The dynamics of entropy in the COVID-19 outbreaks
Ziqi Wang, Marco Broccardo, Arnaud Mignan, Didier Sornette

TL;DR
This paper introduces a stochastic Markovian framework to analyze the entropy dynamics and transmission metrics of COVID-19 outbreaks, providing insights into pandemic evolution and aiding in better modeling and mitigation strategies.
Contribution
It presents a novel entropy-based modeling approach applicable to any compartmental epidemic model, with a Bayesian calibration scheme and application to multiple COVID-19 datasets.
Findings
Significant differences in entropy change across regions.
Consistent trends in entropy evolution and reproductive ratio.
Framework applicable to various epidemic models.
Abstract
With the unfolding of the COVID-19 pandemic, mathematical modeling of epidemics has been perceived and used as a central element in understanding, predicting, and governing the pandemic event. However, soon it became clear that long term predictions were extremely challenging to address. Moreover, it is still unclear which metric shall be used for a global description of the evolution of the outbreaks. Yet a robust modeling of pandemic dynamics and a consistent choice of the transmission metric is crucial for an in-depth understanding of the macroscopic phenomenology and better-informed mitigation strategies. In this study, we propose a Markovian stochastic framework designed to describe the evolution of entropy during the COVID-19 pandemic and the instantaneous reproductive ratio. We then introduce and use entropy-based metrics of global transmission to measure the impact and temporal…
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