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Bridging the gap between emotion and joint action

2021-08-13 14:21:37
M. M. N. Bieńkiewicz (1), A. Smykovskyi (1), T. Olugbade (2), S. Janaqi (1), A. Camurri (3), N. Bianchi-Berthouze (2), M. Björkman (4), B. G. Bardy (1) ((1) EuroMov Digital Health in Motion Univ. Montpellier IMT Mines Ales France, (2) UCL, University College of London UK, (3) UNIGE InfoMus Casa Paganini Italy, (4) KTH Royal Institute of Technology Sweden)

Abstract

Our daily human life is filled with a myriad of joint action moments, be it children playing, adults working together (i.e., team sports), or strangers navigating through a crowd. Joint action brings individuals (and embodiment of their emotions) together, in space and in time. Yet little is known about how individual emotions propagate through embodied presence in a group, and how joint action changes individual emotion. In fact, the multi-agent component is largely missing from neuroscience-based approaches to emotion, and reversely joint action research has not found a way yet to include emotion as one of the key parameters to model socio-motor interaction. In this review, we first identify the gap and then stockpile evidence showing strong entanglement between emotion and acting together from various branches of sciences. We propose an integrative approach to bridge the gap, highlight five research avenues to do so in behavioral neuroscience and digital sciences, and address some of the key challenges in the area faced by modern societies.

Abstract (translated)

URL

https://arxiv.org/abs/2108.06264

PDF

https://arxiv.org/pdf/2108.06264.pdf


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