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|Booktitle=Proceedings of the 9th Extended Semantic Web Conference
 
|Booktitle=Proceedings of the 9th Extended Semantic Web Conference
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|Pages=210-224
 
|Publisher=Springer
 
|Publisher=Springer
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|Editor=Elena Simperl, Philipp Cimiano, Axel Polleres, Oscar Corcho, Valentina Presutti
 
|Series=LNCS
 
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|Volume=7295
 
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{{Publikation Details
 
|Abstract=The automated extraction of information from text and its transformation into a formal description is an important goal of in both Semantic Web research and computational linguistics. The extracted information can be used for a variety of tasks such as ontology generation, question answering and information retrieval. LODifier is an approach that combines deep semantic analysis with named entity recognition, word-sense disambiguation and controlled Semantic Web vocabularies in order to extract named entities and relations between them from text and to convert them into an RDF representation which is linked to DBpedia and WordNet. We present the architecture of our tool and discuss design decisions made. Evaluations of the tool give clear evidence of its potential for tasks like information extraction and computing document similarity.
 
|Abstract=The automated extraction of information from text and its transformation into a formal description is an important goal of in both Semantic Web research and computational linguistics. The extracted information can be used for a variety of tasks such as ontology generation, question answering and information retrieval. LODifier is an approach that combines deep semantic analysis with named entity recognition, word-sense disambiguation and controlled Semantic Web vocabularies in order to extract named entities and relations between them from text and to convert them into an RDF representation which is linked to DBpedia and WordNet. We present the architecture of our tool and discuss design decisions made. Evaluations of the tool give clear evidence of its potential for tasks like information extraction and computing document similarity.
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|Download=APR-ESWC12-LODifier.pdf,
 
|Projekt=X-Like
 
|Projekt=X-Like
 
|Forschungsgruppe=Wissensmanagement
 
|Forschungsgruppe=Wissensmanagement
 
}}
 
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Version vom 9. April 2012, 14:32 Uhr


LODifier: Generating Linked Data from Unstructured Text


LODifier: Generating Linked Data from Unstructured Text



Published: 2012 Mai
Herausgeber: Elena Simperl, Philipp Cimiano, Axel Polleres, Oscar Corcho, Valentina Presutti
Buchtitel: Proceedings of the 9th Extended Semantic Web Conference
Ausgabe: 7295
Reihe: LNCS
Seiten: 210-224
Verlag: Springer

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Kurzfassung
The automated extraction of information from text and its transformation into a formal description is an important goal of in both Semantic Web research and computational linguistics. The extracted information can be used for a variety of tasks such as ontology generation, question answering and information retrieval. LODifier is an approach that combines deep semantic analysis with named entity recognition, word-sense disambiguation and controlled Semantic Web vocabularies in order to extract named entities and relations between them from text and to convert them into an RDF representation which is linked to DBpedia and WordNet. We present the architecture of our tool and discuss design decisions made. Evaluations of the tool give clear evidence of its potential for tasks like information extraction and computing document similarity.

Download: Media:APR-ESWC12-LODifier.pdf

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