Abstract

COVID-19 has led to a pandemic, affecting almost all countries in a few months. In this work, we applied selected deep learning models including multilayer perceptron, random forest, and different versions of long short-term memory (LSTM), using three data sources to train the models, including COVID-19 occurrences, basic information like coded country names, and detailed information like population, and area of different countries. The main goal is to forecast the outbreak in nine countries (Iran, Germany, Italy, Japan, Korea, Switzerland, Spain, China, and the USA). The performances of the models are measured using four metrics, including mean average percentage error (MAPE), root mean square error (RMSE), normalized RMSE (NRMSE), and R2. The best performance was found for a modified version of LSTM, called M-LSTM (winner model), to forecast the future trajectory of the pandemic in the mentioned countries. For this purpose, we collected the data from January 22 till July 30, 2020, for training, and from 1 August 2020 to 31 August 2020, for the testing phase. Through experimental results, the winner model achieved reasonably accurate predictions (MAPE, RMSE, NRMSE, and R2 are 0.509, 458.12, 0.001624, and 0.99997, respectively). Furthermore, we stopped the training of the model on some dates related to main country actions to investigate the effect of country actions on predictions by the model.

Highlights

  • An outbreak of pneumonia with an unknown origin was reported in Wuhan, China, last December 2019 [1]

  • Anastassopoulou et al [15] estimated the main epidemiological parameters, the case fatality and case recovery ratios based on a susceptible-infectious-recovered-dead (SIRD) model with 90% confidence intervals. They adopted an autoregressive integrated moving average (ARIMA) model on the data collected from 31st January 2020 to 25th March 2020 and verified it using the data collected from 26th March 2020 to 04th April 2020

  • Khan and Gupta [16] proposed an autoregressive integrated moving average (ARIMA) model to predict the number of COVID-19-infected cases in India

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Summary

Introduction

An outbreak of pneumonia with an unknown origin was reported in Wuhan, China, last December 2019 [1]. One of the most important concerns in dealing with influenza-like illness (ILI) pandemics such as COVID-19 is early identification and short-term estimation of its final size and peak time This early prediction using mathematical and statistical models and combining with existing data would effectively help the governments and public health officials. Anastassopoulou et al [15] estimated the main epidemiological parameters, the case fatality and case recovery ratios based on a susceptible-infectious-recovered-dead (SIRD) model with 90% confidence intervals They adopted an autoregressive integrated moving average (ARIMA) model on the data collected from 31st January 2020 to 25th March 2020 and verified it using the data collected from 26th March 2020 to 04th April 2020. Khan and Gupta [16] proposed an autoregressive integrated moving average (ARIMA) model to predict the number of COVID-19-infected cases in India

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