Geovisualization; Activity recommandation; Location based social networs
Abstract :
[en] Activity recommendation systems aims at providing relevant information depending on targeted users' groups. For instance in a city, it makes sense to differentiate local residents from tourists. This research investigates to what extent the anonymized data collected from social networks can be used as a basis for making activity recommendations associated with local residents versus tourists when visiting a public place, such as a museum or gallery. Using rules based on the spatial, temporal and semantics of visited places, we are able to infer if a user is likely to be local or a tourist, based on anonymous sample Foursquare data and place-based semantics retrieved using Google Places API. Using semantics of visited places, it becomes possible to infer additional information about a user based on their movements over space and time. Depending on the kind and frequency of visited places, inferences about the aim of a visit to a location are possible. This analysis could provide information to users in the form of recommendations based on their movements while travelling around an area. This study has been performed using Foursquare check-ins for visitors to the Art Institute of Chicago between March 2010 and January 2011.
scite shows how a scientific paper has been cited by providing the context of the citation, a classification describing whether it supports, mentions, or contrasts the cited claim, and a label indicating in which section the citation was made.
Bibliography
BUCHIN, K., et al. 2011. Detecting commuting patterns by clustering subtrajectories. International Journal of Computational Geometry & Applications, 21(03), 253-282.
BUCHIN, M., DODGE, S. and SPECKMANN, B., 2012. Context-Aware Similarity of Trajectories. In: XIAO, N., et al. eds. Geographic Information Science. Springer Berlin Heidelberg, 43-56
CHEN, J., et al. 2011. Exploratory data analysis of activity diary data: a space-time GIS approach. Journal of Transport Geography, 19(3), 394-404.
DAMIANI, M. L. and CUIJPERS, C., 2012 Privacy-aware geolocation interfaces for volunteered geography: a case study. ed. Proceedings of the 1st ACM SIGSPATIAL International Workshop on Crowdsourced and Volunteered Geographic Information, 83-90.
FLORIAN, B., et al, 2011. Activity-Based Learner-Models for Learner Monitoring and Recommendations in Moodle. In: KLOOS, C., et al. eds. Towards Ubiquitous Learning. Springer Berlin Heidelberg, 111-124.
LIU, J.-S. and LU, W.-H., Location and Activity Recommendation by Using Consecutive Itinerary Matching Model. ed. ROCLING 2013 Kaohsiung, Taiwan.
NOULAS, A., et al. 2011. An Empirical Study of Geographic User Activity Patterns in Foursquare. ICWSM, 11, 70-573.
PONTES, T., et al, 2012. We know where you live: privacy characterization of foursquare behavior. Proceedings of the 2012 ACM Conference on Ubiquitous Computing. Pittsburgh, Pennsylvania: ACM, 898-905.
SILVA, T. H., et al. 2014. You are What you Eat (and Drink): Identifying Cultural Boundaries by Analyzing Food & Drink Habits in Foursquare. arXiv:1404.1009.
WANG, C.-Y., WU, Y.-H. AND CHOU, S.-C. 2010. Toward a ubiquitous personalized daily-life activity recommendation service with contextual information: a services science perspective. Information Systems and e-Business Management, 8(1), 13-32.
YE, M., et al, On the semantic annotation of places in location-based social networks. ed. Proceedings of the 17th ACM SIGKDD
ZHENG, V. W., et al, 2010. Collaborative location and activity recommendations with GPS history data. Proceedings of the 19th international conference on World wide web. Raleigh, North Carolina, USA: ACM, 1029-1038
This website uses cookies to improve user experience. Read more
Save & Close
Accept all
Decline all
Show detailsHide details
Cookie declaration
About cookies
Strictly necessary
Performance
Strictly necessary cookies allow core website functionality such as user login and account management. The website cannot be used properly without strictly necessary cookies.
This cookie is used by Cookie-Script.com service to remember visitor cookie consent preferences. It is necessary for Cookie-Script.com cookie banner to work properly.
Performance cookies are used to see how visitors use the website, eg. analytics cookies. Those cookies cannot be used to directly identify a certain visitor.
Used to store the attribution information, the referrer initially used to visit the website
Cookies are small text files that are placed on your computer by websites that you visit. Websites use cookies to help users navigate efficiently and perform certain functions. Cookies that are required for the website to operate properly are allowed to be set without your permission. All other cookies need to be approved before they can be set in the browser.
You can change your consent to cookie usage at any time on our Privacy Policy page.