Influential groups for seeding and sustaining nonlinear contagion in heterogeneous hypergraphs
Guillaume St-Onge, Iacopo Iacopini, Vito Latora, Alain Barrat,, Giovanni Petri, Antoine Allard, and Laurent H\'ebert-Dufresne

TL;DR
This paper develops a mathematical framework to analyze how large groups influence the spread and persistence of contagions in heterogeneous hypergraphs, revealing the roles of group size, nonlinear infection dynamics, and optimal seeding strategies.
Contribution
It introduces a novel approximate master equation approach for hypergraph contagions, characterizes phase transitions, and compares seeding strategies based on group versus individual properties.
Findings
Large groups drive early spread and endemic states.
Heterogeneous group sizes and nonlinear contagion enable mesoscopic localization.
Group-based seeding is more effective under strong nonlinearity.
Abstract
Several biological and social contagion phenomena, such as superspreading events or social reinforcement, are the results of multi-body interactions, for which hypergraphs offer a natural mathematical description. In this paper, we develop a novel mathematical framework based on approximate master equations to study contagions on random hypergraphs with a heterogeneous structure, both in terms of group size (hyperedge cardinality) and of membership of nodes to groups (hyperdegree). The characterization of the inner dynamics of groups provides an accurate description of the contagion process, without losing the analytical tractability. Using a contagion model where multi-body interactions are mapped onto a nonlinear infection rate, our two main results show how large groups are influential, in the sense that they drive both the early spread of a contagion and its endemic state (i.e., its…
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Taxonomy
TopicsComplex Network Analysis Techniques · Mathematical and Theoretical Epidemiology and Ecology Models · Evolutionary Game Theory and Cooperation
