REINA at RepLab2013 Topic Detection Task: Community Detection

Alonso-Berrocal, José-Luis and G. Figuerola, Carlos and Zazo-Rodríguez, Ángel-F. REINA at RepLab2013 Topic Detection Task: Community Detection., 2013 . In Working Notes for the CLEF 2013 Evaluation Labs and Workshop, Valencia, 23-26 September 2013. [Conference paper]

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English abstract

Social networks have become a large repository of comments which can extract multiple information. Twitter is one of the most widespread social networks and larger and is therefore an important source for detecting states of opinion, events and happenings before even the mainstream media. Topic detection is important to discover areas of interest that arise in the tweets. We have used classical systems for a similarity matrix and we have used community detection techniques. The results have been good and allows us to study new possibilities.

Item type: Conference paper
Keywords: Topic detection, Community detection
Subjects: B. Information use and sociology of information > BC. Information in society.
H. Information sources, supports, channels. > HT. Web 2.0, Social networks
L. Information technology and library technology > LZ. None of these, but in this section.
Depositing user: Carlos G. Figuerola
Date deposited: 26 May 2016 07:47
Last modified: 26 May 2016 07:47


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