TL;DR
This paper introduces Calibrated Prediction-Powered Inference, a simple post-hoc calibration method for semisupervised mean estimation that improves estimator efficiency and predictive accuracy without retraining.
Contribution
It proposes a calibration-based approach for semisupervised inference that enhances existing estimators and provides theoretical guarantees for isotonic and linear calibration methods.
Findings
Isotonic calibration improves predictive accuracy and estimator efficiency.
Calibrated estimators outperform PPI and are competitive with AIPW and PPI++.
The method is validated through simulations and real-data experiments.
Abstract
We study semisupervised mean estimation with a small labeled sample, a large unlabeled sample, and a black-box prediction model whose output may be miscalibrated. A standard approach in this setting is augmented inverse-probability weighting (AIPW) [Robins et al., 1994], which protects against prediction-model misspecification but can be inefficient when the prediction score is poorly aligned with the outcome scale. We introduce Calibrated Prediction-Powered Inference, which post-hoc calibrates the prediction score on the labeled sample before using it for semisupervised estimation. This simple step requires no retraining and can improve the original score both as a predictor of the outcome and as a regression adjustment for semisupervised inference. We study both linear and isotonic calibration. For isotonic calibration, we establish first-order optimality guarantees: isotonic…
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