Many of us researchers take extra measures to control for known-unknowns. However, unknown-unknowns can, at best, be negligible, but otherwise, they could produce unreliable data that might have dire consequences in real-life downstream applications. Human-Robot Interaction standards informed by empirical data could save us time and effort and provide us with the path toward the robots of the future. To this end, we share some of our pilot studies, lessons learned, and how they affected the outcome of our experiments. While these aspects might not be publishable in themselves, we hope our work might save time and effort for other researchers towards their research and serve as additional considerations for discussion at the workshop.
翻译:Translated abstract:
我们许多研究人员采取额外措施来控制已知-未知因素。然而,未知-未知因素最多可以可忽略不计,但在实际应用中,它们可能会产生不可靠的数据,从而产生严重后果。通过实证数据的人机交互规范可以为我们节省时间和精力,并为我们提供未来机器人的路径。为此,我们分享了一些初步研究、经验教训以及它们如何影响我们实验结果的内容。虽然这些方面可能本身不可出版,但我们希望我们的工作可以为其他研究人员节省时间和精力,为研讨会的讨论提供额外的考虑因素。