QT2S: A System for Monitoring Road Traffic via Fine Grounding of Tweets
Final version published in Proceedings of the 11th AAAI International Conference on Web and Social Media (ICWSM 2017), Montreal, CA, 2017, pp. 456--459 Social media platforms provide continuous access to user generated content that enables real-time monitoring of user behavior and of events. The geo...
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Zusammenfassung: | Final version published in Proceedings of the 11th AAAI
International Conference on Web and Social Media (ICWSM 2017), Montreal, CA,
2017, pp. 456--459 Social media platforms provide continuous access to user generated content
that enables real-time monitoring of user behavior and of events. The
geographical dimension of such user behavior and events has recently caught a
lot of attention in several domains: mobility, humanitarian, or
infrastructural. While resolving the location of a user can be straightforward,
depending on the affordances of their device and/or of the application they are
using, in most cases, locating a user demands a larger effort, such as
exploiting textual features. On Twitter for instance, only 2% of all tweets are
geo-referenced. In this paper, we present a system for zoomed-in grounding
(below city level) for short messages (e.g., tweets). The system combines
different natural language processing and machine learning techniques to
increase the number of geo-grounded tweets, which is essential to many
applications such as disaster response and real-time traffic monitoring. |
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DOI: | 10.48550/arxiv.1703.04280 |