Authors
Xufei Wang, Lei Tang, Huiji Gao, Huan Liu
Publication date
2010/12/13
Conference
2010 IEEE international conference on data mining
Pages
569-578
Publisher
IEEE
Description
The increasing popularity of social media is shortening the distance between people. Social activities, e.g., tagging in Flickr, book marking in Delicious, twittering in Twitter, etc. are reshaping people's social life and redefining their social roles. People with shared interests tend to form their groups in social media, and users within the same community likely exhibit similar social behavior (e.g., going for the same movies, having similar political viewpoints), which in turn reinforces the community structure. The multiple interactions in social activities entail that the community structures are often overlapping, i.e., one person is involved in several communities. We propose a novel co-clustering framework, which takes advantage of networking information between users and tags in social media, to discover these overlapping communities. In our method, users are connected via tags and tags are connected to users. This …
Total citations
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Scholar articles
X Wang, L Tang, H Gao, H Liu - 2010 IEEE international conference on data mining, 2010