Minimax classifiers based on neural networks

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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.

论文关键词:Pattern classification,Uncertainty in priors,Minimax decision rules,Neural networks

论文评审过程:Received 28 January 2003, Accepted 28 May 2004, Available online 23 August 2004.

论文官网地址:https://doi.org/10.1016/j.patcog.2004.05.007