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Applying Deep Learning Methods on Time-Series Data for Forecasting COVID-19 in Egypt, Kuwait, and Saudi Arabia

Author

Listed:
  • Nahla F. Omran
  • Sara F. Abd-el Ghany
  • Hager Saleh
  • Abdelmgeid A. Ali
  • Abdu Gumaei
  • Mabrook Al-Rakhami
  • Ahmed Mostafa Khalil

Abstract

The novel coronavirus disease (COVID-19) is regarded as one of the most imminent disease outbreaks which threaten public health on various levels worldwide. Because of the unpredictable outbreak nature and the virus’s pandemic intensity, people are experiencing depression, anxiety, and other strain reactions. The response to prevent and control the new coronavirus pneumonia has reached a crucial point. Therefore, it is essential—for safety and prevention purposes—to promptly predict and forecast the virus outbreak in the course of this troublesome time to have control over its mortality. Recently, deep learning models are playing essential roles in handling time-series data in different applications. This paper presents a comparative study of two deep learning methods to forecast the confirmed cases and death cases of COVID-19. Long short-term memory (LSTM) and gated recurrent unit (GRU) have been applied on time-series data in three countries: Egypt, Saudi Arabia, and Kuwait, from 1/5/2020 to 6/12/2020. The results show that LSTM has achieved the best performance in confirmed cases in the three countries, and GRU has achieved the best performance in death cases in Egypt and Kuwait.

Suggested Citation

  • Nahla F. Omran & Sara F. Abd-el Ghany & Hager Saleh & Abdelmgeid A. Ali & Abdu Gumaei & Mabrook Al-Rakhami & Ahmed Mostafa Khalil, 2021. "Applying Deep Learning Methods on Time-Series Data for Forecasting COVID-19 in Egypt, Kuwait, and Saudi Arabia," Complexity, Hindawi, vol. 2021, pages 1-13, March.
  • Handle: RePEc:hin:complx:6686745
    DOI: 10.1155/2021/6686745
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