首页 /研究 /SAFER: Data-Efficient and Safe Reinforcement Learning via Skill Acquisition
MANIPULATION

SAFER: Data-Efficient and Safe Reinforcement Learning via Skill Acquisition

Dylan Slack, Yinlam Chow, Bo Dai, Nevan Wichers

发表年份
2022
访问权限
开放获取

摘要

Methods that extract policy primitives from offline demonstrations using deep generative models have shown promise at accelerating reinforcement learning(RL) for new tasks. Intuitively, these methods should also help to trainsafeRLagents because they enforce useful skills. However, we identify these techniques are not well equipped for safe policy learning because they ignore negative experiences(e.g., unsafe or unsuccessful), focusing only on positive experiences, which harms their ability to generalize to new tasks safely. Rather, we model the latentsafetycontextusing principled contrastive training on an offline dataset of demonstrations from many tasks, including both negative and positive experiences. Using this late variable, our RL framework, SAFEty skill pRiors (SAFER) extracts task-specific safe primitive skills to safely and successfully generalize to new tasks. In the inference stage, policies trained with SAFER learn to compose safe skills into successful policies. We theoretically characterize why SAFER can enforce safe policy learning and demonstrate its effectiveness on several complex safety-critical robotic grasping tasks inspired by the game Operation, in which SAFERoutperforms state-of-the-art primitive learning methods in success and safety.

关键词

cs.LG

相关论文

查看 MANIPULATION 分类全部论文