2017-01-25T12:54:46Z
2017-01-25T12:54:46Z
2017
2017-01-25T12:54:46Z
This study presents a multiple-input multiple-output (MIMO) approach for multi-step-ahead time series prediction with a Gaussian process regression (GPR) model. We assess the forecasting performance of the GPR model with respect to several neural network architectures. The MIMO setting allows modelling the cross-correlations between all regions simultaneously. We find that the radial basis function (RBF) network outperforms the GPR model, especially for long-term forecast horizons. As the memory of the models increases, the forecasting performance of the GPR improves, suggesting the convenience of designing a model selection criteria in order to estimate the optimal number of lags used for concatenation
Document de treball
Anglès
Universitat de Barcelona. Institut de Recerca en Economia Aplicada Regional i Pública
IREA – Working Papers, 2017, IR17/01
AQR – Working Papers, 2017, AQR17/01
[WP E-AQR17/01]
[WP E-IR17/01]
cc-by-nc-nd, (c) Clavería González et al., 2017
http://creativecommons.org/licenses/by-nc-nd/3.0/