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Structured Reinforcement Learning for Combinatorial Decision-Making

Published: May 25, 2025 | arXiv ID: 2505.19053v1

By: Heiko Hoppe , Léo Baty , Louis Bouvier and more

Potential Business Impact:

Helps computers make better choices in complex situations.

Business Areas:
Robotics Hardware, Science and Engineering, Software

Reinforcement learning (RL) is increasingly applied to real-world problems involving complex and structured decisions, such as routing, scheduling, and assortment planning. These settings challenge standard RL algorithms, which struggle to scale, generalize, and exploit structure in the presence of combinatorial action spaces. We propose Structured Reinforcement Learning (SRL), a novel actor-critic framework that embeds combinatorial optimization layers into the actor neural network. We enable end-to-end learning of the actor via Fenchel-Young losses and provide a geometric interpretation of SRL as a primal-dual algorithm in the dual of the moment polytope. Across six environments with exogenous and endogenous uncertainty, SRL matches or surpasses the performance of unstructured RL and imitation learning on static tasks and improves over these baselines by up to 92% on dynamic problems, with improved stability and convergence speed.

Country of Origin
🇫🇷 🇩🇪 Germany, France

Repos / Data Links

Page Count
29 pages

Category
Computer Science:
Machine Learning (CS)