Adding Taxonomies Obtained by Content Clustering to Semantic Social Network Analysis
نویسندگان
چکیده
This paper introduces a novel method to analyze the content of communication in social networks. Content clustering methods are used to extract a taxonomy of concepts from each analyzed communication archive. Those taxonomies are hierarchical categorizations of the concepts discussed in the analyzed communication archives. Concepts are based on terms extracted from the communication’s content. The resulting taxonomy provides insights into the communication not possible through conventional social network analysis.
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