Network Rewiring and Spatial Targeting: Optimal Disease Mitigation in Multilayer Social Networks

Michael Konig, Kieran Marray, Frank Takes, Ozan Candogan

Research output: Working paper / PreprintWorking paperAcademic

52 Downloads (Pure)

Abstract

We study disease spread on a social network where individuals adjust contacts to avoid infection. Susceptible individuals rewire links from infectious individuals to other susceptibles, reducing infections and causing the disease to only become endemic at higher infection rates. We formulate the planner’s problem of implementing targeted lockdowns to control endemic disease as a semidefinite program that is computationally tractable even with many groups. Rewiring complements policy by allowing more intergroup contact as the rewiring rate increases. We apply our model to compute optimal spatiallytargeted lockdowns for the Netherlands during Covid-19 using a population-level contact network for 17.26 million individuals. Our findings indicate that, with rewiring, a targeted lockdown policy permits 12% more contacts compared to one without rewiring, underscoring the significance of accounting for network endogeneity in effective policy design.
Original languageEnglish
PublisherCEPR
Publication statusIn preparation - 2025

Fingerprint

Dive into the research topics of 'Network Rewiring and Spatial Targeting: Optimal Disease Mitigation in Multilayer Social Networks'. Together they form a unique fingerprint.

Cite this