Modeling diffusion in networks with communities: A multitype branching process approach
The dynamics of diffusion in complex networks are widely studied to understand how entities, such as information, diseases, or behaviors, spread in an interconnected environment. Complex networks often present community structure, and tools to analyze diffusion processes on networks with communities are needed. In this paper, we develop theoretical tools using multitype branching processes to model and analyze diffusion processes, following a simple contagion mechanism, across a broad class of networks with community structure. We show how, by using limited information about the network—the degree distribution within and between communities—we can calculate standard statistical characteristics of propagation dynamics, such as the extinction probability, hazard function, and cascade size distribution. These properties can be estimated not only for the entire network but also for each community separately. Furthermore, we estimate the probability of spread crossing from one community to another where it is not currently spreading. We demonstrate the accuracy of our framework by applying it to two specific examples: the stochastic block model and a log-normal network with community structure. We show how the initial seeding location affects the observed cascade size distribution on a heavy-tailed network and that our framework accurately captures this effect.
Funding
SFI Centre for Research Training in Foundations of Data Science
Science Foundation Ireland
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European Research Council
Find out more...History
Publication
Physical Review E, 2025, 111 (3), Article number 034310Publisher
American Physical SocietyAlso affiliated with
- MACSI - Mathematics Application Consortium for Science & Industry
External identifier
Department or School
- Psychology
- Mathematics & Statistics