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Minimax classifiers based on neural networks

机译:基于神经网络的Minimax分类器

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摘要

The problem of designing a classifier when prior probabilities are not known or are not representative of the underlying data distribution is discussed in this paper. Traditional learning approaches based on the assumption that class priors are stationary lead to sub-optimal solutions if there is a mismatch between training and future (real) priors. To protect against this uncertainty, a minimax approach may be desirable. We address the problem of designing a neural-based minimax classifier and propose two different algorithms: a learning rate scaling algorithm and a gradient-based algorithm. Experimental results show that both succeed in finding the minimax solution and it is also pointed out the differences between common approaches to cope with this uncertainty in priors and the minimax classifier. (C) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文讨论了当先验概率未知或不代表基础数据分布时设计分类器的问题。如果训练和未来(真实)先验之间不匹配,则基于课堂先验是固定的假设的传统学习方法会导致次优解决方案。为了防止这种不确定性,可能需要采用minimax方法。我们解决了设计基于神经的最小极大分类器的问题,并提出了两种不同的算法:学习速率缩放算法和基于梯度的算法。实验结果表明,两者都成功地找到了极小极大解,并且指出了解决先验中的不确定性的常用方法与极小极大分类器之间的差异。 (C)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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