Status已發表Published
Tourism demand forecasting: A deep learning approach
Law, R.; Li, G.; Fong, K. C.; Han, X.
2019-01-29
Source PublicationAnnals of Tourism Research
ISSN0160-7383
Pages410-423
AbstractTraditional tourism demand forecasting models may face challenges when massive amounts of search intensity indices are adopted as tourism demand indicators. Using a deep learning approach, this research studied the framework in forecasting monthly Macau tourist arrival volumes. The empirical results demonstrated that the deep learning approach significantly outperforms support vector regression and artificial neural network models. Moreover, the construction and identification of highly relevant features from the proposed deep network architecture provide practitioners with a means of understanding the relationships between various tourist demand forecasting factors and tourist arrival volumes.
KeywordTourism demand forecasting Deep learning Long-short-term-memory Attention mechanism Feature engineering Lag order
URLView the original
Language英語English
The Source to ArticlePB_Publication
PUB ID45093
Document TypeJournal article
CollectionDEPARTMENT OF INTEGRATED RESORT AND TOURISM MANAGEMENT
Corresponding AuthorLaw, R.
Recommended Citation
GB/T 7714
Law, R.,Li, G.,Fong, K. C.,et al. Tourism demand forecasting: A deep learning approach[J]. Annals of Tourism Research, 2019, 410-423.
APA Law, R.., Li, G.., Fong, K. C.., & Han, X. (2019). Tourism demand forecasting: A deep learning approach. Annals of Tourism Research, 410-423.
MLA Law, R.,et al."Tourism demand forecasting: A deep learning approach".Annals of Tourism Research (2019):410-423.
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