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Semi-Supervised Risk Control via Prediction-Powered Inference

Machine Learning 2025-07-29 v2 Machine Learning

Abstract

The risk-controlling prediction sets (RCPS) framework is a general tool for transforming the output of any machine learning model to design a predictive rule with rigorous error rate control. The key idea behind this framework is to use labeled hold-out calibration data to tune a hyper-parameter that affects the error rate of the resulting prediction rule. However, the limitation of such a calibration scheme is that with limited hold-out data, the tuned hyper-parameter becomes noisy and leads to a prediction rule with an error rate that is often unnecessarily conservative. To overcome this sample-size barrier, we introduce a semi-supervised calibration procedure that leverages unlabeled data to rigorously tune the hyper-parameter without compromising statistical validity. Our procedure builds upon the prediction-powered inference framework, carefully tailoring it to risk-controlling tasks. We demonstrate the benefits and validity of our proposal through two real-data experiments: few-shot image classification and early time series classification.

Keywords

Cite

@article{arxiv.2412.11174,
  title  = {Semi-Supervised Risk Control via Prediction-Powered Inference},
  author = {Bat-Sheva Einbinder and Liran Ringel and Yaniv Romano},
  journal= {arXiv preprint arXiv:2412.11174},
  year   = {2025}
}
R2 v1 2026-06-28T20:35:48.168Z