Please use this identifier to cite or link to this item: http://hdl.handle.net/10773/32873
Title: Dynamic structural models with covariates for short-term forecasting of time series with complex seasonal patterns
Author: Puindi, António Casimiro
Silva, Maria Eduarda
Keywords: Bootstrap
Kalman filter
Prediction intervals
Structural time series models
Seasonal time series
Issue Date: 2021
Publisher: Taylor & Francis
Abstract: This work presents a framework of dynamic structural models with covariates for short-term forecasting of time series with complex seasonal patterns. The framework is based on the multiple sources of randomness formulation. A noise model is formulated to allow the incorporation of randomness into the seasonal component and to propagate this same randomness in the coefficients of the variant trigonometric terms over time. A unique, recursive and systematic computational procedure based on the maximum likelihood estimation under the hypothesis of Gaussian errors is introduced. The referred procedure combines the Kalman filter with recursive adjustment of the covariance matrices and the selection method of harmonics number in the trigonometric terms. A key feature of this method is that it allows estimating not only the states of the system but also allows obtaining the standard errors of the estimated parameters and the prediction intervals. In addition, this work also presents a non-parametric bootstrap approach to improve the forecasting method based on Kalman filter recursions. The proposed framework is empirically explored with two real time series.
Peer review: yes
URI: http://hdl.handle.net/10773/32873
DOI: 10.1080/02664763.2020.1748178
ISSN: 0266-4763
Appears in Collections:CIDMA - Artigos
PSG - Artigos

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