Dynamics of Collective Group Affect: Group-level Annotations and the Multimodal Modeling of Convergence and Divergence
Navin Raj Prabhu, Maria Tsfasman, Catharine Oertel, Timo Gerkmann and, Nale Lehmann-Willenbrock

TL;DR
This paper investigates the dynamics of group affect by collecting fine-grained annotations and modeling convergence and divergence in multimodal social signals during group interactions.
Contribution
It introduces the first methodology for annotating and modeling group-level affect dynamics using synchronized audio-visual features and temporal analysis.
Findings
Groups tend to diverge at neutral affect levels.
Groups tend to converge at extreme affect levels.
Multimodal synchrony features improve affect prediction.
Abstract
Collaborating in a group, whether face-to-face or virtually, involves continuously expressing emotions and interpreting those of other group members. Therefore, understanding group affect is essential to comprehending how groups interact and succeed in collaborative efforts. In this study, we move beyond individual-level affect and investigate group-level affect -- a collective phenomenon that reflects the shared mood or emotions among group members at a particular moment. As the first in literature, we gather annotations for group-level affective expressions using a fine-grained temporal approach (15 second windows) that also captures the inherent dynamics of the collective construct. To this end, we use trained annotators and an annotation procedure specifically tuned to capture the entire scope of the group interaction. In addition, we model group affect dynamics over time. One way…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques
