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采用二重扰动机制的支持向量机的集成训练算法
引用本文:贾华丁,游志胜,王磊. 采用二重扰动机制的支持向量机的集成训练算法[J]. 控制与决策, 2008, 23(7)
作者姓名:贾华丁  游志胜  王磊
作者单位:四川大学计算机科学与工程学院,成都,610064;西南财经大学经济信息工程学院,成都,610074;四川大学计算机科学与工程学院,成都,610064;西南财经大学经济信息工程学院,成都,610074
摘    要:为了有效提升支持向量机的泛化性能,提出两种集成算法对其进行训练.首先分析了扰动输入特征空间和扰动模型参数两种方式对于增大成员分类器之间差异性的作用;然后提出两种基于二重扰动机制的集成训练算法.其共同特点是,同时扰动输入特征空间和模型参数以产生成员分类器,并利用多数投票法对它们进行组合.实验结果表明,因为同时缩减了误差的偏差部分和方差部分,所以两种算法均能显著提升支持向量机的泛化性能.

关 键 词:支持向量机  集成算法  二重扰动机制  成员分类器

Ensemble algorithms for training support vector machine based on the double disturbance mechanism
JIA Hua-ding,YOU Zhi-sheng,WANG Lei. Ensemble algorithms for training support vector machine based on the double disturbance mechanism[J]. Control and Decision, 2008, 23(7)
Authors:JIA Hua-ding  YOU Zhi-sheng  WANG Lei
Affiliation:JIA Hua-ding1,2,YOU Zhi-sheng1,WANG Lei2 (1.School of Computer Science , Engineering,Sichuan University,Chengdu 610064,China,2.School of Economics Information Engineering,Southwest University of Finance , Economics,Chengdu 610074,China.)
Abstract:For improving the generalization performance of support vector machine(SVM) effectively,two ensemble algorithms are proposed to train SVM.Firstly,the effectivity of two different disturbance mechanisms on augmenting the diversities among member classifiers,disturbing feature subspace and disturbing model parameters is analyzed.Then,two ensemble algorithms are proposed based on the double disturbance mechanism.The common character of them is that,member classifier is generated by disturbing feature subspace ...
Keywords:Support vector machine  Ensemble algorithm  Double disturbance mechanism  Member classifier  
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