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Combining Conventional Statistics and Big Data to Map Global Tourism Destinations Before COVID-19

Repozytorium Uniwersytetu Mikołaja Kopernika

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dc.contributor.author Adamiak, Czesław
dc.contributor.author Szyda, Barbara
dc.date.accessioned 2021-11-03T18:33:15Z
dc.date.available 2021-11-03T18:33:15Z
dc.date.issued 2021-10-27
dc.identifier.citation Journal of Travel Research, 2021, pp.1-24.
dc.identifier.other https://doi.org/10.1177/00472875211051418
dc.identifier.uri http://repozytorium.umk.pl/handle/item/6647
dc.description.abstract World Tourism Organization (UNWTO) is the major source of internationally comparable data on tourism. However, UNWTO data has two drawbacks: it focuses on international trips and ignores differences between regions within individual countries. Alternative sources of big data are increasingly used to enhance tourism statistics. In this paper, we combine traditional information sources with gridded population dataset and Airbnb data to address the limitations of UNWTO statistics. We produce a map of world tourism destinations measured by the number of tourism visits and tourism expenditure in 2019, before the COVID-19 pandemic. We then identify hot spots of tourism and compare the level of spatial concentration of tourism to that of global population and economy. The results illustrate how supply and demand shape the global distribution of tourism, highlight the dominance of domestic travels in global tourism mobility and may help planning tourism policy in the face of current global challenges.
dc.language.iso eng
dc.publisher SAGE
dc.subject international tourism
dc.subject domestic tourism
dc.subject geography
dc.subject big data
dc.subject dasymetric mapping
dc.subject Airbnb
dc.title Combining Conventional Statistics and Big Data to Map Global Tourism Destinations Before COVID-19
dc.type info:eu-repo/semantics/article


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