批支持向量机训练模糊分类器与通道均衡应用

Chia-Feng Juang, Wei-Yuan Cheng, Teng-Chang Chen
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引用次数: 0

摘要

提出了一种批量支持向量机训练模糊分类器(BSVM-FC)。BSVM-FC是由TS (Takagi-Sugeno)型模糊规则组成的模糊系统。对于BSVM-FC的结构学习,初始不存在模糊规则。BSVM-FC在线根据训练数据的分布生成所有规则。采用线性支持向量机(SVM)对规则结果参数进行优化。使用支持向量机是为了给分类器更好的泛化性能。通过仿真验证了BSVM-FC的性能。BSVM-FC用于信道均衡。与高斯核支持向量机的比较表明,BSVM-FC在不影响泛化能力的前提下,加快了训练和测试时间,减小了分类器的尺寸。
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Batch Support Vector Machine-Trained Fuzzy Classifier with channel equalization application
This paper proposes a Batch Support Vector Machine-Trained Fuzzy Classifier (BSVM-FC). The BSVM-FC is a fuzzy system that consists of Takagi-Sugeno (TS)-type fuzzy rules. For structure learning of the BSVM-FC, there are no fuzzy rules initially. The BSVM-FC online generates all rules according to distributions of training data. A linear support vector machine (SVM) is used to tune the rule consequent parameters. The use of SVM is to give the classifier better generalization performance. Simulation is conducted to very the performance of the BSVM-FC. The BSVM-FC is applied to channel equalization. Comparisons with Gaussian-kernel SVM demonstrate that the BSVM-FC helps to speed up training and test times, and reduce classifier size without deteriorating the generalization ability.
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