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Advisor(s)
Abstract(s)
During a pandemic, public discussion and decision-making may be required in face of
limited evidence. Data-grounded analysis can support decision-makers in such contexts, contributing
to inform public policies. We present an empirical analysis method based on regression modelling
and hypotheses testing to assess events for the possibility of occurrence of superspreading contagion
with geographically heterogeneous impacts. We demonstrate the method by evaluating the case of
the May 1st, 2020 Demonstration in Lisbon, Portugal, on regional growth patterns of COVID-19 cases.
The methodology enabled concluding that the counties associated with the change in the growth
pattern were those where likely means of travel to the demonstration were chartered buses or private
cars, rather than subway or trains. Consequently, superspreading was likely due to travelling to/from
the event, not from participating in it. The method is straightforward, prescribing systematic steps.
Its application to events subject to media controversy enables extracting well founded conclusions,
contributing to informed public discussion and decision-making, within a short time frame of the
event occurring.
Description
Keywords
Time series segmentation Modelling COVID-19 Heterogeneous impacts