A generating-function approach to modelling complex contagion on clustered networks with multi-type branching processes
Understanding cascading processes on complex network topologies is paramount for modelling how diseases, information, fake news and other media spread. In this article, we extend the multi-type branching process method developed in Keating et al., (2022), which relies on networks having homogenous node properties, to a more general class of clustered networks. Using a model of socially inspired complex contagion we obtain results, not just for the average behaviour of the cascades but for full distributions of the cascade properties. We introduce a new method for the inversion of probability generating functions to recover their underlying probability distributions; this derivation naturally extends to higher dimensions. This inversion technique is used along with the multi-type branching process to obtain univariate and bivariate distributions of cascade properties. Finally, using clique-cover methods, we apply the methodology to synthetic and real-world networks and compare the theoretical distribution of cascade sizes with the results of extensive numerical simulations.
Funding
SFI Centre for Research Training in Foundations of Data Science
Science Foundation Ireland
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Publication
Journal of Complex Networks 11(6)Publisher
Oxford University PressOther Funding information
European Regional Development FundAlso affiliated with
- MACSI - Mathematics Application Consortium for Science & Industry
Sustainable development goals
- (9) Industry, Innovation and Infrastructure
External identifier
Department or School
- Mathematics & Statistics