Relevancer aims at identifying relevant content in social media streams. Text mining is the main approach.
Project description
## Motivation
Relevancer aims at identifying relevant content in social media streams. Text mining is the main approach.
## Contributors
Ali Hürriyetoglu ([@hurrial](https://twitter.com/hurrial)), Mustafa Erkan Başar ([@me_basar](https://twitter.com/me_basar)), Nelleke Oostdijk, Antal van den Bosch ([@antalvdb](https://twitter.com/antalvdb)), Aslıhan Arslan ([@miniminiibirkus](https://twitter.com/miniminiibirkus)), Uğur Özcan ([@uozcan12](https://twitter.com/uozcan12)), Jurjen Wagemaker ([@jurjenwagemaker](https://twitter.com/jurjenwagemaker)), Ghiath Ghanem, and Ron Bortman.
## Publications
Hürriyetoglu, A., Gudehus C., Oostdijk, N. H. J., & van den Bosch, A. P. J. (2016a). Relevancer: Finding and Labeling Relevant Information in Tweet Collections. In International Conference on Social Informatics (pp. 1-15). Springer International Publishing. LINK: http://link.springer.com/chapter/10.1007/978-3-319-47874-6_15
Hürriyetoglu, A., Wagemaker J., Oostdijk, N. H. J., & van den Bosch, A. P. J. (2016b). Analysing the Role of Key Term Inflections in Knowledge Discovery on Twitter. In Proceedings of the 2st International Workshop on Knowledge Discovery on the WEB. Cagliari, Italy, September 8-10, 2016.
## Demo
http://relevancer.science.ru.nl/
## License
Licensed under GPLv3 (See http://www.gnu.org/licenses/gpl-3.0.html)
## Acknowledgements This project was supported by Floodtags ([@FloodTags](https://twitter.com/FloodTags)) and the Dutch national programme COMMIT ([@COMMIT_nl](https://twitter.com/COMMIT_nl) as part of the Infiniti project, Work Package ADNEXT ([@Adnext_Commit](https://twitter.com/Adnext_Commit)).
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