Publication | Closed Access
Communities and Emerging Semantics in Semantic Link Network: Discovery and Learning
263
Citations
42
References
2009
Year
Artificial IntelligenceEngineeringSemanticsSemantic WebLink PredictionComputational Social ScienceSocial Semantic WebInformation RetrievalData ScienceData MiningSemantic Knowledge ManagementSocial Network AnalysisKnowledge DiscoverySemantic Web TechniqueComputer ScienceE-learning EnvironmentE-learning SystemSemantic NetworkNetwork ScienceBusinessSemantic Link NetworkKnowledge ManagementSemantic Social NetworkSemantic Graph
The World Wide Web provides plentiful contents for Web-based learning, but its hyperlink-based architecture connects Web resources for browsing freely rather than for effective learning. To support effective learning, an e-learning system should be able to discover and make use of the semantic communities and the emerging semantic relations in a dynamic complex network of learning resources. Previous graph-based community discovery approaches are limited in ability to discover semantic communities. This paper first suggests the semantic link network (SLN), a loosely coupled semantic data model that can semantically link resources and derive out implicit semantic links according to a set of relational reasoning rules. By studying the intrinsic relationship between semantic communities and the semantic space of SLN, approaches to discovering reasoning-constraint, rule-constraint, and classification-constraint semantic communities are proposed. Further, the approaches, principles, and strategies for discovering emerging semantics in dynamic SLNs are studied. The basic laws of the semantic link network motion are revealed for the first time. An e-learning environment incorporating the proposed approaches, principles, and strategies to support effective discovery and learning is suggested.
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