Social Processes: Self-Supervised Meta-Learning over Conversational Groups for Forecasting Nonverbal Social Cues
Chirag Raman, Hayley Hung, Marco Loog

TL;DR
This paper introduces Social Process models that leverage meta-learning to predict nonverbal social cues in conversational groups, effectively capturing group-specific dynamics and generalizing to unseen groups with limited data.
Contribution
The paper proposes a novel meta-learning framework for social cue forecasting that models group interactions as a stochastic process, improving generalization and data efficiency.
Findings
SP models outperform non-meta-learning baselines
Effective in both synthetic and real-world datasets
Enhances understanding of group-specific social dynamics
Abstract
Free-standing social conversations constitute a yet underexplored setting for human behavior forecasting. While the task of predicting pedestrian trajectories has received much recent attention, an intrinsic difference between these settings is how groups form and disband. Evidence from social psychology suggests that group members in a conversation explicitly self-organize to sustain the interaction by adapting to one another's behaviors. Crucially, the same individual is unlikely to adapt similarly across different groups; contextual factors such as perceived relationships, attraction, rapport, etc., influence the entire spectrum of participants' behaviors. A question arises: how can we jointly forecast the mutually dependent futures of conversation partners by modeling the dynamics unique to every group? In this paper, we propose the Social Process (SP) models, taking a novel…
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Taxonomy
TopicsEvacuation and Crowd Dynamics · Human Mobility and Location-Based Analysis · Crime Patterns and Interventions
MethodsNetwork On Network · Attentive Walk-Aggregating Graph Neural Network
