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Improved autoregressive integrated moving average model for COVID-19 prediction by using statistical significance and clustering techniques

Saratu Yusuf Ilu, Rajesh Prasad

2023Heliyon12 citationsDOIOpen Access PDF

Abstract

Purpose: The COVID-19 pandemic has affected more than 192 countries. The condition results in a respiratory illness (e.g., influenza) with signs and symptoms such as cold, cough, fever, and breathing difficulties. Predicting new instances of COVID-19 is always a challenging task. Methods: This study improved the autoregressive integrated moving average (ARIMA)-based time series prediction model by incorporating statistical significance for feature selection and k-means clustering for outlier detection. The accuracy of the improved model (ARIMAI) was examined using World Health Organization's official data on the COVID-19 pandemic worldwide and compared with that of many modern, cutting-edge algorithms. Results: The ARIMAI model (RSS score = 0.279, accuracy = 97.75%) outperformed the current ARIMA model (RSS score = 0.659, accuracy = 93%). Conclusions: The ARIMAI model is not only an efficient but also a rapid and simple technique to forecast COVID-19 trends. The usage of this model enables the prediction of any disease that will affect patients in the future pandemics.

Topics & Concepts

Coronavirus disease 2019 (COVID-19)Autoregressive modelCluster analysis2019-20 coronavirus outbreakSevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)StatisticsAutoregressive integrated moving averageStatistical analysisData miningComputer scienceArtificial intelligenceEconometricsMathematicsTime seriesMedicineVirologyInfectious disease (medical specialty)PathologyOutbreakDiseaseCOVID-19 diagnosis using AICOVID-19 epidemiological studiesArtificial Intelligence in Healthcare
Improved autoregressive integrated moving average model for COVID-19 prediction by using statistical significance and clustering techniques | Litcius