A machine learning model for occupancy rates and demand forecasting in the hospitality industry
Occupancy rate forecasting is a very important step in the decision-making process of hotel planners and managers. Popular strategies as Revenue Management feature forecasting as a vital activity for dynamic pricing, and without accurate forecasting, errors in pricing will negatively impact hotel fi...
- Autores:
- Tipo de recurso:
- Fecha de publicación:
- 2016
- Institución:
- Universidad Tecnológica de Bolívar
- Repositorio:
- Repositorio Institucional UTB
- Idioma:
- eng
- OAI Identifier:
- oai:repositorio.utb.edu.co:20.500.12585/8994
- Acceso en línea:
- https://hdl.handle.net/20.500.12585/8994
- Palabra clave:
- Forecasting
Hotel occupancy. Demand
Kernel Ridge Regression
Machine learning
Neural Networks
Ridge regression
Artificial intelligence
Costs
Decision making
Economics
Hotels
Learning systems
Neural networks
Regression analysis
Decision making process
Financial performance
Kernel ridge regressions
Machine learning models
Machine learning techniques
Mean absolute percentage error
Ridge regression
Specialized software
Forecasting
- Rights
- restrictedAccess
- License
- http://creativecommons.org/licenses/by-nc-nd/4.0/
Summary: | Occupancy rate forecasting is a very important step in the decision-making process of hotel planners and managers. Popular strategies as Revenue Management feature forecasting as a vital activity for dynamic pricing, and without accurate forecasting, errors in pricing will negatively impact hotel financial performance. However, having accurate enough forecasts is no simple task for a wealth of reasons, as the inherent variability of the market, lack of personnel with statistical skills, and the high cost of specialized software. In this paper, several machine learning techniques were surveyed in order to construct models to forecast daily occupancy rates for a hotel, given historical records of bookings and occupation. Several approaches related to dataset construction and model validation are discussed. The results obtained in terms of the Mean Absolute Percentage Error (MAPE) are promising, and support the use of machine learning models as a tool to help solve the problem of occupancy rates and demand forecasting. © Springer International Publishing AG 2016. |
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