Increasing levels of global and regional integration have led to tourist flows between countries becoming closely linked. These links should be considered when modeling and forecasting international tourism demand within a region. This study introduces a comprehensive and accurate systematic approach to tourism demand analysis, based on a Bayesian global vector autoregressive (BGVAR) model. An empirical study of international tourist flows in nine countries in Southeast Asia demonstrates the ability of the BGVAR model to capture the spillover effects of international tourism demand in this region. The study provides clear evidence that the BGVAR model consistently outperforms three other alternative VAR model versions throughout one- to fou...
China has experienced a massive growth in international tourism over the past two decades. To date, ...
This study makes use of specific econometric modelling methodologies to forecast US outbound travell...
Various forecast models can be adopted for predicting what types of tourism demand are vulnerable to...
Increasing levels of global and regional integration have led to tourist flows between countries bec...
Increasing levels of global and regional integration have led to tourist flows between countries be...
Tourism demand is one of the major areas of tourism economics research. The current research studies...
This study develops a global vector autoregressive (global VAR or GVAR) model to quantify the cross-...
Author name used in this publication: Kevin K. F. WongAuthor name used in this publication: Kaye S. ...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
"The tourism sector has been recognised as a global driving force for economic growth given its rapi...
With the growth of the world's tourism industry, researchers took advantage to conduct numerous stud...
Forecasting tourism demand is crucial for management decisions in the tourism sector. Estimating a v...
China has experienced a massive growth in international tourism over the past two decades. To date, ...
This study makes use of specific econometric modelling methodologies to forecast US outbound travell...
Various forecast models can be adopted for predicting what types of tourism demand are vulnerable to...
Increasing levels of global and regional integration have led to tourist flows between countries bec...
Increasing levels of global and regional integration have led to tourist flows between countries be...
Tourism demand is one of the major areas of tourism economics research. The current research studies...
This study develops a global vector autoregressive (global VAR or GVAR) model to quantify the cross-...
Author name used in this publication: Kevin K. F. WongAuthor name used in this publication: Kaye S. ...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
This paper develops a novel Bayesian heterogeneous panel vector autoregressive model (B-HP-VAR) that...
"The tourism sector has been recognised as a global driving force for economic growth given its rapi...
With the growth of the world's tourism industry, researchers took advantage to conduct numerous stud...
Forecasting tourism demand is crucial for management decisions in the tourism sector. Estimating a v...
China has experienced a massive growth in international tourism over the past two decades. To date, ...
This study makes use of specific econometric modelling methodologies to forecast US outbound travell...
Various forecast models can be adopted for predicting what types of tourism demand are vulnerable to...