首页 /研究 /Skill Preferences: Learning to Extract and Execute Robotic Skills from Human Feedback
MANIPULATION

Skill Preferences: Learning to Extract and Execute Robotic Skills from Human Feedback

Xiaofei Wang, Kimin Lee, Kourosh Hakhamaneshi, Pieter Abbeel, Michael Laskin

发表年份
2021
访问权限
开放获取

摘要

A promising approach to solving challenging long-horizon tasks has been to extract behavior priors (skills) by fitting generative models to large offline datasets of demonstrations. However, such generative models inherit the biases of the underlying data and result in poor and unusable skills when trained on imperfect demonstration data. To better align skill extraction with human intent we present Skill Preferences (SkiP), an algorithm that learns a model over human preferences and uses it to extract human-aligned skills from offline data. After extracting human-preferred skills, SkiP also utilizes human feedback to solve down-stream tasks with RL. We show that SkiP enables a simulated kitchen robot to solve complex multi-step manipulation tasks and substantially outperforms prior leading RL algorithms with human preferences as well as leading skill extraction algorithms without human preferences.

关键词

cs.LGcs.RO

相关论文

查看 MANIPULATION 分类全部论文