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Improving Diffusion Planners by Self-Supervised Action Gating with Energies

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Diffusion planners are a strong approach for offline reinforcement learning, but they can fail when value-guided selection favours trajectories that score well yet are locally inconsistent with the environment dynamics, resulting in brittle execution. We propose Self-supervised Action Gating with Energies (SAGE), an inference-time re-ranking method that penalises dynamically inconsistent plans using a latent consistency signal. SAGE trains a Joint-Embedding Predictive Architecture (JEPA) encoder on offline state sequences and an action-conditioned latent predictor for short horizon transitions. At test time, SAGE assigns each sampled candidate an energy given by its latent prediction error and combines this feasibility score with value estimates to select actions. SAGE can integrate into existing diffusion planning pipelines that can sample trajectories and select actions via value scoring; it requires no environment rollouts and no policy re-training. Across locomotion, navigation, and manipulation benchmarks, SAGE improves the performance and robustness of diffusion planners.

Yuan Lu, Dongqi Han, Yansen Wang, Dongsheng Li• 2026

Related benchmarks

TaskDatasetResultRank
LocomotionD4RL walker2d-medium-expert
Normalized Score109.4
63
LocomotionD4RL HalfCheetah Medium-Replay
Normalized Score0.465
61
LocomotionD4RL Halfcheetah medium
Normalized Score51.6
60
LocomotionD4RL Walker2d medium
Normalized Score84.8
60
LocomotionD4RL halfcheetah-medium-expert
Normalized Score95.4
53
Offline Reinforcement LearningD4RL antmaze-large (diverse)
Normalized Score77
37
Offline Reinforcement LearningD4RL antmaze-large (play)
Normalized Score0.821
36
LocomotionD4RL Hopper medium
Normalized Score83.9
30
Offline Reinforcement LearningD4RL antmaze-medium-play
Normalized Score91
23
Offline Reinforcement LearningD4RL Kitchen-Partial
Normalized Performance96.6
19
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