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一种自适应权值的多特征融合分类方法
引用本文:张文博,姬红兵,王磊.一种自适应权值的多特征融合分类方法[J].系统工程与电子技术,2013,35(6):1133-1137.
作者姓名:张文博  姬红兵  王磊
作者单位:西安电子科技大学电子工程学院, 陕西 西安 710071
摘    要:由于类别较多或者特征单一等原因,传统的支持向量机方法对一些复杂问题的分类,很难获得好的识别效果。首先使用一种树状结构将概率支持向量机推广到多分类问题|然后提出一种自适应权值的多特征融合方法,根据概率输出自动调整不同分类器的相关权值,将所有分类器的结果进行加权得到最终的判决结果。为解决实际应用中常出现的非平衡问题,提出综合权值方法,将类别权值与特征权值进行综合。实验结果表明,融合方法较之传统的支持向量机一对一方法以及概率支持向量机方法能够获得更高的识别率|对于非平衡问题,综合权值方法可以得到更加合理的识别结果。


Adaptive weighted feature fusion classification method
ZHANG Wen bo,JI Hong bing,WANG Lei.Adaptive weighted feature fusion classification method[J].System Engineering and Electronics,2013,35(6):1133-1137.
Authors:ZHANG Wen bo  JI Hong bing  WANG Lei
Institution:School of Electronic Engineering, Xidian University, Xi’an 710071, China
Abstract:Because the number of classes is large or the feature is simple, the conventional support vector machine (SVM) cannot achieve a good recognition performance for some complex classification problems. Firstly, the SVM method is extended to the multi class problems by using a tree structure. Then, an adaptive weighted feature fusion method is introduced. The weights of the different classifiers are automatically adjusted according to the probabilistic output and are used to calculate the final result. To solve the unbalance problem in the real applications, a compositive weights method which integrates the classes weights and the character weights is proposed. Simulation experiments show that the proposed method can achieve a higher recognition rate compared with the conventional SVM and probabilistic SVM (PSVM) and the compositive weights method can achieve a more logical result for the unbalance problems.
Keywords:
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