Fast variables determine the epidemic threshold in the pairwise model with an improved closure
Istv\'an Z. Kiss, Joel C. Miller, P\'eter L. Simon

TL;DR
This paper introduces an asymptotic expansion method to determine the epidemic threshold in pairwise models with clustering, leveraging fast variables to improve analytical tractability and accuracy.
Contribution
It develops an asymptotic expansion approach based on fast variables to accurately estimate epidemic thresholds in complex pairwise models with clustering.
Findings
Excellent agreement with numerical solutions across various parameters
Method applicable to different closure models
Highlights the importance of model choice for realistic outbreaks
Abstract
Pairwise models are used widely to model epidemic spread on networks. These include the modelling of susceptible-infected-removed (SIR) epidemics on regular networks and extensions to SIS dynamics and contact tracing on more exotic networks exhibiting degree heterogeneity, directed and/or weighted links and clustering. However, extra features of the disease dynamics or of the network lead to an increase in system size and analytical tractability becomes problematic. Various `closures' can be used to keep the system tractable. Focusing on SIR epidemics on regular but clustered networks, we show that even for the most complex closure we can determine the epidemic threshold as an asymptotic expansion in terms of the clustering coefficient.We do this by exploiting the presence of a system of fast variables, specified by the correlation structure of the epidemic, whose steady state…
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