Kok Bing Cai, Soh Harold
Dept. of Computer Science, School of Computing, National University of Singapore, 13 Computing Drive, Singapore, 119077 Singapore.
Curr Robot Rep. 2020;1(4):297-309. doi: 10.1007/s43154-020-00029-y. Epub 2020 Sep 3.
To assess the state-of-the-art in research on trust in robots and to examine if recent methodological advances can aid in the development of trustworthy robots.
While traditional work in trustworthy robotics has focused on studying the antecedents and consequences of trust in robots, recent work has gravitated towards the development of strategies for robots to actively gain, calibrate, and maintain the human user's trust. Among these works, there is emphasis on endowing robotic agents with reasoning capabilities (e.g., via probabilistic modeling).
The state-of-the-art in trust research provides roboticists with a large trove of tools to develop trustworthy robots. However, challenges remain when it comes to trust in real-world human-robot interaction (HRI) settings: there exist outstanding issues in trust measurement, guarantees on robot behavior (e.g., with respect to user privacy), and handling rich multidimensional data. We examine how recent advances in psychometrics, trustworthy systems, robot-ethics, and deep learning can provide resolution to each of these issues. In conclusion, we are of the opinion that these methodological advances could pave the way for the creation of truly autonomous, trustworthy social robots.
评估机器人信任研究的最新进展,并探讨近期的方法进步是否有助于开发值得信赖的机器人。
虽然值得信赖的机器人技术的传统研究重点是研究对机器人信任的前因后果,但近期的研究已转向开发让机器人积极获得、校准和维持人类用户信任的策略。在这些研究中,重点是赋予机器人代理推理能力(例如,通过概率建模)。
信任研究的最新进展为机器人专家提供了大量开发值得信赖的机器人的工具。然而,在现实世界的人机交互(HRI)环境中,信任方面仍存在挑战:在信任测量、机器人行为保障(例如,关于用户隐私)以及处理丰富的多维数据方面存在突出问题。我们研究了心理测量学、可信系统、机器人伦理和深度学习的最新进展如何为解决这些问题提供方案。总之,我们认为这些方法进步可为创建真正自主、值得信赖的社交机器人铺平道路。