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A Novel Layered Learning Approach for Forecasting Respiratory Disease Excess Mortality during the COVID-19 pandemic
21a Conferencia da Associacao Portuguesa de Sistemas de Informacao, CAPSI 2021 - 21st Conference of the Portuguese Association for Information Systems, CAPSI 2021 ; 2021-October, 2021.
Article in English | Scopus | ID: covidwho-2083403
ABSTRACT
Forecasting model selection and model combination are the two contending approaches in the time series forecasting literature. Ensemble learning is useful for addressing a given predictive task by different predictive models when direct mapping from inputs to outputs is inaccurate. We adopt a layered learning approach to an ensemble learning strategy to solve the predictive tasks with improved predictive performance and take advantage of multiple learning processes into an ensemble model. In this proposed strategy, we build each model with a specific holdout and make the ensemble model of time series with a dynamic selection approach. For the experimental section, we studied more than twelve thousand observations in a portfolio of 61-time series of reported respiratory disease deaths to show the amount of improvement in predictive performance of excess mortality. Then we compare the forecasting outcome of our model with the corresponding total deaths of COVID-19 for selected countries. © 2021 Associacao Portuguesa de Sistemas de Informacao. All rights reserved.
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Collection: Databases of international organizations Database: Scopus Language: English Journal: 21a Conferencia da Associacao Portuguesa de Sistemas de Informacao, CAPSI 2021 - 21st Conference of the Portuguese Association for Information Systems, CAPSI 2021 Year: 2021 Document Type: Article

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Collection: Databases of international organizations Database: Scopus Language: English Journal: 21a Conferencia da Associacao Portuguesa de Sistemas de Informacao, CAPSI 2021 - 21st Conference of the Portuguese Association for Information Systems, CAPSI 2021 Year: 2021 Document Type: Article