TY - JOUR
T1 - Efficient Conformal Prediction under Data Heterogeneity
AU - Plassier, Vincent
AU - Kotelevskii, Nikita
AU - Rubashevskii, Aleksandr
AU - Noskov, Fedor
AU - Velikanov, Maksim
AU - Fishkov, Alexander
AU - Horvath, Samuel
AU - Takáč, Martin
AU - Moulines, Éric
AU - Panov, Maxim
N1 - Publisher Copyright:
Copyright 2024 by the author(s).
PY - 2024/1/1
Y1 - 2024/1/1
N2 - Conformal Prediction (CP) stands out as a robust framework for uncertainty quantification, which is crucial for ensuring the reliability of predictions. However, common CP methods heavily rely on the data exchangeability, a condition often violated in practice. Existing approaches for tackling non-exchangeability lead to methods that are not computable beyond the simplest examples. In this work, we introduce a new efficient approach to CP that produces provably valid confidence sets for fairly general non-exchangeable data distributions. We illustrate the general theory with applications to the challenging setting of federated learning under data heterogeneity between agents. Our method allows constructing provably valid personalized prediction sets for agents in a fully federated way. The effectiveness of the proposed method is demonstrated in a series of experiments on real-world datasets.
AB - Conformal Prediction (CP) stands out as a robust framework for uncertainty quantification, which is crucial for ensuring the reliability of predictions. However, common CP methods heavily rely on the data exchangeability, a condition often violated in practice. Existing approaches for tackling non-exchangeability lead to methods that are not computable beyond the simplest examples. In this work, we introduce a new efficient approach to CP that produces provably valid confidence sets for fairly general non-exchangeable data distributions. We illustrate the general theory with applications to the challenging setting of federated learning under data heterogeneity between agents. Our method allows constructing provably valid personalized prediction sets for agents in a fully federated way. The effectiveness of the proposed method is demonstrated in a series of experiments on real-world datasets.
M3 - Conference article
AN - SCOPUS:85194185324
SN - 2640-3498
VL - 238
SP - 4879
EP - 4887
JO - Proceedings of Machine Learning Research
JF - Proceedings of Machine Learning Research
T2 - 27th International Conference on Artificial Intelligence and Statistics, AISTATS 2024
Y2 - 2 May 2024 through 4 May 2024
ER -