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Support Vector Machine-based Fuzzy Rules Acquisition System

Support Vector Machine-based Fuzzy Rules Acquisition System
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摘要 This paper proposes a support vector machine-based fuzzy rules acquisition system(SVM-FRAS) .The character of SVM in extracting support vector provides a mechanism to extract fuzzy If-Then rules from the training data set.We construct the fuzzy inference system using fuzzy basis function(FBF) .The gradient technique is used to tune the fuzzy rules and the inference system.Theoretical analysis and comparative tests are performed comparing with other fuzzy systems.Experimental results show the SVM-FRAS model possesses good generalization capability as well as high comprehensibility. This paper proposes a support vector machine-based fuzzy rules acquisition system (SVM-FRAS). The character of SVM in extracting support vector provides a mechanism to extract fuzzy If-Then rules from the training data set. We construct the fuzzy inference system using fuzzy basis function (FBF). The gradient technique is used to tune the fuzzy rules and the inference system. Theoretical analysis and comparative tests are performed comparing with other fuzzy systems. Experimental results show the SVM-FRAS model possesses good generalization capability as well as high comprehensibility.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2009年第5期555-561,共7页 上海交通大学学报(英文版)
基金 the Shanghai Sciences and Technology Committee under Grant No.08DZ1202500 (No.08DZ1202502) the Young Faculty Research Grant of Shanghai Maritime University the Shanghai Young Faculty Research Grant (No.shs08032)
关键词 MODELING fuzzy rules support vector machine (SVM) 支持向量机 模糊规则 采集系统 模糊推理系统 特征提取 模糊基函数 获取系统 训练数据
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参考文献7

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