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Effect of separate sampling on classification and the minimax criterion

机译:单独采样对分类和最小最大准则的影响

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It is commonplace in bioinformatics (and elsewhere) to build a classifier from sample data in which the sample sizes of the classes are not random; that is, they are selected prior to sampling. The result is that there is no estimate of the prior class probabilities available from the data. In this paper, we find an analytic result for the minimax solution for the class prior probabilities for a general Neyman-Pearson induced classifier. From that we derive Anderson's classical minimax prior probability “estimate.” Using synthetic and real data, we demonstrate the degradation in classifier performance from using inaccurate values for the prior probabilities.
机译:在生物信息学(和其他地方)中,通常是根据样本数据构建分类器的,其中类别的样本大小不是随机的。也就是说,它们是在采样之前选择的。结果是,无法从数据中获得对先验类别概率的估计。在本文中,我们为一般Neyman-Pearson诱导的分类器的类先验概率找到了minimax解的解析结果。从中我们得出安德森经典的极小极大先验概率“估计”。使用综合和真实数据,我们证明了由于对先验概率使用不准确的值,导致分类器性能下降。

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