Multi-layered market forecast framework for hotel revenue management by continuously learning market dynamics
Year of publication: |
2021
|
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Authors: | Das, Rimo ; Chadha, Harshinder ; Banerjee, Somnath |
Published in: |
Journal of revenue and pricing management. - Cham : Springer Nature Switzerland AG, ISSN 1477-657X, ZDB-ID 2109274-6. - Vol. 20.2021, 3, p. 351-367
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Subject: | Revenue management | Forecast | Unconstrained demand | Constrained demand | Market | Machine learning | Revenue-Management | Prognoseverfahren | Forecasting model | Hotellerie | Hotel industry | Künstliche Intelligenz | Artificial intelligence | Nachfrage | Demand | Theorie | Theory | Prognose |
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