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A new hybrid ARIMA-SVM model significantly improves COVID-19 forecasting accuracy and efficiency. This approach reduces prediction errors, offering a more reliable tool for public health authorities to monitor and control the pandemic's spread.

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Area of Science:

  • Epidemiology
  • Data Science
  • Public Health

Background:

  • Accurate COVID-19 forecasting is vital for effective pandemic control.
  • Existing models struggle with the complex linear and non-linear patterns in COVID-19 data, leading to inaccuracies.
  • There is a need for more precise and efficient prediction methods.

Purpose of the Study:

  • To propose a hybrid ARIMA-SVM model for enhanced COVID-19 forecasting.
  • To evaluate the performance and improvements of the hybrid model against standalone ARIMA and SVM models.
  • To validate the proposed model's accuracy and efficiency using statistical metrics.

Main Methods:

  • Development of a hybrid ARIMA-SVM model.
  • Comparative analysis using statistical measurements: Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), and Mean Absolute Percentage Error (MAPE).
  • Empirical testing on three real-world COVID-19 datasets from Malaysia.

Main Results:

  • The hybrid ARIMA-SVM model consistently produced lower MSE, RMSE, MAE, and MAPE values compared to ARIMA and SVM models.
  • The proposed model demonstrated superior accuracy and efficiency in predicting COVID-19 cases on both training and testing datasets.
  • Significant error reduction percentages were achieved, with maximum improvements of 73.12% (MAE), 74.6% (MAPE), 90.38% (MSE), and 68.99% (RMSE).

Conclusions:

  • The hybrid ARIMA-SVM model offers a more accurate and efficient approach to COVID-19 forecasting.
  • This model provides a valuable tool for public health authorities to improve pandemic monitoring and prevention strategies.
  • The enhanced prediction performance validates the hybrid model as an effective method for managing infectious disease outbreaks.