Scientific journal paper Q1
An ensemble learning strategy for panel time series forecasting of excess mortality during the COVID-19 pandemic
Afshin Ashofteh (Ashofteh, A.); Jorge Miguel Bravo (Bravo, J.); Mercedes Ayuso (Ayuso, M.);
Journal Title
Applied Soft Computing
Year (definitive publication)
2022
Language
English
Country
United States of America
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Abstract
Quantifying and analyzing excess mortality in crises such as the ongoing COVID-19 pandemic is crucial for policymakers. Traditional measures fail to take into account differences in the level, long-term secular trends, and seasonal patterns in all-cause mortality across countries and regions. This paper develops and empirically investigates the forecasting performance of a novel, flexible and dynamic ensemble learning with a model selection strategy (DELMS) for the seasonal time series forecasting of monthly respiratory disease death data across a pool of 61 heterogeneous countries. The strategy is based on a Bayesian model averaging (BMA) of heterogeneous time series methods involving both the selection of the subset of best forecasters (model confidence set), the identification of the best holdout period for each contributed model, and the determination of optimal weights using out-of-sample predictive accuracy. A model selection strategy is also developed to remove the outlier models and to combine the models with reasonable accuracy in the ensemble. The empirical outcomes of this large set of experiments show that the accuracy of the BMA approach is significantly improved with DELMS when selecting a flexible and dynamic holdout period and removing the outlier models. Additionally, the forecasts of respiratory disease deaths for each country are highly accurate and exhibit a high correlation (94%) with COVID-19 deaths in 2020.
Acknowledgements
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Keywords
Layered learning,Ensemble learning,Multiple learning processes,Time series,Bayesian model averaging (BMA),Forecasting,Machine learning,Respiratory disease deaths,SARS-CoV-2,Panel data
  • Computer and Information Sciences - Natural Sciences
  • Economics and Business - Social Sciences
Funding Records
Funding Reference Funding Entity
UIDB/04152/2020 Fundação para a Ciência e a Tecnologia
2020-PANDE-00074 Generalitat de Catalunya
PID2019-105986GB-C21 Ministerio de Ciencia e Innovación