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Machine learning and points of interest: typical tourist Italian cities

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  • Simona Giglio
  • Francesca Bertacchini
  • Eleonora Bilotta
  • Pietro Pantano

Abstract

Today georeferenced images posted on the social network provide a lot of information about people behaviours and movements. Using social media platforms users upload photos, share locations and post comments about their activities, influencing other people. In this research, we examine the relationship between human mobility and touristic attractions through geo-located images provided by Flickr users. A sample of 26,392 pictures related to 6 Italian cities has been collected and analysed applying cluster analysis. In our work, the function of the clustering analysis, employed in Wolfram Mathematica Machine Learning, allows one to automatically identify clusters surrounding points of interest (POIs). Findings show that social media datasets are valuable data to understand tourist behaviour and mobility within a location. The scope is to delineate famous or unpopular places and propose new touristic scenarios, highlighting how the social part covers the main role in the POIs’ recommendation process in the touristic field. Furthermore, we aim to promote the machine learning approach as a useful support in human behaviour research.

Suggested Citation

  • Simona Giglio & Francesca Bertacchini & Eleonora Bilotta & Pietro Pantano, 2020. "Machine learning and points of interest: typical tourist Italian cities," Current Issues in Tourism, Taylor & Francis Journals, vol. 23(13), pages 1646-1658, July.
  • Handle: RePEc:taf:rcitxx:v:23:y:2020:i:13:p:1646-1658
    DOI: 10.1080/13683500.2019.1637827
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