Publication | Closed Access
Probabilistic models for discovering e-communities
237
Citations
25
References
2006
Year
Unknown Venue
EngineeringCommunity MiningCommunicationSemantic WebSocial NetworkCommunity DiscoveryText MiningComputational Social ScienceSocial MediaSemantic InformationData ScienceData MiningStatisticsProbabilistic ModelsCommunity DetectionSocial Network AnalysisKnowledge DiscoverySocial Network AggregationCommunity StructureNetwork ScienceSocial ComputingBusinessSemantic Social Network
The increasing amount of communication between individuals in e-formats (e.g. email, Instant messaging and the Web) has motivated computational research in social network analysis (SNA). Previous work in SNA has emphasized the social network (SN) topology measured by communication frequencies while ignoring the semantic information in SNs. In this paper, we propose two generative Bayesian models for semantic community discovery in SNs, combining probabilistic modeling with community detection in SNs. To simulate the generative models, an EnF-Gibbs sampling algorithm is proposed to address the efficiency and performance problems of traditional methods. Experimental studies on Enron email corpus show that our approach successfully detects the communities of individuals and in addition provides semantic topic descriptions of these communities.
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