Selective classification (or classification with a reject option) pairs a classifier with a selection function to determine whether or not a prediction should be accepted. This framework trades off coverage (probability of accepting a prediction) with predictive performance, typically measured by distributive loss functions. In many application scenarios, such as credit scoring, performance is instead measured by ranking metrics, such as the Area Under the ROC Curve (AUC). We propose a model-agnostic approach to associate a selection function to a given probabilistic binary classifier. The approach is specifically targeted at optimizing the AUC. We provide both theoretical justifications and a novel algorithm, called $AUCross$, to achieve such a goal. Experiments show that $AUCross$ succeeds in trading-off coverage for AUC, improving over existing selective classification methods targeted at optimizing accuracy.
翻译:选择性分类(或有拒绝选项的分类)将具有选择功能的分类师配对,以确定是否应接受预测。这个框架将覆盖面(接受预测的可能性)与预测性能(通常以分配性损失功能衡量)相权衡。在许多应用情景中,例如信用评分,业绩则用等级衡量,如ROC曲线下的区域(AUC)等。我们提出了一个模式性、不可知性办法,将选择功能与给定的概率二进制分类师挂钩。这个办法具体针对优化ACC。我们既提供了理论理由,又提供了新的算法,称为$AUCross$,以实现这一目标。实验显示,美元在AUC的交易范围中成功,改进了旨在优化准确性的现有选择性分类方法。