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Informatics and Automation, 2021, Issue 20, volume 5, Pages 1010–1033
DOI: https://doi.org/10.15622/20.5.1
(Mi trspy1159)
 

This article is cited in 2 scientific papers (total in 2 papers)

Mathematical Modeling, Numerical Methods

Forecasting development of COVID-19 epidemic in European Union using entropy-randomized approach

Y. Popkovab, Y. Dubnovbc, A. Popkovb

a Institute of Control Problems of Russian Academy of Sciences
b Federal Research Center "Computer Science and Control" of Russian Academy of Sciences
c National Research University Higher School of Economics
Abstract: The paper is devoted to the forecasting of the COVID-19 epidemic by the novel method of randomized machine learning. This method is based on the idea of estimation of probability distributions of model parameters and noises on real data. Entropy-optimal distributions correspond to the state of maximum uncertainty which allows the resulting forecasts to be used as forecasts of the most "negative" scenario of the process under study. The resulting estimates of parameters and noises, which are probability distributions, must be generated, thus obtaining an ensemble of trajectories that considered to be analyzed by statistical methods. In this work, for the purposes of such an analysis, the mean and median trajectories over the ensemble are calculated, as well as the trajectory corresponding to the mean over distribution values of the model parameters. The proposed approach is used to predict the total number of infected people using a three-parameter logistic growth model. The conducted experiment is based on real COVID-19 epidemic data in several countries of the European Union. The main goal of the experiment is to demonstrate an entropy-randomized approach for predicting the epidemic process based on real data near the peak. The significant uncertainty contained in the available real data is modeled by an additive noise within 30%, which is used both at the training and predicting stages. To tune the hyperparameters of the model, the scheme is used to configure them according to a testing dataset with subsequent retraining of the model. It is shown that with the same datasets, the proposed approach makes it possible to predict the development of the epidemic more efficiently in comparison with the standard approach based on the least-squares method.
Keywords: epidemic modelling, SARS-CoV-2, COVID-19, randomized machine learning, entropy, entropy estimation, forecasting, randomized forecasting.
Funding agency Grant number
Russian Foundation for Basic Research 20-04-60119
This work was supported by Russian Foundation for Basic Research (project no. 20-04-60119).
Received: 01.04.2021
Document Type: Article
UDC: 004.942
Language: Russian
Citation: Y. Popkov, Y. Dubnov, A. Popkov, “Forecasting development of COVID-19 epidemic in European Union using entropy-randomized approach”, Informatics and Automation, 20:5 (2021), 1010–1033
Citation in format AMSBIB
\Bibitem{PopDubPop21}
\by Y.~Popkov, Y.~Dubnov, A.~Popkov
\paper Forecasting development of COVID-19 epidemic in European Union using entropy-randomized approach
\jour Informatics and Automation
\yr 2021
\vol 20
\issue 5
\pages 1010--1033
\mathnet{http://mi.mathnet.ru/trspy1159}
\crossref{https://doi.org/10.15622/20.5.1}
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  • https://www.mathnet.ru/eng/trspy/v20/i5/p1010
  • This publication is cited in the following 2 articles:
    Citing articles in Google Scholar: Russian citations, English citations
    Related articles in Google Scholar: Russian articles, English articles
    Informatics and Automation
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