Policy gradient methods for ordinal policies
Machine Learning
2025-06-24 v1
Abstract
In reinforcement learning, the softmax parametrization is the standard approach for policies over discrete action spaces. However, it fails to capture the order relationship between actions. Motivated by a real-world industrial problem, we propose a novel policy parametrization based on ordinal regression models adapted to the reinforcement learning setting. Our approach addresses practical challenges, and numerical experiments demonstrate its effectiveness in real applications and in continuous action tasks, where discretizing the action space and applying the ordinal policy yields competitive performance.
Cite
@article{arxiv.2506.18614,
title = {Policy gradient methods for ordinal policies},
author = {Simón Weinberger and Jairo Cugliari},
journal= {arXiv preprint arXiv:2506.18614},
year = {2025}
}
Comments
in French language, Journ{\'e}es de statistiques 2025, Soci{\'e}t{\'e} Fran\c{c}aise des Statistiques, Jun 2023, Marseille, France