Tourism demand forecasting : a decomposed deep learning approach
Year of publication: |
2021
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Authors: | Zhang, Yishuo ; Li, Gang ; Muskat, Birgit ; Law, Rob |
Published in: |
Journal of travel research : a quarterly publication of the Travel and Tourism Research Association. - Thousand Oaks, Calif. [u.a.] : Sage, ISSN 1552-6763, ZDB-ID 2036634-6. - Vol. 60.2021, 5, p. 981-997
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Subject: | AI-based forecasting | decomposing method | deep learning | overfitting | tourism demand forecasting | tourism planning | Tourismus | Tourism | Prognoseverfahren | Forecasting model | Nachfrage | Demand | Tourismuspolitik | Tourism policy | Künstliche Intelligenz | Artificial intelligence | Tourismuswirtschaft | Tourism industry |
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