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一种可减少训练时间的分层并行支持向量机方法
引用本文:文益民,廖洪元,周立华.一种可减少训练时间的分层并行支持向量机方法[J].南京师范大学学报,2005,5(1):8-11.
作者姓名:文益民  廖洪元  周立华
作者单位:湖南工业职业技术学院信息工程系 湖南长沙410007 (文益民,廖洪元),湖南工业职业技术学院信息工程系 湖南长沙410007(周立华)
基金项目:湖南省青年骨干教师资助项目(湘教通[2001]204号).
摘    要:基于支持向量的本质和并行计算方法,提出了一种新的分层并行的机器学习方法以加速支持向量机的训练过程.该方法首先按照分而治之的思想将原分类问题分成若干子问题.然后将支持向量机的训练过程分解成级联的两个层次,在每层采用并行的方法训练各个子支持向量机.各层训练集中的非支持向量被逐步筛选掉,交叉合并的规则保证问题的一致性.仿真结果表明该方法在保证分类器推广能力的同时,缩短了训练支持向量机的时间.

关 键 词:分层筛选  支持向量机  交叉合并
文章编号:1672-1292-(2005)01-0008-04
修稿时间:2004年11月16

A Hierarchical and Parallel Support Vector Machines Algorithm for Reducing the Training Time
WEN Yimin,LIAO Hongyuan,ZHOU Lihua.A Hierarchical and Parallel Support Vector Machines Algorithm for Reducing the Training Time[J].Journal of Nanjing Nor Univ: Eng and Technol,2005,5(1):8-11.
Authors:WEN Yimin  LIAO Hongyuan  ZHOU Lihua
Abstract:Based on the essence of support vectors and parallel algorithm, the paper proposes a novel strategy of filtering the training samples in a hierarchical and parallel way to speed up the training of support vector machines (SVMs). During the training process, the entire classification problem is divided into several small sub-problems that can be handled in a parallel way. Having hierarchically filtered out the non-support-vector data, we can obtain the final training data set, which is used to train a SVM that will be used as the final pattern classifier. In order to keep the consistency, the cross-combining principle is introduced. The simulation results illustrate that our method speeds up training while maintaining the generalization accuracy of SVMs.
Keywords:hierarchical filtering  support vector machines  cross-combining
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