SIR Epidemics in Interconnected Networks: threshold curve and phase transition
Saswata Das, Mohammad Hossein Samaei, Caterina Scoglio

TL;DR
This paper analyzes how interconnected networks influence SIR epidemic thresholds and spillover phenomena, revealing phase transitions and regimes based on inter-network links and infection rates.
Contribution
It introduces a generic model for epidemic thresholds and spillover in interconnected networks, highlighting phase transitions and the impact of network topology.
Findings
Epidemic threshold curve depends on interconnection and initial infections.
A phase transition occurs in spillover when inter-network links or infection rates exceed a threshold.
High spillover probability is associated with the major regime of inter-network links.
Abstract
To simplify mathematical models of disease spread, we often assume equal contact rates among hosts, but real-world scenarios differ. Network-based frameworks help capture these complexities and structural variations in actual systems. We explore two scenarios involving Susceptible-Infected-Recovered (SIR) dynamics in interconnected networks. First, we study how the epidemic threshold of a contact network changes when coupled with another network, holding infection strength constant. Our model treats both contact networks and interconnections generically. We depict the epidemic threshold curve for interconnected networks, accounting for initial infection in either or both networks. If normalized infection strengths surpass this threshold curve, the disease spreads; below it, it does not, regardless of interconnection level. In the second scenario, we investigate disease spillover,…
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Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Opinion Dynamics and Social Influence
