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基于随机子空间的多分类器集成
引用本文:叶云龙,杨明.基于随机子空间的多分类器集成[J].南京师范大学学报,2008,8(4):87-90.
作者姓名:叶云龙  杨明
作者单位:南京师范大学数学与计算机科学学院,江苏南京210097
摘    要:提出了一种基于随机子空间的多分类器集成算法RFSEn.首先选择一个合适的子空间大小,然后随机选择特征子集并投影,并得到子空间上的基分类器,从而通过基分类器构成集成分类器,并由集成分类器来进行文本的分类.将该算法与单一分类器和基于重抽样技术的bagging算法进行了比较,在标准数据集上进行了实验.结果表明,该方法不仅优于单一分类器的分类性能,而且一定程度上优于bagging算法.

关 键 词:随机子空间  分类器集成  重抽样

Multi-Classifier Ensemble Based on Random Feature Subspace
Ye Yunlong,Yang Ming.Multi-Classifier Ensemble Based on Random Feature Subspace[J].Journal of Nanjing Nor Univ: Eng and Technol,2008,8(4):87-90.
Authors:Ye Yunlong  Yang Ming
Affiliation:Ye Yunlong,Yang Ming(School of Mathematics , Computer Science,Nanjing Normal University,Nanjing 210097,China)
Abstract:In this paper,we propose an ensemble algorithm called RFSEn which is based on random feature subspace.First,an appropriate feature subset size is selected,then subsets of features are randomly and projected on the training set,and the primary classifiers of subspace are obtained,and thus ensembled classifiers are formed with these primary classifiers.At last,we use the ensembled classifier to classify the text.We compare the algorithm with bagging algorithm which is based on re-sampling techniques and singl...
Keywords:random sub-space  classifier ensemble  re-sampling  
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