Comptes Rendus
Statistics/Theory of signals
An improved SSA forecasting result based on a filtered recurrent forecasting algorithm
[Un algorithme de prévision SSA amélioré, reposant sur des séries filtrées]
Comptes Rendus. Mathématique, Volume 355 (2017) no. 9, pp. 1026-1036.

La technique d'analyse du spectre singulier (SSA) est une méthode puissante et non paramétrique dans le domaine de l'analyse des séries temporelles. Elle connaît depuis ces dernières années une popularité croissante en raison de son large éventail d'applications. La prévision récurrente est l'une des plus importantes méthodes de prévision en SSA. Dans ce texte, nous améliorons la précision de ces prévisions récurrentes en introduisant un nouvel algorithme. Dans notre approche, les coefficients récurrents sont engendrés à partir d'une série filtrée qui a un bruit moindre, ce qui permet d'obtenir de meilleures prévisions. Nous comparons cette nouvelle méthode avec celle établie, en la testant sur des applications à diverses séries temporelles, réelles ou simulées. Les résultats confirment que la nouvelle méthode produit des prévisions plus précises.

The Singular Spectrum Analysis (SSA) technique is a non-parametric powerful method in the field of time series analysis whose popularity has increased in recent years owing to its widespread applications. Recurrent forecasting is one of the important forecasting methods in SSA. In this paper, the forecasting accuracy of recurrent forecasts is improved via the introduction of a new recurrent forecasting algorithm. In the novel approach, the recurrent coefficients are generated from the filtered series which has less noise and thus enables one to achieve the better forecasts. The performance of the new method has been compared with the established recurrent forecasting method. The comparison involves applications to various real and simulated time series. The obtained results confirm that the new approach can provide more accurate forecasts.

Reçu le :
Accepté le :
Publié le :
DOI : 10.1016/j.crma.2017.09.004
Hossein Hassani 1 ; Mahdi Kalantari 2 ; Masoud Yarmohammadi 2

1 Research Institute of Energy Management and Planning, University of Tehran, No. 13, Ghods St., Enghelab Ave., Tehran, Iran
2 Department of Statistics, Payame Noor University, 19395-4697, Tehran, Iran
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     author = {Hossein Hassani and Mahdi Kalantari and Masoud Yarmohammadi},
     title = {An improved {SSA} forecasting result based on a filtered recurrent forecasting algorithm},
     journal = {Comptes Rendus. Math\'ematique},
     pages = {1026--1036},
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     volume = {355},
     number = {9},
     year = {2017},
     doi = {10.1016/j.crma.2017.09.004},
     language = {en},
}
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Hossein Hassani; Mahdi Kalantari; Masoud Yarmohammadi. An improved SSA forecasting result based on a filtered recurrent forecasting algorithm. Comptes Rendus. Mathématique, Volume 355 (2017) no. 9, pp. 1026-1036. doi : 10.1016/j.crma.2017.09.004. https://comptes-rendus.academie-sciences.fr/mathematique/articles/10.1016/j.crma.2017.09.004/

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