Sciweavers

ATAL
2015
Springer

Detecting Events and Sentiment on Twitter for Improving Urban Mobility

8 years 8 months ago
Detecting Events and Sentiment on Twitter for Improving Urban Mobility
The streams of tweets from and to the Twitter account of urban transport operators have been considered. A computational module has been designed and developed in order to collect tweets and, on the fly, analyze them to detect some relevant event (e.g. accidents, sudden traffic jams, service interruption, etc.) and/or evaluate possible sentiments and opinions about the quality of service. Events are recognized through a simple word matching while sentiment analysis is performed via supervised learning (Support Vector Machine). The text mining solutions have been developed to work with Italian language; however they could be easily extended to other languages in the case tweets in other languages would be available. This approach has been tested for the urban transportation in Milan (Azienda Trasporti Milano, ATM) in the framework of the TAMTAM project which has developed a technological platform for improving urban mobility by exploiting the large amount of information shared by the us...
Antonio Candelieri, Francesco Archetti
Added 16 Apr 2016
Updated 16 Apr 2016
Type Journal
Year 2015
Where ATAL
Authors Antonio Candelieri, Francesco Archetti
Comments (0)