Hybrid Modeling of Regional COVID-19 Transmission Dynamics in the U.S
Yue Bai, Abolfazl Safikhani, George Michailidis

TL;DR
This paper introduces a hybrid, data-driven modeling framework combining a piecewise SIR model with spatial and temporal data to analyze and forecast COVID-19 transmission dynamics at regional levels in the U.S.
Contribution
The paper develops a novel hybrid model that integrates break point detection, spatial smoothing, and VAR to improve COVID-19 transmission analysis and forecasting.
Findings
Detected break points aligned with mitigation policies
Provided accurate short-term forecasts of daily cases
Outperformed or matched existing models in predictive accuracy
Abstract
The fast transmission rate of COVID-19 worldwide has made this virus the most important challenge of year 2020. Many mitigation policies have been imposed by the governments at different regional levels (country, state, county, and city) to stop the spread of this virus. Quantifying the effect of such mitigation strategies on the transmission and recovery rates, and predicting the rate of new daily cases are two crucial tasks. In this paper, we propose a hybrid modeling framework which not only accounts for such policies but also utilizes the spatial and temporal information to characterize the pattern of COVID-19 progression. Specifically, a piecewise susceptible-infected-recovered (SIR) model is developed while the dates at which the transmission/recover rates change significantly are defined as "break points" in this model. A novel and data-driven algorithm is designed to locate the…
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