info:eu-repo/semantics/article
Time Series Decomposition using Automatic Learning Techniques for Predictive Models
Fecha
2020-01-07Registro en:
17426588
10.1088/1742-6596/1432/1/012096
17426596
Journal of Physics: Conference Series
2-s2.0-85079090943
SCOPUS_ID:85079090943
0000 0001 2196 144X
Autor
Silva, Jesús
Hernández Palma, Hugo
Niebles Núẽz, William
Ovallos-Gazabon, David
Varela, Noel
Institución
Resumen
This paper proposes an innovative way to address real cases of production prediction. This approach consists in the decomposition of original time series into time sub-series according to a group of factors in order to generate a predictive model from the partial predictive models of the sub-series. The adjustment of the models is carried out by means of a set of statistic techniques and Automatic Learning. This method was compared to an intuitive method consisting of a direct prediction of time series. The results show that this approach achieves better predictive performance than the direct way, so applying a decomposition method is more appropriate for this problem than non-decomposition.
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