Automatic Discovery of Related Concepts
نویسندگان
چکیده
This report describes an Information Discovery tool, which is designed to help users with finding relevant information regarding the goals they intend to achieve. This information is extracted from an input corpus and organized into a knowledge graph. The knowledge graph is created by extracting informative entities and the relations connecting them to one another. The architecture of this system and a description of different phases and implemented components follow.
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