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一种基于凸壳算法的SVM集成方法
引用本文:张宏达,王晓丹,白冬婴,刘倞源.一种基于凸壳算法的SVM集成方法[J].计算机工程,2008,34(17):28-30.
作者姓名:张宏达  王晓丹  白冬婴  刘倞源
作者单位:空军工程大学导弹学院,三原,713800
基金项目:国家自然科学基金,陕西省自然科学基金,空军工程大学导弹学院研究生学位论文创新基金
摘    要:为提高支持向量机(SVM)集成的训练速度,提出一种基于凸壳算法的SVM集成方法,得到训练集各类数据的壳向量,将其作为基分类器的训练集,并采用Bagging策略集成各个SVM。在训练过程中,通过抛弃性能较差的基分类器,进一步提高集成分类精度。将该方法用于3组数据,实验结果表明,SVM集成的训练和分类速度平均分别提高了266%和25%。

关 键 词:凸壳算法  支持向量机  集成
修稿时间: 

SVM Ensemble Approach Based on Convex-hull Algorithm
ZHANG Hong-da,WANG Xiao-dan,BAI Dong-ying,LIU Jing-yuan.SVM Ensemble Approach Based on Convex-hull Algorithm[J].Computer Engineering,2008,34(17):28-30.
Authors:ZHANG Hong-da  WANG Xiao-dan  BAI Dong-ying  LIU Jing-yuan
Affiliation:(Missile Institute, Air Force Engineering University, Sanyuan 713800)
Abstract:To improve the training speed of Support Vector Machine(SVM) ensemble, this paper proposes a new approach of SVM ensemble using convex-hull algorithm. The approach applies convex-hull algorithm to get from each class the hull vectors and takes these hull vectors as the training dataset for every base-classifier, Bagging method is used to aggregate the base-classifiers. Threshold is set to discard the base-classifiers with weak performance in training the ensemble to further improve the classification accuracy. Experimental results obtained from applying the proposed approach to 3 different datasets indicate that on average it accelerates training by 266% and speeds up classifying by 25%.
Keywords:convex-hull algorithm  Support Vector Machine(SVM)  ensemble
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