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[2O1-GS-8-05] Efficient Multiple Task Robot Learning Guided by Large Language Models
Keywords:Large Language Model, Reinforcement Learning, Imitation Learning, Robotics Manipulation
Large language models, such as GPT-3 and ChatGPT, show high general performance in various tasks, and are widely applied not only to natural language processing but also to various other domains. In this paper, we utilize large language models for imitation learning of robot control and examine their contribution to improving learning efficiency and sample efficiency. In our experiments, we verify the effectiveness of the proposed method using a benchmark dataset called RLBench. When learning multiple tasks, we utilize prompting to the large language model to generate text that explains the procedure for solving the tasks and use it as a subgoal to improve learning efficiency and generalizability.
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