The aim of this work is to utilise an artificial neural network (ANN) to model Australia"s domestic air travel demand. This modelling will then facilitate forecasting future passenger demand. Forecasting passenger demand is a critical issue in the air transport industry and is generally viewed as the most crucial function of airline management This is the first time an ANN has been applied to domestic air travel in Australia, with ANN approaches having limited use in the industry. Two ANN models to forecast Australia's domestic airline passenger demand (PAX model) and revenue passenger kilometres performed (RPKs model) were constructed. Quarterly data from 1992 to 2014 was used. Australia's real interest rates and tourism att...
As it being seen in every sector, demand forecasting in tourism is been conducted with various quali...
This study has proposed and empirically tested two Adaptive Neuro-Fuzzy Inference System (ANFIS) mod...
This study seeks to investigate and highlight the usefulness of the Artificial Neural Networks (ANN)...
This study focuses on predicting Australia's low cost carrier passenger demand and revenue pass...
One of the most pervasive trends in the global airline industry over the past few three decades has ...
The global tourism industry has witnessed a significant growth in the past few decades. Many researc...
Forecasting plays a major role in tourism planning. The promotion of tourism projects involving subs...
The aim of this research is to quantify the tourism demand using an Artificial Neural Network (ANN)...
This study has proposed and empirically tested two Adaptive Neuro-Fuzzy Inference System (ANFIS) mod...
This study has proposed and empirically tested for the first time two adaptive neuro-fuzzy inference...
This work involves forecasting the number of domestic and international airline passengers in Saudi ...
This study seeks to investigate and highlight the usefulness of the Artificial Neural Networks (ANN)...
The modulation of tourism time series was used in this work for forecast purposes. The Tourism Reve...
Travel agencies should be able to judge the market demand for tourism to develop sales plans accordi...
As one of the important areas in tourism research, tourism demand modeling and forecasting have been...
As it being seen in every sector, demand forecasting in tourism is been conducted with various quali...
This study has proposed and empirically tested two Adaptive Neuro-Fuzzy Inference System (ANFIS) mod...
This study seeks to investigate and highlight the usefulness of the Artificial Neural Networks (ANN)...
This study focuses on predicting Australia's low cost carrier passenger demand and revenue pass...
One of the most pervasive trends in the global airline industry over the past few three decades has ...
The global tourism industry has witnessed a significant growth in the past few decades. Many researc...
Forecasting plays a major role in tourism planning. The promotion of tourism projects involving subs...
The aim of this research is to quantify the tourism demand using an Artificial Neural Network (ANN)...
This study has proposed and empirically tested two Adaptive Neuro-Fuzzy Inference System (ANFIS) mod...
This study has proposed and empirically tested for the first time two adaptive neuro-fuzzy inference...
This work involves forecasting the number of domestic and international airline passengers in Saudi ...
This study seeks to investigate and highlight the usefulness of the Artificial Neural Networks (ANN)...
The modulation of tourism time series was used in this work for forecast purposes. The Tourism Reve...
Travel agencies should be able to judge the market demand for tourism to develop sales plans accordi...
As one of the important areas in tourism research, tourism demand modeling and forecasting have been...
As it being seen in every sector, demand forecasting in tourism is been conducted with various quali...
This study has proposed and empirically tested two Adaptive Neuro-Fuzzy Inference System (ANFIS) mod...
This study seeks to investigate and highlight the usefulness of the Artificial Neural Networks (ANN)...