AI RESEARCH
Improving Selective Classification with Pairwise Queries for Binary Classification
arXiv CS.LG
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ArXi:2605.30615v1 Announce Type: new In selective classification, a model predicts the labels of data samples where it is confident, and abstains from predicting labels for samples on which it is not confident. The rejected samples are often labeled by an expert, which is expensive. The budget for the expert is best utilized when the model has low error on non-rejected samples. However, the estimate of a model's confidence might be inconsistent with the model's predictions, which can lead to high error on non-rejected points.