Harnessing stakeholder input on Twitter: A case study of short breaks in Spanish tourist cities

Tourism Management - Tập 71 - Trang 490-503 - 2019
Enrique Bigné1, Enrique Oltra2, Luisa Andreu1
1University of Valencia, Facultat d’Economia, Department of Marketing, Av. Naranjos s/n, 46022, Valencia, Spain
2Instituto Serrallarga, c/ Joan Benejam, 1. Blanes, Gerona, Spain

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