2021 IEEE Statistical Signal Processing Workshop (SSP) | 2021

Social Bubbles and Superspreaders: Source Identification for Contagion Processes on Hypertrees

 
 

Abstract


Previous work shows that for contagions on extended star networks, there is a simple, closed-form expression for a highly accurate approximation to the maximum likelihood infection source. Here, we generalize that result to a class of hypertrees which, although somewhat structurally analogous, provides a much richer representation space. This approach can be used to estimate patient zero sources, even when the infection has been propagated via large group gatherings rather than person-to-person spread, and when it is spreading through interrelated social bubbles with varying degrees of overlap. In contact tracing contexts, this estimator may be used to identify the source of a local outbreak, which can then be used for forward tracing or further backward tracing.

Volume None
Pages 471-475
DOI 10.1109/SSP49050.2021.9513748
Language English
Journal 2021 IEEE Statistical Signal Processing Workshop (SSP)

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