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基于优化核参数支持向量机的意识任务分类
引用本文:薛建中,闫相国,郑崇勋,王浩军.基于优化核参数支持向量机的意识任务分类[J].生物物理学报,2003,19(3):322-326.
作者姓名:薛建中  闫相国  郑崇勋  王浩军
作者单位:西安交通大学生物医学工程研究所,西安,710049
基金项目:国家自然科学基金项目(30170257)
摘    要:根据支持向量机的基本原理,给出一种推广误差上界估计判据,并利用该判据进行最优核参数的自动选取。对三种不同意识任务的脑电信号进行多变量自回归模型参数估计,作为意识任务的特征向量,利用支持向量机进行训练和分类测试。分类结果表明,优化核参数的支持向量机分类器取得了最佳的分类效果,分类正确率明显高于径向基函数神经网络。

关 键 词:核参数  支持向量机  意识任务  结构风险  脑电  神经网络
修稿时间:2003年1月13日

CLASSIFICATIONS OF EEG DURING MENTAL TASK BASED ON SUPPORT VECTOR MACHINE WITH OPTIMAL KERNEL-PARAMETER
XUE Jian-zhong,YAN Xiang-guo,ZHENG Chong-xun,WANG Hao-jun.CLASSIFICATIONS OF EEG DURING MENTAL TASK BASED ON SUPPORT VECTOR MACHINE WITH OPTIMAL KERNEL-PARAMETER[J].Acta Biophysica Sinica,2003,19(3):322-326.
Authors:XUE Jian-zhong  YAN Xiang-guo  ZHENG Chong-xun  WANG Hao-jun
Abstract:The fundamental of support vector machine (SVM) based on structure risk minimization was introduced. An estimation formula of upper bound of generalization error was given, and the optimal kernel-parameter of the SVM was selected automatically by the formula. The feature vectors were extract-ed from six-channel electroencephalograph (EEG) data segments of four subjects under three mental tasks by the mean of a multivariate autoregressive (MVAR) model method. These vectors were considered as the inputs of classifiers to test classification accuracies for three task pairs. Average classification accura-cies indicated that the optimal kernel-parameter method could get optimal results, and was significantly better than that of Radial Basis Function (RBF) network.
Keywords:Structure  risk  Support  vector  machine  Mental  task  EEG  
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