Booking cancellations have a substantial impact in demand-management decisions in the hospitality industry. Cancellations limit the production of accurate forecasts, a critical tool in terms of revenue management performance. To circumvent the problems caused by booking cancellations, hotels implement rigid cancellation policies and overbooking strategies, which can also have a negative influence on revenue and reputation.Using data sets from four resort hotels and addressing booking cancellation prediction as a classification problem in the scope of data science, authors demonstrate that it is possible to build models for predicting booking cancellations with accuracy results in excess of 90%. This demonstrates that despite what was assum...
Purpose: The purpose of this study is to provide new insights into the factors that influence cancel...
Using five years of data collected from a small and independent hotel in The Netherlands this case s...
This data article describes two datasets with hotel demand data. One of the hotels (H1) is a resort ...
Booking cancellation prediction becomes more significant than before, which impacts decision making...
Booking cancellations have a substantial impact in demand-management decisions in the hospitality in...
Cancellation of bookings puts considerable pressure on management decisions, in this case from the h...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Revenue management (RM) enhances the revenues of a company by means of demand-management decisions. ...
Booking cancellations have significant impact on demand-management decisions in the hospitality indu...
In reservation-based industries, accurate booking cancellation forecast is of foremost importance to...
Revenue management (RM) enhances the revenues of a company by means of demand-management decisions. ...
The cancelation of bookings puts a considerable strain on management decisions in the case of the ho...
Thesis: S.M. in Transportation, Massachusetts Institute of Technology, Department of Civil and Envir...
Amadeus IT Group provide revenue management systems for the airline industry. The concept of overboo...
Using five years of data collected from a small and independent hotel this case study explores RMS d...
Purpose: The purpose of this study is to provide new insights into the factors that influence cancel...
Using five years of data collected from a small and independent hotel in The Netherlands this case s...
This data article describes two datasets with hotel demand data. One of the hotels (H1) is a resort ...
Booking cancellation prediction becomes more significant than before, which impacts decision making...
Booking cancellations have a substantial impact in demand-management decisions in the hospitality in...
Cancellation of bookings puts considerable pressure on management decisions, in this case from the h...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Revenue management (RM) enhances the revenues of a company by means of demand-management decisions. ...
Booking cancellations have significant impact on demand-management decisions in the hospitality indu...
In reservation-based industries, accurate booking cancellation forecast is of foremost importance to...
Revenue management (RM) enhances the revenues of a company by means of demand-management decisions. ...
The cancelation of bookings puts a considerable strain on management decisions in the case of the ho...
Thesis: S.M. in Transportation, Massachusetts Institute of Technology, Department of Civil and Envir...
Amadeus IT Group provide revenue management systems for the airline industry. The concept of overboo...
Using five years of data collected from a small and independent hotel this case study explores RMS d...
Purpose: The purpose of this study is to provide new insights into the factors that influence cancel...
Using five years of data collected from a small and independent hotel in The Netherlands this case s...
This data article describes two datasets with hotel demand data. One of the hotels (H1) is a resort ...