We introduce Language Feedback Models (LFMs) that identify desirable behaviour - actions that help achieve tasks specified in the instruction - for imitation learning in instruction following. To train LFMs, we obtain feedback from Large Language Models (LLMs) on visual trajectories verbalized to language descriptions. First, by using LFMs to identify desirable behaviour to imitate, we improve in task-completion rate over strong behavioural cloning baselines on three distinct language grounding environments (Touchdown, ScienceWorld, and ALFWorld). Second, LFMs outperform using LLMs as experts to directly predict actions, when controlling for the number of LLM output tokens. Third, LFMs generalize to unseen environments, improving task-completion rate by 3.5-12.0% through one round of adaptation. Finally, LFM can be modified to provide human-interpretable feedback without performance loss, allowing human verification of desirable behaviour for imitation learning.
Policy Improvement using Language Feedback Models
Language Feedback Models (LFMs) enhance task completion rates in instruction following by identifying desirable behaviors from visual trajectories, surpassing direct action prediction by Large Language Models (LLMs) and generalizing to new environments.
- Year
- 2024
- Venue
- arXiv 2024
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2402.07876v6ARXIV-DEFAULT
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