Abstract

There is a growing consensus that a fuller understanding of social cognition depends on more systematic studies of real-time social interaction. Such studies require methods that can deal with the complex dynamics taking place at multiple interdependent temporal and spatial scales, spanning sub-personal, personal, and dyadic levels of analysis. We demonstrate the value of adopting an extended multi-scale approach by re-analyzing movement time-series generated in a study of embodied dyadic interaction in a minimal virtual reality environment (a perceptual crossing experiment). Reduced movement variability revealed an interdependence between social awareness and social coordination that cannot be accounted for by either subjective or objective factors alone: it picks out interactions in which subjective and objective conditions are convergent (i.e., elevated coordination is perceived as clearly social, and impaired coordination is perceived as socially ambiguous). This finding is consistent with the claim that interpersonal interaction can be partially constitutive of direct social perception. Clustering statistics (Allan Factor) of salient events revealed fractal scaling. Complexity matching defined as the similarity between these scaling laws was significantly more pronounced in pairs of participants as compared to surrogate dyads. This further highlights the multi-scale and distributed character of social interaction and extends previous complexity matching results from dyadic conversation to non-verbal social interaction dynamics. Trials with successful joint interaction were also associated with an increase in local coordination. Consequently, a local coordination pattern emerges on the background of complex dyadic interactions in the PCE task and makes joint successful performance possible.

Highlights

  • Cognitive science has started to adopt a multi-scale and dynamical systems account for different aspects of human behavior (Dumas et al, 2014)

  • Compatible with complexity sciences is the enactive approach to cognition, which is based upon two main ideas

  • In the present study a time-series approach to dyadic embodied social interaction was adopted as a response to the critical claim by Bedia et al (2014), who pointed out that the previous perceptual crossing experiment (PCE) analyses were limited to a single time-scale, failing to account for the whole dynamics of dyadic social interaction

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Summary

Introduction

Cognitive science has started to adopt a multi-scale and dynamical systems account for different aspects of human behavior (Dumas et al, 2014). Complexity sciences are a formal way for adopting such an approach, as they have the advantage of studying a wide variety of phenomena from both holistic and dynamic perspectives. This way of thinking has yielded many insights. Time-series Analysis of Embodied Interaction into the behavior and underlying patterns of many processes in different fields like sociology, economics, medicine, biology, and cognitive sciences (Gershenson and Heylighen, 2005). Compatible with complexity sciences is the enactive approach to cognition, which is based upon two main ideas. The lived experience of the cognitive agent, which is embedded into an environment, influences its actions (Froese and Di Paolo, 2011; Colombetti, 2014)

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