JMLR

Categorical Semantics of Compositional Reinforcement Learning

Authors
Georgios Bakirtzis Michail Savvas Ufuk Topcu
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Sep 08, 2025
Abstract

Compositional knowledge representations in reinforcement learning (RL) facilitate modular, interpretable, and safe task specifications. However, generating compositional models requires the characterization of minimal assumptions for the robustness of the compositionality feature, especially in the case of functional decompositions. Using a categorical point of view, we develop a knowledge representation framework for a compositional theory of RL. Our approach relies on the theoretical study of the category $\mathsf{MDP}$, whose objects are Markov decision processes (MDPs) acting as models of tasks. The categorical semantics models the compositionality of tasks through the application of pushout operations akin to combining puzzle pieces. As a practical application of these pushout operations, we introduce zig-zag diagrams that rely on the compositional guarantees engendered by the category $\mathsf{MDP}$. We further prove that properties of the category $\mathsf{MDP}$ unify concepts, such as enforcing safety requirements and exploiting symmetries, generalizing previous abstraction theories for RL.

Author Details
Georgios Bakirtzis
Author
Michail Savvas
Author
Ufuk Topcu
Author
Citation Information
APA Format
Georgios Bakirtzis , Michail Savvas & Ufuk Topcu . Categorical Semantics of Compositional Reinforcement Learning. Journal of Machine Learning Research .
BibTeX Format
@article{paper525,
  title = { Categorical Semantics of Compositional Reinforcement Learning },
  author = { Georgios Bakirtzis and Michail Savvas and Ufuk Topcu },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v26/24-0197.html }
}