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Video Prediction Models as Rewards for Reinforcement Learning

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arxiv 2305.14343 v2 pith:OLU5FDOJ submitted 2023-05-23 cs.LG cs.AIcs.CV

Video Prediction Models as Rewards for Reinforcement Learning

classification cs.LG cs.AIcs.CV
keywords predictionvideolearningreinforcementrewardrewardsavailablesignals
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Specifying reward signals that allow agents to learn complex behaviors is a long-standing challenge in reinforcement learning. A promising approach is to extract preferences for behaviors from unlabeled videos, which are widely available on the internet. We present Video Prediction Rewards (VIPER), an algorithm that leverages pretrained video prediction models as action-free reward signals for reinforcement learning. Specifically, we first train an autoregressive transformer on expert videos and then use the video prediction likelihoods as reward signals for a reinforcement learning agent. VIPER enables expert-level control without programmatic task rewards across a wide range of DMC, Atari, and RLBench tasks. Moreover, generalization of the video prediction model allows us to derive rewards for an out-of-distribution environment where no expert data is available, enabling cross-embodiment generalization for tabletop manipulation. We see our work as starting point for scalable reward specification from unlabeled videos that will benefit from the rapid advances in generative modeling. Source code and datasets are available on the project website: https://escontrela.me/viper

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