Regional tourism demand forecasting with machine learning models : Gaussian process regression vs. neural network models in a multiple-input multiple-output setting

Publication date

2017-01-25T12:54:46Z

2017-01-25T12:54:46Z

2017

2017-01-25T12:54:46Z

Abstract

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 Type

Working document

Language

English

Publisher

Universitat de Barcelona. Institut de Recerca en Economia Aplicada Regional i Pública

Related items

IREA – Working Papers, 2017, IR17/01

AQR – Working Papers, 2017, AQR17/01

[WP E-AQR17/01]

[WP E-IR17/01]

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Rights

cc-by-nc-nd, (c) Clavería González et al., 2017

http://creativecommons.org/licenses/by-nc-nd/3.0/