Clustering for epidemics on networks

A geometric approach

Journal Article (2021)
Author(s)

Bastian Prasse (TU Delft - Network Architectures and Services)

Karel Devriendt (The Alan Turing Institute, University of Oxford)

P. Van Mieghem (TU Delft - Network Architectures and Services)

Research Group
Network Architectures and Services
Copyright
© 2021 B. Prasse, K.L.T. Devriendt, P.F.A. Van Mieghem
DOI related publication
https://doi.org/10.1063/5.0048779
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 B. Prasse, K.L.T. Devriendt, P.F.A. Van Mieghem
Research Group
Network Architectures and Services
Issue number
6
Volume number
31
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Abstract

Infectious diseases typically spread over a contact network with millions of individuals, whose sheer size is a tremendous challenge to analyzing and controlling an epidemic outbreak. For some contact networks, it is possible to group individuals into clusters. A high-level description of the epidemic between a few clusters is considerably simpler than on an individual level. However, to cluster individuals, most studies rely on equitable partitions, a rather restrictive structural property of the contact network. In this work, we focus on Susceptible-Infected-Susceptible (SIS) epidemics, and our contribution is threefold. First, we propose a geometric approach to specify all networks for which an epidemic outbreak simplifies to the interaction of only a few clusters. Second, for the complete graph and any initial viral state vectors, we derive the closed-form solution of the nonlinear differential equations of the N-intertwined mean-field approximation of the SIS process. Third, by relaxing the notion of equitable partitions, we derive low-complexity approximations and bounds for epidemics on arbitrary contact networks. Our results are an important step toward understanding and controlling epidemics on large networks.

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