Finding Super-spreaders in SIS Epidemics
Anirudh Sridhar, Arnob Ghosh

TL;DR
This paper presents an efficient method to identify super-spreaders in SIS epidemic models directly from epidemic dynamics, avoiding full network reconstruction and enabling quicker targeted interventions.
Contribution
The authors develop a novel algorithm to identify high-degree vertices from epidemic dynamics, requiring significantly shorter observation windows than existing network reconstruction methods.
Findings
Accurately identifies super-spreaders in SIS models
Requires observation window size independent of network size
Enables effective epidemic control through targeted interventions
Abstract
In network epidemic models, controlling the spread of a disease often requires targeted interventions such as vaccinating high-risk individuals based on network structure. However, typical approaches assume complete knowledge of the underlying contact network, which is often unavailable. While network structure can be learned from observed epidemic dynamics, existing methods require long observation windows that may delay critical interventions. In this work, we show that full network reconstruction may not be necessary: control-relevant features, such as high-degree vertices (super-spreaders), can be learned far more efficiently than the complete structure. Specifically, we develop an algorithm to identify such vertices from the dynamics of a Susceptible-Infected-Susceptible (SIS) process. We prove that in an -vertex graph, vertices of degree at least can be identified…
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Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Opportunistic and Delay-Tolerant Networks
