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From Prior to Pro: Efficient Skill Mastery via Distribution Contractive RL Finetuning

DICE-RL enhances pretrained generative robot policies through reinforcement learning distribution contraction, achieving complex manipulation skills from pixel inputs with improved stability and sample efficiency.

Year
2026
Venue
arXiv 2026
Authors
2
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arxiv.org/abs/2603.10263ARXIV-DEFAULT
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Abstract

We introduce Distribution Contractive Reinforcement Learning (DICE-RL), a framework that uses reinforcement learning (RL) as a "distribution contraction" operator to refine pretrained generative robot policies. DICE-RL turns a pretrained behavior prior into a high-performing "pro" policy by amplifying high-success behaviors from online feedback. We pretrain a diffusion- or flow-based policy for broad behavioral coverage, then finetune it with a stable, sample-efficient residual off-policy RL framework that combines selective behavior regularization with value-guided action selection. Extensive experiments and analyses show that DICE-RL reliably improves performance with strong stability and sample efficiency. It enables mastery of complex long-horizon manipulation skills directly from high-dimensional pixel inputs, both in simulation and on a real robot. Project website: https://zhanyisun.github.io/dice.rl.2026/.

Authors

2