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  4. Enriching topic models with DBpedia
 
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2016
Conference Paper
Title

Enriching topic models with DBpedia

Abstract
Traditional Topic Modeling approaches only consider the words in the document. By using an entity-topic modeling approach and including background knowledge about the entities such as the occupation of persons, the location of organizations, the band of a musician etc., we can better cluster related documents together, and produce semantic topic models that can be represented in a knowledge base. In our approach we first reduce the text documents to a set of entities and then enrich this set with background knowledge from DBpedia. Topic modeling is performed on the enriched set of entities and various feature combinations are evaluated in order to determine the combination that achieves the best classification precision or perplexity compared to using word-based topic models alone.
Author(s)
Todor, A.
Lukasiewicz, W.
Athan, T.
Paschke, A.
Mainwork
On the move to meaningful Internet systems. OTM Conferences 2016  
Conference
OnTheMove Event (OTM) 2016  
International Conference on Cooperative Information Systems (CoopIS) 2016  
International Conference on Ontologies, DataBases, and Applications of Semantics (ODBASE) 2016  
DOI
10.1007/978-3-319-48472-3_46
Language
English
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
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