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Inference of User Qualities in Shared Control of CPHS: A Contrast in Users

机译:CPHS共享控制中的用户质量推断:用户的对比

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Most cyber-physical human systems (CPHS) rely on users learning how to interact with the system. Rather, a collaborative CPHS should learn from the user and adapt to them in a way that improves holistic system performance. Accomplishing this requires collaboration between the human-robot/human-computer interaction and the cyber-physical system communities in order to feed back knowledge about users into the design of the CPHS. The requisite user studies, however, are difficult, time consuming, and must be carefully designed. Furthermore, as humans are complex in their interactions with autonomy it is difficult to know, a priori, how many users must participate to attain conclusive results. In this paper we elaborate on our work to infer intrinsic user qualities through human-robot interactions correlated with robot performance in order to adapt the autonomy and improve holistic CPHS performance. We first demonstrate through a study that this idea is feasible. Next, we demonstrate that significant differences between groups of users can impact conclusions particularly where different autonomies are involved. Finally, we also provide our rich, extensive corpus of user study data to the wider community to aid researchers in designing better CPHS.
机译:大多数网络物理人类系统(CPHS)都依赖用户学习如何与系统交互。相反,协作式CPHS应该向用户学习并以提高整体系统性能的方式适应他们。实现这一点需要人机/人机交互与网络物理系统社区之间的协作,以便将有关用户的知识反馈到CPHS的设计中。但是,必需的用户研究非常困难,耗时并且必须精心设计。此外,由于人类在与自治的互动中十分复杂,因此很难先验地知道必须有多少用户参与才能获得最终结果。在本文中,我们将详细阐述我们的工作,即通过与机器人性能相关的人机交互来推断用户的内在素质,以适应自主权并提高整体CPHS性能。我们首先通过研究证明这种想法是可行的。接下来,我们证明用户组之间的显着差异会影响结论,特别是在涉及不同自治权的情况下。最后,我们还向广大社区提供了丰富而广泛的用户研究数据集,以帮助研究人员设计更好的CPHS。

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