人在环强化学习的少镜头偏好学习

Joey Hejna, Dorsa Sadigh
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引用次数: 23

摘要

虽然强化学习(RL)已成为机器人技术的一种更流行的方法,但由于无法捕捉人类意图和策略利用,为复杂任务设计足够信息的奖励函数已被证明是极其困难的。基于偏好的强化学习算法试图通过直接从人类反馈中学习奖励函数来克服这些挑战。不幸的是,之前的工作要么需要不合理的查询数量,不可能让任何人回答,要么过度限制奖励函数的类别,以保证获得最具信息量的查询,导致模型对现实机器人任务的表达能力不足。与大多数专注于查询选择以\emph{最小化}学习奖励函数所需的数据量的工作相反,我们采取了相反的方法:通过更灵活的多任务学习视角来看待人在循环强化学习,从而\emph{扩大}可用数据池。在元学习成功的激励下,我们在先前的任务数据上预训练偏好模型,并使用少量查询快速调整它们以适应新任务。经验上,我们将Meta-World中训练操纵策略所需的在线反馈量减少了20 $\times$,并在真实的Franka Panda机器人上证明了我们的方法的有效性。此外,这种查询复杂性的降低使我们能够从实际的人类用户中训练机器人策略。我们的结果和代码的视频可以在https://sites.google.com/view/few-shot-preference-rl/home上找到。
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Few-Shot Preference Learning for Human-in-the-Loop RL
While reinforcement learning (RL) has become a more popular approach for robotics, designing sufficiently informative reward functions for complex tasks has proven to be extremely difficult due their inability to capture human intent and policy exploitation. Preference based RL algorithms seek to overcome these challenges by directly learning reward functions from human feedback. Unfortunately, prior work either requires an unreasonable number of queries implausible for any human to answer or overly restricts the class of reward functions to guarantee the elicitation of the most informative queries, resulting in models that are insufficiently expressive for realistic robotics tasks. Contrary to most works that focus on query selection to \emph{minimize} the amount of data required for learning reward functions, we take an opposite approach: \emph{expanding} the pool of available data by viewing human-in-the-loop RL through the more flexible lens of multi-task learning. Motivated by the success of meta-learning, we pre-train preference models on prior task data and quickly adapt them for new tasks using only a handful of queries. Empirically, we reduce the amount of online feedback needed to train manipulation policies in Meta-World by 20$\times$, and demonstrate the effectiveness of our method on a real Franka Panda Robot. Moreover, this reduction in query-complexity allows us to train robot policies from actual human users. Videos of our results and code can be found at https://sites.google.com/view/few-shot-preference-rl/home.
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