Forecasting Resort Hotel Tourism Demand Using Deep Learning Techniques – A Systematic Literature Review
In the hospitality industry, revenue management is vital for the sustainability of the business. Powering this strategic concept is the occupancy rate (OR) forecast. Predicting occupancy of the hotel is essential for managers’ decision-making process as it gives an estimate of the future business performance. However, the fast-changing marketing demands in the tourism sector, boosted by the advent of online booking, generating accurate forecast figures is nowadays a tough task - needing personnel with advance technical skills and expensive software. This study aims to chart this field by performing a Systematic Literature Review (SLR) to give insight into the Deep Learning for OR prediction. The purpose is to highlight the trends of latest research in this field over five years (from 2017-2022). Through this SRL, three research questions are answered. The questions are related to the variables, deep learning algorithms for prediction and the evaluation metrics used for evaluating the models developed. The Snowballing methodology was used to carry out the SLR. 50 papers were selected for the final analysis. Five categories of variables were identified. LSTM was found to be the most popular deep learning algorithm used to build prediction models. Seven performance metrics were found and among them MAPE was the most popular. To conclude it was found that the hybrid model, CNN-LSTM, to increase accuracy and required more investigation
Year of publication: |
2023
|
---|---|
Authors: | Dowlut, Noomesh ; Gobin, Baby |
Publisher: |
[S.l.] : SSRN |
Subject: | Hotellerie | Hotel industry | Bibliometrie | Bibliometrics | Tourismus | Tourism | Prognoseverfahren | Forecasting model | Nachfrage | Demand |
Saved in:
Saved in favorites
Similar items by subject
-
Hotel demand forecasting : a comprehensive literature review
Huang, Liyao, (2023)
-
A new approach to modelling and forecasting monthly guest nights in hotels
Brännäs, Kurt, (1999)
-
Forecasting hotel room demand amid COVID-19
Zhang, Hanyuan, (2022)
- More ...