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Author-topic classification based on semantic knowledge

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Abstract

We propose a novel unsupervised two-phased classification model leveraging from semantic web technologies for discovering common research fields between researchers based on information available from a bibliographic repository and external resources. The first phase performs coarse-grained classification by knowledge disciplines using as reference the disciplines defined in the UNESCO thesaurus. The second phase provides a fine-grained classification by means of a clustering approach combined with external resources. The methodology was applied to the REDI (Semantic Repository of Ecuadorian researchers) project, with remarkable results and thus proving a valuable tool to one of the main REDI’s goals discover Ecuadorian authors sharing research interests to foster collaborative research efforts.

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Author-topic classification, Data integration, Data mining, Knowledge base, Linked data, Query languages, Semantic web, Author-topic classification, Data Integration, Data Mining, Knowledge base, Linked Data, Query Languages, Semantic Web

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