Transition from time-variant to static networks
Timescale separation in N -intertwined mean-field approximation of susceptible-infectious-susceptible epidemics
R.D.L. Persoons (TU Delft - Network Architectures and Services)
Mattia Sensi (University Côte d'Azur, TU Delft - Network Architectures and Services)
Bastian Prasse (TU Delft - Network Architectures and Services, Politecnico di Torino)
P. van Mieghem (TU Delft - Network Architectures and Services, European Centre for Disease Prevention and Control)
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Abstract
We extend the N-intertwined mean-field approximation (NIMFA) for the susceptible-infectious-susceptible (SIS) epidemiological process to time-varying networks. Processes on time-varying networks are often analyzed under the assumption that the process and network evolution happen on different timescales. This approximation is called timescale separation. We investigate timescale separation between disease spreading and topology updates of the network. We introduce the transition times T(r) and T¯(r) as the boundaries between the intermediate regime and the annealed (fast changing network) and quenched (static network) regimes, respectively, for a fixed accuracy tolerance r. By analyzing the convergence of static NIMFA processes, we analytically derive upper and lower bounds for T¯(r). Our results provide insights and bounds on the time of convergence to the steady state of the static NIMFA SIS process. We show that, under our assumptions, the upper-transition time T¯(r) is almost entirely determined by the basic reproduction number R0 of the network. The value of the upper-transition time T¯(r) around the epidemic threshold is large, which agrees with the current understanding that some real-world epidemics cannot be approximated with the aforementioned timescale separation.