 Center for Biomimetic Sensing and Control Research, Institute of Intelligent Machines, Chinese Academy of Sciences, Hefei 230031
Abstract:An ordinationfuzzy minmax neural network(OFMM) based on nonmetric multidimensional scaling (MDS) is proposed to solve the classification problems of unlabelled input pattern. Firstly, all the input patterns are sorted by MDS to get their similarity measures. Then these measures are used to supervise the following expansion and contraction stage of hyperboxes for classification. OFMM shows the improvements in the validity of unlabelled patterns classification, the network structure, and training time. The experimental results on standard dataset demonstrate that OFMM is a practical and effective classifier which is superior to the traditional generalfuzzy minmax neural network (GFMM).
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