Epidemic outbreaks in two-scale community networks
Author(s) -
Stefano Bonaccorsi,
Stefania Ottaviano,
Francesco De Pellegrini,
Annalisa Socievole,
Piet Van Mieghem
Publication year - 2014
Publication title -
physical review. e, statistical, nonlinear and soft matter physics
Language(s) - English
Resource type - Journals
eISSN - 1550-2376
pISSN - 1539-3755
DOI - 10.1103/physreve.90.012810
Subject(s) - adjacency matrix , outbreak , population , epidemic model , occupancy , infection rate , statistical physics , mathematics , computer science , combinatorics , biology , ecology , demography , physics , virology , medicine , graph , surgery , sociology
We consider a model for the diffusion of epidemics in a population that is partitioned into local communities. In particular, assuming a mean-field approximation, we analyze a continuous-time susceptible-infected-susceptible (SIS) model that has appeared recently in the literature. The probability by which an individual infects individuals in its own community is different from the probability of infecting individuals in other communities. The aim of the model, compared to the standard, nonclustered one, is to provide a compact description for the presence of communities of local infection where the epidemic process is faster compared to the rate at which it spreads across communities. Ultimately, it provides a tool to express the probability of epidemic outbreaks in the form of a metastable infection probability. In the proposed model, the spatial structure of the network is encoded by the adjacency matrix of clusters, i.e., the connections between local communities, and by the vector of the sizes of local communities. Thus, the existence of a nontrivial metastable occupancy probability is determined by an epidemic threshold which depends on the clusters' size and on the intercommunity network structure
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