Web of Science: Predicting tourism competitiveness with innovation: a machine learning approach
Program
KU Authors
KU-Authors
Co-Authors
Authors
Advisor
Date
Language
Type
Journal Title
Journal ISSN
Volume Title
Abstract
This study introduces an analytical model that establishes a connection between the factors that promote innovation in a country and the competitiveness of its tourism destinations. Invoking the international strategic competitiveness theory, this study is among the first to propose and empirically test the predictive roles of innovation facilitators on tourism competitiveness. Utilising longitudinal data from multiple countries from 2013 to 2022, we ran machine learning algorithms. The results show that several innovation facilitators, such as research and development and trade, diversification, and market scale, significantly predict competitiveness in tourism destinations. The results of this investigation enhance our knowledge of innovation and competitiveness in tourism locations globally.
