The accuracy of hotel demand forecasting is affected by factors such as the completeness of historical data and the maturity of models. Most of the existing methods are based on rich data, without considering that single hotels may only obtain sparse data. Therefore, a K-means group division and Long Short-Term Memory (LSTM) based method is proposed in this paper. Guest types are introduced into the forecasting to provide reference for hotel\u27s further decision-making. Using an example of 1493 hotels in Europe, we divide hotel groups and forecast the flow of leisure and business guests. The experimental results show that, compared with the benchmark models, LSTM can improve the forecasting performance of hotel group; compared with single ...
Kumru, Mesut (Dogus Author) -- Conference full title: Joint International Symposium on "The Social I...
Demand forecasts are the most important piece of information used to make revenue management decisio...
Using five years of data collected from a small and independent hotel this case study explores RMS d...
The accuracy of hotel demand forecasting is affected by factors such as the completeness of historic...
The aim of this thesis is to evaluate the effectiveness of six selected low computational cost hotel...
Accurate demand forecasting is integral for data-driven revenue management decisions of hotels, but ...
In many tourism destinations, sustainability of the local economy leans on small and medium-sized ho...
The hospitality industry is growing at a faster pace across the world which has resulted in the accu...
Tourism demand forecasting comprises an important task within the overall tourism demand management ...
Hospitality industry plays a crucial role in the development of tourism. Predicting the future deman...
Forecasting accuracy determines the effectiveness of revenue optimization. Although researchers have...
Forecasting accuracy determines the effectiveness of revenue optimization. Although researchers have...
A critical aspect of revenue management is a firm's ability to predict future demand. Historically ...
Time series forecasting aims to model the change in data points over time. It is applicable in many ...
Using five years of data collected from a small and independent hotel in The Netherlands this case s...
Kumru, Mesut (Dogus Author) -- Conference full title: Joint International Symposium on "The Social I...
Demand forecasts are the most important piece of information used to make revenue management decisio...
Using five years of data collected from a small and independent hotel this case study explores RMS d...
The accuracy of hotel demand forecasting is affected by factors such as the completeness of historic...
The aim of this thesis is to evaluate the effectiveness of six selected low computational cost hotel...
Accurate demand forecasting is integral for data-driven revenue management decisions of hotels, but ...
In many tourism destinations, sustainability of the local economy leans on small and medium-sized ho...
The hospitality industry is growing at a faster pace across the world which has resulted in the accu...
Tourism demand forecasting comprises an important task within the overall tourism demand management ...
Hospitality industry plays a crucial role in the development of tourism. Predicting the future deman...
Forecasting accuracy determines the effectiveness of revenue optimization. Although researchers have...
Forecasting accuracy determines the effectiveness of revenue optimization. Although researchers have...
A critical aspect of revenue management is a firm's ability to predict future demand. Historically ...
Time series forecasting aims to model the change in data points over time. It is applicable in many ...
Using five years of data collected from a small and independent hotel in The Netherlands this case s...
Kumru, Mesut (Dogus Author) -- Conference full title: Joint International Symposium on "The Social I...
Demand forecasts are the most important piece of information used to make revenue management decisio...
Using five years of data collected from a small and independent hotel this case study explores RMS d...