Reinforcement learning (RL) is typically concerned with estimating stationary policies or single-step models, leveraging the Markov property to factorize problems in time. However, we can also view RL as a generic sequence modeling problem, with the goal being to produce a sequence of actions that leads to a sequence of high rewards. Viewed in this way, it is tempting to consider whether high-capacity sequence prediction models that work well in other domains, such as natural-language processing, can also provide effective solutions to the RL problem. To this end, we explore how RL can be tackled with the tools of sequence modeling, using a Transformer architecture to model distributions over trajectories and repurposing beam search as a planning algorithm. Framing RL as sequence modeling problem simplifies a range of design decisions, allowing us to dispense with many of the components common in offline RL algorithms. We demonstrate the flexibility of this approach across long-horizon dynamics prediction, imitation learning, goal-conditioned RL, and offline RL. Further, we show that this approach can be combined with existing model-free algorithms to yield a state-of-the-art planner in sparse-reward, long-horizon tasks.
Offline Reinforcement Learning as One Big Sequence Modeling Problem
Reinforcement learning is explored through the lens of sequence modeling using a Transformer architecture, demonstrating effectiveness across various tasks including dynamics prediction, imitation learning, and sparse-reward planning.
- Year
- 2021
- Venue
- NeurIPS 2021 12
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2106.02039v4ARXIV-DEFAULT
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