Authors
Yu-Ru Lin, Yun Chi, Shenghuo Zhu, Hari Sundaram, Belle L Tseng
Publication date
2008/4/21
Book
Proceedings of the 17th international conference on World Wide Web
Pages
685-694
Description
We discover communities from social network data, and analyze the community evolution. These communities are inherent characteristics of human interaction in online social networks, as well as paper citation networks. Also, communities may evolve over time, due to changes to individuals' roles and social status in the network as well as changes to individuals' research interests. We present an innovative algorithm that deviates from the traditional two-step approach to analyze community evolutions. In the traditional approach, communities are first detected for each time slice, and then compared to determine correspondences. We argue that this approach is inappropriate in applications with noisy data. In this paper, we propose FacetNet for analyzing communities and their evolutions through a robust unified process. In this novel framework, communities not only generate evolutions, they also are regularized by …
Total citations
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Scholar articles
YR Lin, Y Chi, S Zhu, H Sundaram, BL Tseng - Proceedings of the 17th international conference on …, 2008