Finding Prominent Features in Communities in Social Networks Using Ontology
نویسندگان
چکیده
Community detection is one of the major tasks in social networks. The success of any community depends upon the features that were selected to form the community. So it is important to have the knowledge of the main features that may affect the community. In this work we have proposed a method to find prominent features based on which community can be formed. Ontology has been used for the said purpose.
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