A Multimodal Social Signal Processing Approach to Team Interactions

Nale Lehmann-Willenbrock*, Hayley Hung

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

Social signal processing develops automated approaches to detect, analyze, and synthesize social signals in human–human as well as human–machine interactions by means of machine learning and sensor data processing. Most works analyze individual or dyadic behavior, while the analysis of group or team interactions remains limited. We present a case study of an interdisciplinary work process for social signal processing that can develop automatized measures of complex team interaction dynamics, using team task and social cohesion as an example. In a field sample of 25 real project team meetings, we obtained sensor data from cameras, microphones, and a smart ID badge measuring acceleration. We demonstrate how fine-grained behavioral expressions of task and social cohesion in team meetings can be extracted and processed from sensor data by capturing dyadic coordination patterns that are then aggregated to the team level. The extracted patterns act as proxies for behavioral synchrony and mimicry of speech and body behavior which map onto verbal expressions of task and social cohesion in the observed team meetings. We reflect on opportunities for future interdisciplinary or collaboration that can move beyond a simple producer–consumer model.

Original languageEnglish
Pages (from-to)477-515
Number of pages39
JournalOrganizational Research Methods
Volume27
Issue number3
DOIs
Publication statusPublished - 2024

Keywords

  • field research
  • longitudinal and related approaches
  • machine learning and AI
  • time series
  • types of research design

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