Higher-order modeling of face-to-face interactions
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Abstract
The most fundamental social interactions among humans occur face-to-face.
Their features have been extensively studied in recent years, owing to the availability of high-resolution data on individuals' proximity.
Mathematical models based on mobile agents have been crucial to understanding the spatio-temporal organization of face-to-face interactions.
However, these models focus on dyadic relationships only, failing to characterize interactions in larger groups of individuals.
Here, we propose a model in which agents interact with each other by forming groups of different sizes.
Each group has a degree of social attractiveness, based on which neighboring agents decide whether to join.
Our framework reproduces different properties of groups in face-to-face interactions, including their distribution, the correlation in their number, and their persistence in time, which dyadic models cannot replicate.
Furthermore, it captures homophilic patterns at the level of higher-order interactions, going beyond standard pairwise approaches.
Our work provides further evidence that higher-order interactions are key to describe human face-to-face contacts, paving the way for further investigation of how group dynamics at a microscopic scale affects social phenomena at a macroscopic scale.