Confounding Robust Continuous Control via Automatic Reward Shaping
Abstract
Reward shaping has been applied widely to accelerate Reinforcement Learning (RL) agents' training. However, a principled way of designing effective reward shaping functions, especially for complex continuous control problems, remains largely under-explained. In this work, we propose to automatically learn a reward shaping function for continuous control problems from offline datasets, potentially contaminated by unobserved confounding variables. Specifically, our method builds upon the recently proposed causal Bellman equation to learn a tight upper bound on the optimal state values, which is then used as the potentials in the Potential-Based Reward Shaping (PBRS) framework. Our proposed reward shaping algorithm is tested with Soft-Actor-Critic (SAC) on multiple commonly used continuous control benchmarks and exhibits strong performance guarantees under unobserved confounders. More broadly, our work marks a solid first step towards confounding robust continuous control from a causal perspective. Code for training our reward shaping functions can be found at https://github.com/mateojuliani/confounding_robust_cont_control.
Cite
@article{arxiv.2602.10305,
title = {Confounding Robust Continuous Control via Automatic Reward Shaping},
author = {Mateo Juliani and Mingxuan Li and Elias Bareinboim},
journal= {arXiv preprint arXiv:2602.10305},
year = {2026}
}
Comments
Mateo Juliani and Mingxuan Li contributed equally to this work; accepted in AAMAS 2026