Comparative performance of hybrid model based on discrete wavelet transform and ARIMA models in prediction incidence of COVID-19.

Comparative performance of hybrid model based on discrete wavelet transform and ARIMA models in prediction incidence of COVID-19.

Publication date: Jul 15, 2024

Public health surveillance is an important aspect of outbreak early warning based on prediction models. The present study compares a hybrid model based on discrete wavelet transform (DWT) and ARIMA (Autoregressive Integrated Moving Average) for predicting incidence cases due to COVID-19. In the current cross-sectional stuady based on time-series data, the incidence data for confirmed daily cases of COVID-19 from February 26, 2019, to April 25, 2022, were used. A hybrid model based on DWT and ARIMA and a pure ARIMA model were used to predict the trend. All analyzes were performed by MATLAB 2018, stata 2015, and Excel 2013 computer software. Compared to the ARIMA model, the prediction results of the hybrid model were closer to the actual number of incident cases. The correlation between predicted values by the hybrid model with real data was higher than the correlation between predicted values by the ARIMA model with actual data. Discreet Wavelet decomposition of the dataset was combined with an ARIMA model and showed better performance in predicting the future trend.

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Concepts Keywords
Autoregressive ARIMA
February COVID-19
Matlab DWT
Surveillance Hybrid model
Prediction

Semantics

Type Source Name
disease MESH COVID-19
disease VO time
drug DRUGBANK Tropicamide
disease VO Optaflu
disease VO monthly
drug DRUGBANK Coenzyme M
disease IDO cell
disease VO frequency
disease IDO process
disease VO efficient
disease MESH morbidity
disease IDO susceptible population
disease VO vaccination coverage
disease VO USA
disease MESH pertussis
pathway KEGG Pertussis
drug DRUGBANK Lithium cation
disease MESH cancers
drug DRUGBANK Acetylsalicylic acid
disease MESH Emergencies
disease MESH dengue

Original Article

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