首页 /研究 /Renaissance Robot: Optimal Transport Policy Fusion for Learning Diverse Skills
LEARNING

Renaissance Robot: Optimal Transport Policy Fusion for Learning Diverse Skills

Julia Tan, Ransalu Senanayake, Fabio Ramos

发表年份
2022
访问权限
开放获取

摘要

Deep reinforcement learning (RL) is a promising approach to solving complex robotics problems. However, the process of learning through trial-and-error interactions is often highly time-consuming, despite recent advancements in RL algorithms. Additionally, the success of RL is critically dependent on how well the reward-shaping function suits the task, which is also time-consuming to design. As agents trained on a variety of robotics problems continue to proliferate, the ability to reuse their valuable learning for new domains becomes increasingly significant. In this paper, we propose a post-hoc technique for policy fusion using Optimal Transport theory as a robust means of consolidating the knowledge of multiple agents that have been trained on distinct scenarios. We further demonstrate that this provides an improved weights initialisation of the neural network policy for learning new tasks, requiring less time and computational resources than either retraining the parent policies or training a new policy from scratch. Ultimately, our results on diverse agents commonly used in deep RL show that specialised knowledge can be unified into a "Renaissance agent", allowing for quicker learning of new skills.

关键词

cs.LGcs.RO

相关论文

查看 LEARNING 分类全部论文