The Conditional Regret-Capacity Theorem for Batch Universal Prediction
Information Theory
2025-08-15 v1 Machine Learning
math.IT
Machine Learning
Abstract
We derive a conditional version of the classical regret-capacity theorem. This result can be used in universal prediction to find lower bounds on the minimal batch regret, which is a recently introduced generalization of the average regret, when batches of training data are available to the predictor. As an example, we apply this result to the class of binary memoryless sources. Finally, we generalize the theorem to R\'enyi information measures, revealing a deep connection between the conditional R\'enyi divergence and the conditional Sibson's mutual information.
Cite
@article{arxiv.2508.10282,
title = {The Conditional Regret-Capacity Theorem for Batch Universal Prediction},
author = {Marco Bondaschi and Michael Gastpar},
journal= {arXiv preprint arXiv:2508.10282},
year = {2025}
}