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稀疏最小二乘支持向量机
引用本文:甘良志,孙宗海,孙优贤.稀疏最小二乘支持向量机[J].浙江大学学报(自然科学版 ),2007,41(2):245-248.
作者姓名:甘良志  孙宗海  孙优贤
作者单位:1.浙江大学 工业控制技术国家重点实验室,浙江 杭州 310027; 2.徐州师范大学 电气工程学系,江苏 徐州 221116
基金项目:浙江省科技计划重点资助项目(2005C21087)
摘    要:针对大规模数据集的回归和分类问题,改进了最小二乘支持向量机.以再生核希尔伯特空间中的线性分析为基础,把样本集映射到再生空间中,然后张成再生空间的一个线性子空间,并求出这个子空间的基.利用基线性表示子空间中的其他元素,减小了求解矩阵的维数,通过求解规模相对较小的线性方程组完成对支持向量机的训练.采用该方法对较大规模的数据样本进行了回归和分类仿真试验,并与普通的最小二乘支持向量机进行比较.结果表明,采用该方法解决复杂非线性函数的回归和分类问题,不但可以得到稀疏解,而且计算速度比普通最小二乘支持向量机提高了约20%.

关 键 词:最小二乘支持向量机  再生核希尔伯特空间  径向基函数
文章编号:1008-973X(2007)02-0245-04
收稿时间:2005-10-28
修稿时间:2005-10-28

Sparse least squares support vector machine
GAN Liang-zhi,SUN Zong-hai,SUN You-xian.Sparse least squares support vector machine[J].Journal of Zhejiang University(Engineering Science),2007,41(2):245-248.
Authors:GAN Liang-zhi  SUN Zong-hai  SUN You-xian
Affiliation:1. National Laboratory of Industrial Control Technology, Zhej iang University, Hangzhou 310027, China ; 2. Department of Electrical Engineering, Xuzhou Normal University, Xuzhou 221116, China
Abstract:Sparse least squares support vector machine(SLS-SVM) was proposed to resolve the problems of regression and classification of large sample dataset.The samples were mapped into reproducing kernel Hilbert space(RKHS) and a subspace was spanned there.Then the basis of the subspace was found,which could represent all the samples linearly.The SLS-SVM was obtained by solving a small equations set.Two numerical examples illustrate that the approach can fit nonlinear models and classify complex samples for large dataset.Compared with classical least squares support vector machine,this method can find sparse solutions without any pruning or surgeon,and computing speed is much faster because the final result can be obtained by solving a comparatively small-scale equations set.
Keywords:least squares support vector machine  reproducing kernel Hilbert space  radial basis function
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