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General group-based epidemic model for spreading processes on networks: GgroupEM (datasets)
- Citation Author(s):
- Submitted by:
- Sifat Afroj Moon
- Last updated:
- Tue, 05/17/2022 - 22:17
- DOI:
- 10.21227/byha-ac60
- Research Article Link:
- License:
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- Keywords:
Abstract
We develop a general group-based continuous-time Markov epidemic model (GgroupEM) framework for any compartmental epidemic model (e.g., susceptible-infected-susceptible, susceptible-infected-recovered, susceptible-exposed-infected-recovered). Here, a group consists of a collection of individual nodes of a network. This model can be used to understand the critical dynamic characteristics of a stochastic epidemic spreading over large complex networks while being informative about the state of groups. Aggregating nodes by groups, the state-space becomes smaller than the one of individual-based approach at the cost of an aggregation error, which is bounded by the well-known isoperimetric inequality. We also develop a mean-field approximation of this framework to reduce the state-space size further. Finally, we extend the GgroupEM to multilayer networks. Individual-based frameworks are in general not computationally efficient. However, the individual-based approach is essential when the objective is to study the local dynamics at the individual level. Therefore, we propose a group-based framework to reduce the computational time of the Individual-based generalized epidemic model framework (GEMF) but retain its advantages.
Files contain emirical network dta for the section 4C in the paper "General group-based epidemic model for spreading processes on networks: GgroupEM".