Learning to Execute: Efficient Learning of Universal Plan-Conditioned Policies in Robotics
–Neural Information Processing Systems
Applications of Reinforcement Learning (RL) in robotics are often limited by high data demand. On the other hand, approximate models are readily available in many robotics scenarios, making model-based approaches like planning a data-efficient alternative. Still, the performance of these methods suffers if the model is imprecise or wrong. In this sense, the respective strengths and weaknesses of RL and model-based planners are complementary. In the present work, we investigate how both approaches can be integrated into one framework that combines their strengths.
Neural Information Processing Systems
Oct-9-2024, 12:49:23 GMT
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