2022
DOI: 10.48550/arxiv.2203.11197
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Teachable Reinforcement Learning via Advice Distillation

Abstract: Training automated agents to complete complex tasks in interactive environments is challenging: reinforcement learning requires careful hand-engineering of reward functions, imitation learning requires specialized infrastructure and access to a human expert, and learning from intermediate forms of supervision (like binary preferences) is time-consuming and extracts little information from each human intervention. Can we overcome these challenges by building agents that learn from rich, interactive feedback ins… Show more

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