COVID-19 Spread Forecasting, Mathematical Methods vs. Machine Learning, Moscow Case

Author:

Pavlyutin Matvey,Samoyavcheva Marina,Kochkarov Rasul,Pleshakova Ekaterina,Korchagin SergeyORCID,Gataullin TimurORCID,Nikitin Petr,Hidirova Mohiniso

Abstract

To predict the spread of the new coronavirus infection COVID-19, the critical values of spread indicators have been determined for deciding on the introduction of restrictive measures using the city of Moscow as an example. A model was developed using classical methods of mathematical modeling based on exponential regression, the accuracy of the forecast was estimated, and the shortcomings of mathematical methods for predicting the spread of infection for more than two weeks. As a solution to the problem of the accuracy of long-term forecasts for more than two weeks, two models based on machine learning methods are proposed: a recurrent neural network with two layers of long short-term memory (LSTM) blocks and a 1-D convolutional neural network with a description of the choice of an optimization algorithm. The forecast accuracy of ML models was evaluated in comparison with the exponential regression model and one another using the example of data on the number of COVID-19 cases in the city of Moscow.

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

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1. Utilizing time series for forecasting the development trend of coronavirus: A validation process;Journal of Computational Methods in Sciences and Engineering;2023-12-15

2. Generalized Pandemic Model with COVID-19 for Early-Stage Infection Forecasting;Mathematics;2023-09-15

3. Prediction of Active Cases of COVID-19 Based on small-scale-KNN-LSTM;2023 35th Chinese Control and Decision Conference (CCDC);2023-05-20

4. COVID-19 multiwaves as multiphase percolation: a general N-sigmoidal equation to model the spread;The European Physical Journal Plus;2023-05-08

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