ResWM: Residual-Action World Model for Visual RL
arXiv cs.AI / 3/13/2026
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Key Points
- ResWM reformulates control as residual actions—incremental adjustments relative to the previous step—to stabilize optimization and align with the smoothness of real-world control.
- It introduces an Observation Difference Encoder to model changes between adjacent frames, yielding compact latent dynamics tightly coupled with residual actions.
- The method is integrated into a Dreamer-style latent dynamics model with minimal modifications and no extra hyperparameters, enabling learning entirely in residual-action space.
- Empirical results on the DeepMind Control Suite show improved sample efficiency, higher asymptotic returns, and smoother, energy-efficient action trajectories that surpass strong baselines like Dreamer and TD-MPC.
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