Exponentially increasing trend of infected patients with covid-19 in iran: A comparison of neural network and arima forecasting models

(2020) Exponentially increasing trend of infected patients with covid-19 in iran: A comparison of neural network and arima forecasting models. Iranian Journal of Public Health. pp. 92-100. ISSN 22516085 (ISSN)

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Abstract

Background: The outbreak of COVID-19 is rapidly spreading around the world and became a pandemic disease. For help to better planning of interventions, this study was conducted to forecast the number of daily new infected cases with COVID-19 for next thirty days in Iran. Methods: The information of observed Iranian new cases from 19th Feb to 30th Mar 2020 was used to predict the number of patients until 29th Apr. Artificial Neural Networks (ANN) and Auto-Regressive Integrated Mov-ing Average (ARIMA) models were applied for prediction. The data was prepared from daily reports of Iran Ministry of Health and open datasets provided by the JOHN Hopkins. To compare models, dataset was sepa-rated into train and test sets. Mean Squared Error (MSE) and Mean Absolute Error (MAE) was the comparison criteria. Results: Both algorithms forecasted an exponential increase in number of newly infected patients. If the spreading pattern continues the same as before, the number of daily new cases would be 7872 and 9558 by 29th Apr, respectively by ANN and ARIMA. While Model comparison confirmed that ARIMA prediction was more accurate than ANN. Conclusion: COVID-19 is contagious disease, and has infected many people in Iran. Our results are an alarm for health policy planners and decision-makers, to make timely decisions, control the disease and provide the equipment needed. © 2020, Iranian Journal of Public Health. All rights reserved.

Item Type: Article
Keywords: Artificial neural network COVID-19 Forecast Iran
Page Range: pp. 92-100
Journal or Publication Title: Iranian Journal of Public Health
Journal Index: Scopus
Volume: 49
ISSN: 22516085 (ISSN)
Depositing User: Zahra Otroj
URI: http://eprints.mui.ac.ir/id/eprint/13168

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