首页 | 本学科首页   官方微博 | 高级检索  
     

最小二乘隐空间支持向量机
引用本文:王玲,薄列峰,刘芳,焦李成.最小二乘隐空间支持向量机[J].计算机学报,2005,28(8):1302-1307.
作者姓名:王玲  薄列峰  刘芳  焦李成
作者单位:1. 西安电子科技大学智能信息处理研究所,西安,710071
2. 西安电子科技大学计算机学院,西安,710071
基金项目:本课题得到国家自然科学基金(60372050,60133010)和国家“八六三”高技术研究发展计划项目基金(2002AAl35080)资助.
摘    要:在隐空间中采用最小二乘损失函数,提出了最小二乘隐空间支持向量机(LSHSSVMs).同隐空间支持向量机(HSSVMs)一样,最小二乘隐空间支持向量机不需要核函数满足正定条件,从而扩展了支持向量机核函数的选择范围.由于采用了最小二乘损失函数,最小二乘隐空问支持向量机产生的优化问题为无约束凸二次规划,这比隐空间支持向量机产生的约束凸二次规划更易求解.仿真实验结果表明所提算法在计算时间和推广能力上较隐空间支持向量机存在一定的优势.

关 键 词:最小二乘隐空问支持向量机  隐空间支持向量机  支持向量机  最小二乘支持向量机  核函数
收稿时间:2004-02-16
修稿时间:2004-02-16

Least Squares Hidden Space Support Vector Machines
WANG Ling,BO Lie-Feng,LIU Fang,JIAO Li-Cheng.Least Squares Hidden Space Support Vector Machines[J].Chinese Journal of Computers,2005,28(8):1302-1307.
Authors:WANG Ling  BO Lie-Feng  LIU Fang  JIAO Li-Cheng
Abstract:Utilizing least squares loss function in the hidden space, least squares hidden space support vector machines (LSHSSVMs) are proposed in this paper. Like in the hidden space support vector machines (HSSVMs), the kernel functions used in LSHSSVMs are not necessary to satisfy the positive definite condition, so they can be chosen from a wide range. Due to the adoption of the least squares loss function, LSHSSVMs result in an unconstrained convex quadratic programming, which is more convenient to solve than the constrained convex quadratic programming yielded by HSSVMs. A conjugate gradient algorithm is designed to efficiently solve LSHSSVMs, and an analysis of computation time is also given. The comparative experimental results on pattern recognition and function regression show some advantages of LSHSSVMs over HSSVMs on the computational complexity and the generalization performance.
Keywords:least squares hidden space support vector machines  hidden space support vector machines  support vector machines  least squares support vector machines  kernel function
本文献已被 CNKI 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号