Adaptive Conformal Prediction for Quantum Machine Learning
Abstract
Quantum machine learning seeks to leverage quantum computers to improve upon classical machine learning algorithms. Currently, robust uncertainty quantification methods remain underdeveloped in the quantum domain, despite the critical need for reliable and trustworthy predictions. Recent work has introduced quantum conformal prediction, a framework that produces prediction sets that are guaranteed to contain the true outcome with a user-specified probability. In this work, we formalise how the time-varying noise inherent in quantum processors can undermine conformal guarantees, even when calibration and test data are exchangeable. To address this challenge, we draw on Adaptive Conformal Inference, a method which maintains validity over time via repeated recalibration. We introduce Adaptive Quantum Conformal Prediction (AQCP), an algorithm which provides asymptotic average coverage guarantees under arbitrary hardware noise conditions. Empirical studies on an IBM quantum processor demonstrate that AQCP achieves the target coverage level and exhibits greater stability than quantum conformal prediction.
Cite
Text
Spencer et al. "Adaptive Conformal Prediction for Quantum Machine Learning." Transactions on Machine Learning Research, 2026.Markdown
[Spencer et al. "Adaptive Conformal Prediction for Quantum Machine Learning." Transactions on Machine Learning Research, 2026.](https://mlanthology.org/tmlr/2026/spencer2026tmlr-adaptive/)BibTeX
@article{spencer2026tmlr-adaptive,
title = {{Adaptive Conformal Prediction for Quantum Machine Learning}},
author = {Spencer, Douglas and Nicholls, Samual and Caprio, Michele},
journal = {Transactions on Machine Learning Research},
year = {2026},
url = {https://mlanthology.org/tmlr/2026/spencer2026tmlr-adaptive/}
}