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Pairwise fusion matrix for combining classifiers

机译:组合分类器的成对融合矩阵

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摘要

Various fusion functions for classifier combination have been designed to optimize the results of ensembles of classifiers (EoC). We propose a pairwise fusion matrix (PFM) transformation, which produces reliable probabilities for the use of classifier combination and can be amalgamated with most existent fusion functions for combining classifiers. The PFM requires only crisp class label outputs from classifiers, and is suitable for high-class problems or problems with few training samples. Experimental results suggest that the performance of a PFM can be a notch above that of the simple majority voting rule (MAJ), and a PFM can work on problems where a behavior-knowledge space (BKS) might not be applicable. (C) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:已经设计了用于分类器组合的各种融合功能,以优化分类器集合(EoC)的结果。我们提出了成对融合矩阵(PFM)转换,该转换为使用分类器组合产生可靠的概率,并且可以与大多数现有的用于分类器组合的融合函数合并。 PFM只需要分类器的清晰分类标签输出,并且适合于高级问题或训练样本很少的问题。实验结果表明,PFM的性能可以比简单多数投票规则(MAJ)高出一个档次,并且PFM可以解决行为知识空间(BKS)可能不适用的问题。 (C)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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