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去噪声的加权SVM分类方法
引用本文:范昕炜,杜树新,吴铁军.去噪声的加权SVM分类方法[J].电路与系统学报,2004,9(4):97-102.
作者姓名:范昕炜  杜树新  吴铁军
作者单位:浙江大学 工业控制技术国家重点实验室,智能系统与决策研究所,浙江,杭州,310027
基金项目:国家863基金资助项目2002AA412010)
摘    要:针对支持向量机(SVM)本身抗噪声能力低和训练数据类别不均匀会造成分类结果偏向数目较大一类的倾向性等问题,本文提出了去噪声的加权SVM分类方法。在该方法中,通过引入主成分分析方法来降维去除噪声,再通过引入加权系数的方式,补偿了上述倾向性造成的不利影响,提高了预测分类精度。对污水处理过程运行状态的分类实验表明该方法的有效性。

关 键 词:支持向量机  主成分分析  分类精度  污水处理过程
文章编号:1007-0249(2004)04-0097-06

Noise-immune Weighted SVM Classification Algorithm
FAN Xin-wei,DU Shu-xin,WU Tie-jun.Noise-immune Weighted SVM Classification Algorithm[J].Journal of Circuits and Systems,2004,9(4):97-102.
Authors:FAN Xin-wei  DU Shu-xin  WU Tie-jun
Abstract:A new classification algorithm based on support vector machine (SVM) theory and principal component analysis (PCA) techniques is presented. Noise is eliminated by PCA to increases the predicted classification accuracy. When training sets with uneven class sizes are used, the result is undesirably biased towards the larger class. The cause of this effect and the compensation method are proposed in this paper. Numerical experiments for classifying operation state of wastewater treatment processes show that the proposed algorithm can be used to obtain better classification accuracy than the original SVM.
Keywords:support vector machine  principal component analysis  classification accuracy  wastewater treatment processes  
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