The hospitality industry is growing at a faster pace across the world which has resulted in the accumulation of a huge amount of data in terms of employee details, property details, purchase details, vendor details, and so on. The industry is yet to fully benefit from these big data by applying ML and AI. The data has not been fully investigated for decision-making or revenue/budget forecasting. In this research data is collected from a chain hotel for advanced predictive analytics. Descriptive and diagnostic analytics is done to an extent across the hotel industry, whereas predictive and prescriptive analysis is done rarely. Demand forecasting for spend and quantity is done using the LSTM technique in e-procurement within the hospitality i...
Customer preferences analysis and modelling using deep learning in edge computing environment are cr...
The aim of this paper is to show to what extent Artificial Intelligence can be used to optimize fore...
Demand forecasting is one of the main issues of supply chains. It aimed to optimize stocks, reduce c...
Tourism demand forecasting comprises an important task within the overall tourism demand management ...
Time series forecasting aims to model the change in data points over time. It is applicable in many ...
The accuracy of hotel demand forecasting is affected by factors such as the completeness of historic...
Demand forecasting for business practice is one of the biggest challenges of current business resear...
Hospitality industry plays a crucial role in the development of tourism. Predicting the future deman...
Demand Forecasting is undoubtedly the most crucial step for any organizations dealing with Supply Ch...
A critical aspect of revenue management is a firm's ability to predict future demand. Historically ...
Accurate demand forecasting is integral for data-driven revenue management decisions of hotels, but ...
Future predictions have various applications, including stock prices, house market prices, and compa...
The need for accurate tourism demand forecasting is widely recognized. The unreliability of traditio...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
International audienceSupply chains are complex, stochastic systems. Nowadays, logistics managers fa...
Customer preferences analysis and modelling using deep learning in edge computing environment are cr...
The aim of this paper is to show to what extent Artificial Intelligence can be used to optimize fore...
Demand forecasting is one of the main issues of supply chains. It aimed to optimize stocks, reduce c...
Tourism demand forecasting comprises an important task within the overall tourism demand management ...
Time series forecasting aims to model the change in data points over time. It is applicable in many ...
The accuracy of hotel demand forecasting is affected by factors such as the completeness of historic...
Demand forecasting for business practice is one of the biggest challenges of current business resear...
Hospitality industry plays a crucial role in the development of tourism. Predicting the future deman...
Demand Forecasting is undoubtedly the most crucial step for any organizations dealing with Supply Ch...
A critical aspect of revenue management is a firm's ability to predict future demand. Historically ...
Accurate demand forecasting is integral for data-driven revenue management decisions of hotels, but ...
Future predictions have various applications, including stock prices, house market prices, and compa...
The need for accurate tourism demand forecasting is widely recognized. The unreliability of traditio...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
International audienceSupply chains are complex, stochastic systems. Nowadays, logistics managers fa...
Customer preferences analysis and modelling using deep learning in edge computing environment are cr...
The aim of this paper is to show to what extent Artificial Intelligence can be used to optimize fore...
Demand forecasting is one of the main issues of supply chains. It aimed to optimize stocks, reduce c...