Predicting COVID-19 Spread from Large-Scale Mobility Data
Amray Schwabe, Joel Persson, Stefan Feuerriegel

TL;DR
This paper introduces a novel mobility-based Hawkes model for COVID-19 forecasting, demonstrating improved accuracy over existing methods using large-scale telecommunication data in Switzerland.
Contribution
The study presents the first COVID-19 spread prediction model utilizing telecommunication mobility data, combining a Hawkes process with a mobility-informed infection rate modulation.
Findings
Model outperformed baselines by 15.52% in RMSE.
Consistent improvements across 5- to 21-day forecasts.
Telecommunication data proved superior to point of interest data.
Abstract
To manage the COVID-19 epidemic effectively, decision-makers in public health need accurate forecasts of case numbers. A potential near real-time predictor of future case numbers is human mobility; however, research on the predictive power of mobility is lacking. To fill this gap, we introduce a novel model for epidemic forecasting based on mobility data, called mobility marked Hawkes model. The proposed model consists of three components: (1) A Hawkes process captures the transmission dynamics of infectious diseases. (2) A mark modulates the rate of infections, thus accounting for how the reproduction number R varies across space and time. The mark is modeled using a regularized Poisson regression based on mobility covariates. (3) A correction procedure incorporates new cases seeded by people traveling between regions. Our model was evaluated on the COVID-19 epidemic in Switzerland.…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Data-Driven Disease Surveillance · Spatial and Panel Data Analysis
