Extreme Conformal Prediction: Reliable Intervals for High-Impact Events
Olivier C. Pasche, Henry Lam and Sebastian Engelke
ArXiv Preprint, 2025
Abstract
Conformal prediction is a popular method to construct prediction intervals for black-box machine learning models with marginal coverage guarantees. In applications with potentially high-impact events, such as flooding or financial crises, regulators often require very high confidence for such intervals. However, if the desired level of confidence is too large relative to the amount of data used for calibration, then classical conformal methods provide infinitely wide, thus, uninformative prediction intervals. In this paper, we propose a new method to overcome this limitation. We bridge extreme value statistics and conformal prediction to provide reliable and informative prediction intervals with high-confidence coverage, which can be constructed using any black-box extreme quantile regression method. A weighted version of our approach can account for nonstationary data. The advantages of our extreme conformal prediction method are illustrated in a simulation study and in an application to flood risk forecasting.
This is an invited paper for the special issue “Bridging Heavy Tails and Artificial Intelligence” of Extremes.
Links
Preprint: https://arxiv.org/abs/2505.08578 (PDF)
Published article: TBA
Dates
First version: May 2025
Recommended citation: Pasche, O. C., Lam, H., and Engelke, S. (2025). "Extreme Conformal Prediction: Reliable Intervals for High-Impact Events." ArXiv:2505.08578. https://doi.org/10.48550/arXiv.2505.08578
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