Distribution-informed Online Conformal Prediction
By: Dongjian Hu, Junxi Wu, Shu-Tao Xia, Changliang Zou
Published: 2025-12-09
View on arXiv →#cs.LG
Abstract
Conformal prediction is a framework for quantifying uncertainty in machine learning predictions, crucial for reliable real-world applications. This paper introduces an online conformal prediction method that incorporates distribution information, aiming to improve the efficiency and applicability of uncertainty quantification in dynamic data streams.