Partially Equivariant Reinforcement Learning in Symmetry-Breaking Environments
Abstract
Group symmetries provide a powerful inductive bias for reinforcement learning (RL), enabling efficient generalization across symmetric states and actions via group-invariant Markov Decision Processes (MDPs). However, real-world environments almost never realize fully group-invariant MDPs; dynamics, actuation limits, and reward design usually break symmetries, often only locally. Under group-invariant Bellman backups for such cases, local symmetry-breaking introduces errors that propagate across the entire state--action space, resulting in global value estimation errors. To address this, we introduce Partially Group-Invariant MDP (PI-MDP), which selectively applies group-invariant or standard Bellman backups depending on where symmetry holds. This framework mitigates error propagation from locally broken symmetries while maintaining the benefits of equivariance, thereby enhancing sample efficiency and generalizability. Building on this framework, we present practical RL algorithms -- Partially Equivariant (PE)-DQN for discrete control and PE-SAC for continuous control -- that combine the benefits of equivariance with robustness to symmetry-breaking. Experiments across Grid-World, locomotion, and manipulation benchmarks demonstrate that PE-DQN and PE-SAC significantly outperform baselines, highlighting the importance of selective symmetry exploitation for robust and sample-efficient RL. Project page: https://pranaboy72.github.io/perl_page/
Cite
Text
Chang et al. "Partially Equivariant Reinforcement Learning in Symmetry-Breaking Environments." International Conference on Learning Representations, 2026.Markdown
[Chang et al. "Partially Equivariant Reinforcement Learning in Symmetry-Breaking Environments." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/chang2026iclr-partially/)BibTeX
@inproceedings{chang2026iclr-partially,
title = {{Partially Equivariant Reinforcement Learning in Symmetry-Breaking Environments}},
author = {Chang, Junwoo and Park, Minwoo and Seo, Joohwan and Horowitz, Roberto and Lee, Jongmin and Choi, Jongeun},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/chang2026iclr-partially/}
}