Real-Time Monitoring of Flu Epidemics through Linguistic and Statistical Analysis of Twitter Messages
The recent rise in popularity of Twitter and its open API provides developers the opportunity to extract
amounts of data which can be a thesaurus of information. This opportunity led to the development of an open source and open API
system called Flu track (http://flutrack.org) that monitors influenza epidemics, based on geo-located self-reports on Twitter.
In particular, we detect words such as sore throat, cough, fever etc. Moreover, we detect the aggravation of a patient’s
clinical condition when a user posts a second flu related tweet that contains words indicating further symptoms such as: worse,
deteriorating. Finally, we present flu-positives with real time anonymous visualizations using maps (mapping), which might be
helpful for authorities and sensitive populations to plan upcoming events or activities. In order to further aid the
surveillance of the spreading of the disease, a classification experiment has been conducted for automatically identifying
Tweets that describe cases with acute and more critical symptoms from those referring to milder cases. We found that making use
of mereley very small n-gram keyword lexica, the automatic identification of critical cases reaches an accuracy of 92%.
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DOI
Talvis, K., Chorianopoulos, K., and Kermanidis, K.L. 2014. Real-Time Monitoring of Flu Epidemics through Linguistic and Statistical Analysis of Twitter Messages. 9th International Workshop on Semantic and Social Media Adaptation and Personalization, IEEE, 83–87.BibTeX
Talvis, K., Chorianopoulos, K., and Kermanidis, K.L. 2014. Real-Time Monitoring of Flu Epidemics through Linguistic and Statistical Analysis of Twitter Messages. 9th International Workshop on Semantic and Social Media Adaptation and Personalization, IEEE, 83–87.