Conference: 14th Brazilian Computational Intelligence Meeting
Forecasting epidemiological time series based on decomposition and optimization approaches
Decomposition
Ensemble
Time series
Meningitis
Multi-objective optimization
Abstract
Epidemiological time series forecasting plays an important role in health public system, since it allows managers to develop strategic planning to avoid possible epidemics. In this aspect, a hybrid approach is developed to forecast confirmed cases of megingitis in the Para, Parana and Santa Catarina states, Brazil. In this case, ensemble empirical mode decomposition (EEMD) is applied to decompose the original signal, quantile random forests (QRF) is adopted to forecast each component obtained in decomposition stage and multi-objective optimization (MOO) is used to reconstruct the final forecasting. To assess the performance of adopted methodology, comparisons are conducted with approach that considers to reconstruct the signal by simple sum (EEMD-QRF) and QRF without decomposition. In this context criteria such as mean squared error, symmetric mean absolute percentage error and coefficient of determination as well as statistical tests are adopted. As results, EEMD-QRF-MOO reached lower errors and better coefficient of determination in most of the cases. Indeed, the EEMD-QRF-MOO and EEMD-QRF squared errors are statistical equals, and lower than QRF squared errors. With these results it is conclude that using decomposition technique combined with machine learning models and optimization approach can be adopted to enhance the model performance, whose results may be used to perform accurate forecasting.
NoteHow to cite this work
Ribeiro, Matheus Henrique Dal Molin, Ramon Gomes da Silva, Naylene Fraccanabbia, Viviana Cocco Mariani, and Leandro Santos Coelho. 2019. “Forecasting Epidemiological Time Series Based on Decomposition and Optimization Approaches.” Anais Do 14. Congresso Brasileiro de Inteligência Computacional (Belém, Brazil), November, 1–8. https://doi.org/10.21528/cbic2019-18.
@inproceedings{Ribeiro2019forecasting,
address = {Belém, Brazil},
author = {Ribeiro, Matheus Henrique Dal Molin and da Silva, Ramon Gomes and Fraccanabbia, Naylene and Mariani, Viviana Cocco and Coelho, Leandro dos Santos},
booktitle = {14th Brazilian Computational Intelligence Meeting},
keywords = {Decomposition, ensemble, time series, meningitis, multi-objective optimization},
title = {Forecasting epidemiological time series based on decomposition and optimization approaches},
url = {http://abricom.org.br/eventos/cbic2019/cbic2019-18/},
doi = {10.21528/CBIC2019-18},
year = {2019}
}