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Automated Classification of Dyadic Conversation Scenarios using Autonomic Nervous System Responses.
Chatterjee, Iman; Gorsic, Maja; Hossain, Mohammad S; Clapp, Joshua D; Novak, Vesna D.
  • Chatterjee I; University of Cincinnati, Cincinnati, OH 45221.
  • Gorsic M; University of Cincinnati, Cincinnati, OH 45221.
  • Hossain MS; University of Cincinnati, Cincinnati, OH 45221.
  • Clapp JD; University of Wyoming, Laramie, WY.
  • Novak VD; University of Cincinnati, Cincinnati, OH 45221.
IEEE Trans Affect Comput ; 14(4): 3388-3395, 2023.
Article en En | MEDLINE | ID: mdl-38107015
ABSTRACT
Two people's physiological responses become more similar as those people talk or cooperate, a phenomenon called physiological synchrony. The degree of synchrony correlates with conversation engagement and cooperation quality, and could thus be used to characterize interpersonal interaction. In this study, we used a combination of physiological synchrony metrics and pattern recognition algorithms to automatically classify four different dyadic conversation scenarios two-sided positive conversation, two-sided negative conversation, and two one-sided scenarios. Heart rate, skin conductance, respiration and peripheral skin temperature were measured from 16 dyads in all four scenarios, and individual as well as synchrony features were extracted from them. A two-stage classifier based on stepwise feature selection and linear discriminant analysis achieved a four-class classification accuracy of 75.0% in leave-dyad-out crossvalidation. Removing synchrony features reduced accuracy to 65.6%, indicating that synchrony is informative. In the future, such classification algorithms may be used to, e.g., provide real-time feedback about conversation mood to participants, with applications in areas such as mental health counseling and education. The approach may also generalize to group scenarios and adjacent areas such as cooperation and competition.
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