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Generating Fuzzy Rule-based Systems from Examples Based on Robust Support Vector Machine

Generating Fuzzy Rule-based Systems from Examples Based on Robust Support Vector Machine
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摘要 This paper firstly proposes a new support vector machine regression (SVR) with a robust loss function, and designs a gradient based algorithm for implementation of the SVR, then uses the SVR to extract fuzzy rules and designs fuzzy rule-based system. Simulations show that fuzzy rule-based system technique based on robust SVR achieves superior performance to the conventional fuzzy inference method, the proposed method provides satisfactory performance with excellent approximation and generalization property than the existing algorithm. This paper firstly proposes a new support vector machine regression (SVR) with a robust loss function, and designs a gradient based algorithm for implementation of the SVR,then uses the SVR to extract fuzzy rules and designs fuzzy rule-based system. Simulations show that fuzzy rule-based system technique based on robust SVR achieves superior performance to the conventional fuzzy inference method, the proposed method provides satisfactory performance with excellent approximation and generalization property than the existing algorithm.
作者 贾泂 张浩然
出处 《Journal of Donghua University(English Edition)》 EI CAS 2006年第6期144-147,共4页 东华大学学报(英文版)
基金 Supported by Zhejiang Province Nature Science Fund (No.Y106259)
关键词 support vector machine fuzzy rules rule-based system generalization. 支持向量机 模糊理论 广义性 计算方法
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