File(s) not publicly available
A network-based ranking approach to discover places visited by tourists from geo-located tweets
conference contribution
posted on 2023-07-26, 14:52 authored by Nicola Cortesi, Kevin Gotti, Giuseppe Psaila, Federica Burini, Khin T. Lwin, Mohammed Alamgir HossainThis work analyses the existing connections between public spaces in the city, by developing a new ranking method based on the information related to citizens' movement in the urban space using social media. We propose a NodeRank algorithm, a modified version of the Page-Rank algorithm, which introduces a new reticular perspective as it considers both incoming links in a page, and outgoing links too. The proposed algorithm has been tested with a dataset of geolocated Tweets collected in previous research. Results indicate that the proposed Node-Rank Algorithm offers an excellent performance in identifying the places of greatest interest from the point of view of Twitter users and it is useful to reconstruct the network between public spaces in the city.
History
Page range
1-8ISSN
2573-3214External DOI
Publisher
IEEEPlace of publication
OnlineISBN
978-1-5386-4602-1Conference proceeding
2017 11th International Conference on Software, Knowledge, Information Management and Applications (SKIMA)Name of event
2017 11th International Conference on Software, Knowledge, Information Management and Applications (SKIMA)Location
Malabe, Sri LankaEvent start date
2017-12-06Event finish date
2017-12-08Language
- other