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超球体多类支持向量机理论
引用本文:徐图,何大可.超球体多类支持向量机理论[J].控制理论与应用,2009,26(11):1293-1297.
作者姓名:徐图  何大可
作者单位:西南交通大学信息科学与技术学院,四川成都,610031
基金项目:西南交通大学青年教师科研起步项目 
摘    要:目前的多类分类器大多是经二分类器组合而成的,存在训练速度较慢的问题,在分类类别多的时候,会遇到很大困难,超球体多类支持向量机将超球体单类支持向量机扩展到多类问题,由于每类样本只参与一个超球体支持向量机的训练.因此,这是一种直接多类分类器,训练效率明显提高.为了有效训练超球体多类支持向量机,利用SMO算法思想,提出了超球体支持向量机的快速训练算法.同时对超球体多类支持向量机的推广能力进行了理论上的估计.数值实验表明,在分类类别较多的情况,这种分类器的训练速度有很大提高,非常适合解决类别数较多的分类问题.超球体多类支持向量机为研究快速直接多类分类器提供了新的思路.

关 键 词:支持向量机  多类支持向量机  SMO训练算法  推广性能  超球体多类支持向量机
收稿时间:2008/3/17 0:00:00
修稿时间:2009/2/24 0:00:00

Theory of hypersphere multiclass SVM
Xu Tu and HE Da-ke.Theory of hypersphere multiclass SVM[J].Control Theory & Applications,2009,26(11):1293-1297.
Authors:Xu Tu and HE Da-ke
Affiliation:School of Information Science and Technology, SouthWest JiaoTong University
Abstract:Constructed by standard binary classes support vector machine(SVM), present multiclass SVMs are usually very slow to be trained. When a large number of categories of data are to be classified, the training work could be very difficult. By extending the hypersphere one-class SVM(HSOC-SVM) to a hypersphere multiclass SVM(HSMC-SVM), we build a fast training classifier HSOC-SVM. Its training speed is higher than that of the present multiclass classifiers, because each category data trains only one HSOC-SVM. In order to improve the training speed for the HSMC-SVM, we propose a training algorithm based on the existing algorithm for SMO. Meanwhile, the theoretic upper bound of the generalized error of HSMC-SVM is analyzed for evaluating the general performance of HSMC-SVM. Numeric experiments show that the training speed of HSMC-SVM is especially improved when many categories of data are to be classified. Thus, HSMC-SVM provides a new idea for developing fast-directed multiclass classifiers in machine learning area.
Keywords:support vector machine(SVM)  multi-class SVM  SMO algorithm  generalization performance  HSMC-SVM
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