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Adding community and dynamic to topic models
Authors:Daifeng Li  Ying Ding  Xin Shuai  Johan Bollen  Jie Tang  Shanshan Chen  Jiayi Zhu  Guilherme Rocha
Institution:1. Department of Computer Science and Technology, Tsinghua University, Beijing, China;2. School of Informatics and Computing, Indiana University, Bloomington, IN, USA;3. School of Library and Information Science, Indiana University, Bloomington, IN, USA;4. Department of Statistics, Indiana University, Bloomington, IN, USA;1. Division for Science and Innovation Studies, Administrative Headquarters of the Max Planck Society, Hofgartenstr. 8, 80539 Munich, Germany;2. Max Planck Institute for Solid State Research, Heisenbergstr. 1, 70569 Stuttgart, Germany;1. The Jerusalem School of Business, The Hebrew University, Mount Scopus, Jerusalem 91905, Israel;2. 404 Business Building, Management and Organization, Smeal College of Business, Penn State, University Park, Pennsylvania 16802, USA
Abstract:The detection of communities in large social networks is receiving increasing attention in a variety of research areas. Most existing community detection approaches focus on the topology of social connections (e.g., coauthor, citation, and social conversation) without considering their topic and dynamic features. In this paper, we propose two models to detect communities by considering both topic and dynamic features. First, the Community Topic Model (CTM) can identify communities sharing similar topics. Second, the Dynamic CTM (DCTM) can capture the dynamic features of communities and topics based on the Bernoulli distribution that leverages the temporal continuity between consecutive timestamps. Both models were tested on two datasets: ArnetMiner and Twitter. Experiments show that communities with similar topics can be detected and the co-evolution of communities and topics can be observed by these two models, which allow us to better understand the dynamic features of social networks and make improved personalized recommendations.
Keywords:
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