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Social Cognitive and Affective Neuroscience in Human–Machine Systems: A Roadmap for Improving Training, Human–Robot Interaction, and Team Performance

机译:人机系统中的社会认知和情感神经科学:改善培训,人机交互和团队绩效的路线图

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This paper augments recent advances in social cognitive and affective neuroscience (SCAN) and illustrates their relevance to the development of novel human–machine systems. Advances in this area are crucial for understanding and exploring the social, cognitive, and neural processes that arise during human interactions with complex sociotechnological systems. Overviews of the major areas of SCAN research, including emotion, theory of mind, and joint action, are provided as the basis for describing three applications of SCAN to human–machine systems research and development. Specifically, this paper provides three examples to demonstrate the broad interdisciplinary applicability of SCAN and the ways it can contribute to improving a number of human–machine systems with the pursuit of further research in this vein. These include applying SCAN to learning and training, informing the field of human–robot interaction (HRI), and, finally, for enhancing team performance. The goal is to draw attention to the insights that can be gained by integrating SCAN with ongoing human–machine system research and to provide guidance to foster collaborations of this nature. Toward this end, we provide a systematic set of notional research questions for each detailed application within the context of the three major emphases of SCAN research. In turn, this study serves as a roadmap for preliminary investigations that integrate SCAN and human–machine system research.
机译:本文丰富了社会认知和情感神经科学(SCAN)方面的最新进展,并说明了它们与新型人机系统的相关性。该领域的进步对于理解和探索在人类与复杂的社会技术系统互动过程中出现的社会,认知和神经过程至关重要。概述了SCAN研究的主要领域,包括情感,心理理论和共同行动,作为描述SCAN在人机系统研究和开发中的三种应用的基础。具体而言,本文提供了三个示例,以证明SCAN的广泛跨学科适用性以及通过进一步研究而可以改善许多人机系统的方式。其中包括将SCAN应用于学习和培训,为人机交互领域(HRI)提供信息,并最终提高团队绩效。目的是提请人们注意通过将SCAN与正在进行的人机系统研究相结合而获得的见解,并提供指导以促进这种性质的合作。为此,我们在SCAN研究的三个主要重点的背景下,针对每种详细应用提供了一套系统的理论研究问题。反过来,本研究也将初步研究纳入了SCAN和人机系统研究的路线图。

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