4.6 Article

Designing a hybrid reinforcement learning based algorithm with application in prediction of the COVID-19 pandemic in Quebec

Journal

ANNALS OF OPERATIONS RESEARCH
Volume 312, Issue 2, Pages 1261-1305

Publisher

SPRINGER
DOI: 10.1007/s10479-020-03871-7

Keywords

COVID-19 pandemic; SARS-Cov-2; Reinforcement learning; SIDARTHE; Machine learning

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This study introduces a novel hybrid reinforcement learning-based algorithm for predicting the COVID-19 pandemic and optimizing the allocation of healthcare system resources. The results show that the method has superiority in optimization problems, accurately reflects the trend of the epidemic, and provides important insights for decision makers.
World Health Organization (WHO) stated COVID-19 as a pandemic in March 2020. Since then, 26,795,847 cases have been reported worldwide, and 878,963 lost their lives due to the illness by September 3, 2020. Prediction of the COVID-19 pandemic will enable policymakers to optimize the use of healthcare system capacity and resource allocation to minimize the fatality rate. In this research, we design a novel hybrid reinforcement learning-based algorithm capable of solving complex optimization problems. We apply our algorithm to several well-known benchmarks and show that the proposed methodology provides quality solutions for most complex benchmarks. Besides, we show the dominance of the offered method over state-of-the-art methods through several measures. Moreover, to demonstrate the suggested method's efficiency in optimizing real-world problems, we implement our approach to the most recent data from Quebec, Canada, to predict the COVID-19 outbreak. Our algorithm, combined with the most recent mathematical model for COVID-19 pandemic prediction, accurately reflected the future trend of the pandemic with a mean square error of 6.29E-06. Furthermore, we generate several scenarios for deepening our insight into pandemic growth. We determine essential factors and deliver various managerial insights to help policymakers making decisions regarding future social measures.

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