Algorithms Using Local Graph Features to Predict Epidemics
Yeganeh Alimohammadi, Christian Borgs, Amin Saberi

TL;DR
This paper investigates how local graph features, especially small subgraph patterns, can be used to predict epidemic outbreak sizes in complex networks, providing algorithms that use limited local information for accurate predictions.
Contribution
It introduces a novel approach showing that local subgraph information suffices to approximate epidemic outcomes in large networks, extending previous models to more general graph classes.
Findings
Algorithm achieves (1-ε) approximation using local neighborhoods.
Predictions valid for large-set expanders with local weak limits.
Results extend to preferential attachment and motif-structured networks.
Abstract
We study a simple model of epidemics where an infected node transmits the infection to its neighbors independently with probability . This is also known as the independent cascade or Susceptible-Infected-Recovered (SIR) model with fixed recovery time. The size of an outbreak in this model is closely related to that of the giant connected component in ``edge percolation'', where each edge of the graph is kept independently with probability , studied for a large class of networks including configuration model \cite{molloy2011critical} and preferential attachment \cite{bollobas2003,Riordan2005}. Even though these models capture the effects of degree inhomogeneity and the role of super-spreaders in the spread of an epidemic, they only consider graphs that are locally tree like i.e. have a few or no short cycles. Some generalizations of the configuration model were suggested to capture…
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Videos
Algorithms Using Local Graph Features to Predict Epidemics· youtube
Algorithms Using Local Graph Features to Predict Epidemics· youtube
Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Mental Health Research Topics
