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Adaptive Conformal Inference by Betting

About

Conformal prediction is a valuable tool for quantifying predictive uncertainty of machine learning models. However, its applicability relies on the assumption of data exchangeability, a condition which is often not met in real-world scenarios. In this paper, we consider the problem of adaptive conformal inference without any assumptions about the data generating process. Existing approaches for adaptive conformal inference are based on optimizing the pinball loss using variants of online gradient descent. A notable shortcoming of such approaches is in their explicit dependence on and sensitivity to the choice of the learning rates. In this paper, we propose a different approach for adaptive conformal inference that leverages parameter-free online convex optimization techniques. We prove that our method controls long-term miscoverage frequency at a nominal level and demonstrate its convincing empirical performance without any need of performing cumbersome parameter tuning.

Aleksandr Podkopaev, Darren Xu, Kuang-Chih Lee• 2024

Related benchmarks

TaskDatasetResultRank
Online Conformal PredictionStationary Dataset synthetic
Marginal Coverage93
6
Online Conformal PredictionAMZN
Marginal Coverage91.9
6
Online Conformal PredictionElectricity Demand
Marginal Coverage92.7
6
Online Conformal PredictionGOOGL (test)
Marginal Coverage92.5
6
Online Conformal PredictionSinusoid Dataset synthetic
Marginal Coverage92.8
6
Online Conformal PredictionAXP
Marginal Coverage92
6
Online Conformal PredictionAAPL
Marginal Coverage91.5
6
Online Conformal PredictionMix Dataset synthetic s (test)
Marginal Coverage91.3
6
Online Conformal PredictionAXP (test)
Marginal Coverage92
4
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