范玉刚, 李平, 宋执环. 基于样本取样的SMO算法[J]. 信息与控制, 2004, 33(6): 665-669.
引用本文: 范玉刚, 李平, 宋执环. 基于样本取样的SMO算法[J]. 信息与控制, 2004, 33(6): 665-669.
FAN Yu-gang, LI Ping, SONG Zhi-huan. A Sampling-based SMO Algorithm[J]. INFORMATION AND CONTROL, 2004, 33(6): 665-669.
Citation: FAN Yu-gang, LI Ping, SONG Zhi-huan. A Sampling-based SMO Algorithm[J]. INFORMATION AND CONTROL, 2004, 33(6): 665-669.

基于样本取样的SMO算法

A Sampling-based SMO Algorithm

  • 摘要: 介绍了一种对样本集取样的方法,并在此基础上对序贯最小优化(sequential minimal optimization,SMO)算法进行了改进,提出了取样序贯最小优化(SSMO)算法.SSMO算法去掉了大部分非支持向量,将支持向量逐渐收集到工作集中.实验结果表明,该方法提高了SMO算法的性能,缩短了支持向量机分类器的训练时间.

     

    Abstract: An algorithm of sampling data set is introduced.Se quential minimal optimization(SMO)algorithm is improved based on the sampling algorithm.Then a sampling-based SMO(S-SMO)algorithm is presented.The S-SMO algorithm reduces a majority of non-support vectors and support vectors are collected into work set gradually.It is shown in the experiments that S-SMO algorithm improves the performance of SMO and the time of training SVM classifier is reduced greatly.

     

/

返回文章
返回