Publicações de Turismo
Nova busca:        


Machine Learning applications in tourism - case study from Colombia and its post-conict areas
 
     
     Machine Learning applications in tourism - case study from Colombia and its post-conict areas
     Aplicaciones del Machine Learning en el turismo – estudio en Colombia y sus zonas de posconflicto


Autor(es):
Muñoz, Daniel Mauricio Goméz
Bernal, Juan Diego Casallas
Molano, José Ignacio Rodríguez


Periódico: Revista Turismo & Desenvolvimento

Fonte: Journal of Tourism & Development; Vol 40 (2023); 93-102

Palavras-chave:


Resumo: Tourism sector is one of the most important in countries' economy, and the use of artificial intelligence is a key to enhance its development. Colombia has great tourist attractions, however, it was framed by conflict situations that prevent about exploiting its potential in areas that after the signing of the peace accords have found growth. In this study, Machine Learning algorithms will be used to make predictions about tourism in the most affected departments or states by the conflict (Antioquia, Caquetá, Santander and Magdalena), based on the results of internal spending's survey on tourism, carried out in 2020 by the National Department of Statistics. A multiple linear regression model was applied to predict the total expenditure of a tourist on a trip, as well as, four algorithms that allowed predicting if a traveler is going to stay overnight on his next trip, which permitted to determine for the case study the random forests' algorithm has the greatest precision to define strategies that respond to the needs of tourists.