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Title: Forecasting tourism demand using search query data : a hybrid modelling approach
Authors: Wen, L
Liu, C
Song, H 
Issue Date: May-2019
Source: Tourism economics, May 2019, v. 25, no. 3, p. 309-329
Abstract: Search query data have recently been used to forecast tourism demand. Linear models, particularly autoregressive integrated moving average with exogenous variable models, are often used to assess the predictive power of search query data. However, they are limited by their inability to model non-linearity due to their pre-assumed linear forms. Artificial neural network models could be used to model non-linearity, but mixed results indicate that their application is not appropriate in all situations. Therefore, this study proposes a new hybrid model that combines the linear and non-linear features of component models. The model outperforms other models when forecasting tourist arrivals in Hong Kong from mainland China, thus demonstrating the advantage of adopting hybrid models in forecasting tourism demand with search query data.
Keywords: Artificial neural network
Hybrid specification
Non-linear model
Search query data
Tourism forecasting
Publisher: SAGE Publications
Journal: Tourism economics 
ISSN: 1354-8166
EISSN: 2044-0375
DOI: 10.1177/1354816618768317
Rights: This is the accepted version of the publication "Wen, L., Liu, C., & Song, H. (2019). Forecasting tourism demand using search query data: A hybrid modelling approach. Tourism Economics, 25(3), 309-329. Copyright © 2018 (The Author(s)). DOI: 10.1177/1354816618768317.”
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