论机器人错误对人类教学动力的影响

Jindan Huang, Isaac Sheidlower, Reuben M. Aronson, Elaine Schaertl Short
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摘要

人在回路中学习越来越受欢迎,尤其是在机器人领域,因为它利用人类对真实世界任务的了解来促进机器人的学习。人在指导机器人时,自然会根据机器人性能的变化调整自己的教学行为。虽然目前的研究主要侧重于从算法角度整合人类的教学动态,但从以人为本的角度理解这些动态是一个尚未得到充分探索的基本问题。因此,本文探讨了导致人类教学动态的一个潜在因素:机器人错误。我们进行了一项用户研究,以调查机器人错误的存在和严重程度如何影响人类教学动态的三个维度:在强制选择和开放式教学情境中的反馈粒度、反馈丰富度和教学时间。结果表明,人类倾向于花更多时间教授有错误的机器人,对机器人轨迹的特定部分提供更详细的反馈,而且机器人错误会影响教师对反馈方式的选择。我们的发现为设计有效的交互式学习界面和优化算法以更好地理解人类意图提供了宝贵的见解。
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On the Effect of Robot Errors on Human Teaching Dynamics
Human-in-the-loop learning is gaining popularity, particularly in the field of robotics, because it leverages human knowledge about real-world tasks to facilitate agent learning. When people instruct robots, they naturally adapt their teaching behavior in response to changes in robot performance. While current research predominantly focuses on integrating human teaching dynamics from an algorithmic perspective, understanding these dynamics from a human-centered standpoint is an under-explored, yet fundamental problem. Addressing this issue will enhance both robot learning and user experience. Therefore, this paper explores one potential factor contributing to the dynamic nature of human teaching: robot errors. We conducted a user study to investigate how the presence and severity of robot errors affect three dimensions of human teaching dynamics: feedback granularity, feedback richness, and teaching time, in both forced-choice and open-ended teaching contexts. The results show that people tend to spend more time teaching robots with errors, provide more detailed feedback over specific segments of a robot's trajectory, and that robot error can influence a teacher's choice of feedback modality. Our findings offer valuable insights for designing effective interfaces for interactive learning and optimizing algorithms to better understand human intentions.
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