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An Empirical Comparison of Ideal and Empirical ROC-Based Reject Rules

机译:基于理想和经验ROC的拒绝规则的经验比较

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摘要

Two class classifiers are used in many complex problems in which the classification results could have serious consequences. In such situations the cost for a wrong classification can be so high that can be convenient to avoid a decision and reject the sample. This paper presents a comparison between two different reject rules (the Chow's and the ROC rule). In particular, the experiments show that the Chow's rule is inappropriate when the estimates of the a posteriori probabilities are not reliable.
机译:在许多复杂的问题中使用两个分类器,在这些问题中分类结果可能会带来严重的后果。在这种情况下,错误分类的成本可能很高,以至于可以方便地避免做出决定并拒绝样品。本文介绍了两种不同的拒绝规则(Chow规则和ROC规则)之间的比较。特别地,实验表明,当后验概率的估计不可靠时,Chow法则是不合适的。

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