A Data-driven Understanding of COVID-19 Dynamics Using Sequential
Genetic Algorithm Based Probabilistic Cellular Automata
- URL: http://arxiv.org/abs/2008.12020v1
- Date: Thu, 27 Aug 2020 09:53:21 GMT
- Title: A Data-driven Understanding of COVID-19 Dynamics Using Sequential
Genetic Algorithm Based Probabilistic Cellular Automata
- Authors: Sayantari Ghosh and Saumik Bhattacharya
- Abstract summary: This study proposes that for an accurate data-driven modeling of this infection spread, cellular automata provides an excellent platform.
Elaborate analyses for COVID-19 statistics of forty countries from different continents have been performed.
The substantial predictive power of this model has been established with conclusions on the key players in this pandemic dynamics.
- Score: 4.36572039512405
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: COVID-19 pandemic is severely impacting the lives of billions across the
globe. Even after taking massive protective measures like nation-wide
lockdowns, discontinuation of international flight services, rigorous testing
etc., the infection spreading is still growing steadily, causing thousands of
deaths and serious socio-economic crisis. Thus, the identification of the major
factors of this infection spreading dynamics is becoming crucial to minimize
impact and lifetime of COVID-19 and any future pandemic. In this work, a
probabilistic cellular automata based method has been employed to model the
infection dynamics for a significant number of different countries. This study
proposes that for an accurate data-driven modeling of this infection spread,
cellular automata provides an excellent platform, with a sequential genetic
algorithm for efficiently estimating the parameters of the dynamics. To the
best of our knowledge, this is the first attempt to understand and interpret
COVID-19 data using optimized cellular automata, through genetic algorithm. It
has been demonstrated that the proposed methodology can be flexible and robust
at the same time, and can be used to model the daily active cases, total number
of infected people and total death cases through systematic parameter
estimation. Elaborate analyses for COVID-19 statistics of forty countries from
different continents have been performed, with markedly divergent time
evolution of the infection spreading because of demographic and socioeconomic
factors. The substantial predictive power of this model has been established
with conclusions on the key players in this pandemic dynamics.
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