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Confidence-based classifier design

机译:基于置信度的分类器设计

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In this paper, a new classifier design methodology, confidence-based classifier design, is proposed to design classifiers with controlled confidence. This methodology is under the guidance of two optimal classification theories, a new classification theory for designing optimal classifiers with controlled error rates and the C.K. Chow's optimal classification theory for designing optimal classifiers with controlled conditional error. The new methodology also takes advantage of the current well-developed classifier's probability preserving and ordering properties. It calibrates the output scores of current classifiers to the conditional error or error rates. Thus, it can either classify input samples or reject them according to the output scores of classifiers. It can achieve some reasonable performance even though it is not an optimal solution. An example is presented to implement the new methodology using support vector machines (SVMs). The empirical cumulative density function method is used to estimate error rates from the output scores of a trained SVM. Furthermore, a new dynamic bin width allocation method is proposed to estimate sample conditional error and this method adapts to the underlying probabilities. The experimental results clearly demonstrate the efficacy of the suggested classifier design methodology. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的分类器设计方法,即基于置信度的分类器设计,以设计具有受控置信度的分类器。这种方法是在两种最佳分类理论的指导下进行的,这是一种新的分类理论,用于设计具有受控错误率的最佳分类器和C.K. Chow的最优分类理论,用于设计具有受控条件误差的最优分类器。新方法还利用了当前开发良好的分类器的概率保留和排序属性。它将当前分类器的输出分数校准为条件错误或错误率。因此,它可以根据分类器的输出分数对输入样本进行分类或拒绝它们。即使它不是最佳解决方案,也可以实现一些合理的性能。给出了使用支持向量机(SVM)实施新方法的示例。经验累积密度函数方法用于从受过训练的SVM的输出分数中估计错误率。此外,提出了一种新的动态条带宽度分配方法来估计样本条件误差,该方法适应了潜在的概率。实验结果清楚地表明了建议的分类器设计方法的有效性。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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