Multi-classifier ensemble based on dynamic weights

被引:0
|
作者
Fuji Ren
Yanqiu Li
Min Hu
机构
[1] Hefei University of Technology,School of Computer and Information, Anhui Province Key Laboratory of Affective Computing and Advanced Intelligent Machine
[2] University of Tokushima,Graduate School of Advanced Technology&Science
来源
关键词
Dynamic weights; Multi-classifier ensemble; Reliability; Decision credibility; Face recognition;
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学科分类号
摘要
In this study, a novel multi-classifier ensemble method based on dynamic weights is proposed to reduce the interference of unreliable decision information and improve the accuracy of fusion decision. The algorithm defines decision credibility to describe the real-time importance of the classifier to the current target, combines this credibility with the reliability calculated by the classifier on the training data set and dynamically assigns the fusion weight to the classifier. Compared with other methods, the contribution of different classifiers to fusion decision in acquiring weights is fully evaluated in consideration of the capability of the classifier to not only identify different sample regions but also output decision information when identifying specific targets. Experimental results on public face databases show that the proposed method can obtain higher classification accuracy than that of single classifier and some popular fusion algorithms. The feasibility and effectiveness of the proposed method are verified.
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页码:21083 / 21107
页数:24
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