Extracting knowledge from text using SHELDON, a semantic holistic framEwork for LinkeD ONtology data
Poster
Data di Pubblicazione:
2015
Abstract:
SHELDON1 is the first true hybridization of NLP machine reading and the Semantic Web. It extracts RDF data from text using a machine reader: the extracted RDF graphs are compliant to Semantic Web and Linked Data. It goes further and applies Semantic Web practices and technolo- gies to extend the current human-readable web. The input is represented by a sentence in any language. SHELDON includes different capabilities in order to extend machine reading to Semantic Web data: frame detection, topic ex- traction, named entity recognition, resolution and corefer- ence, terminology extraction, sense tagging and disambigua- tion, taxonomy induction, semantic role labeling, type in- duction, sentiment analysis, citation inference, relation and event extraction, nice visualization tools which make use of the JavaScript infoVis Toolkit and RelFinder. A demo of SHELDON can be seen and used at http://wit.istc.cnr. it/stlab-tools/sheldon.
Tipologia CRIS:
04.03 Poster in Atti di convegno
Keywords:
machine reading; sentiment analysis; open knowledge extractio; open information extraction; relation extractio; linke data; fred
Elenco autori:
Consoli, Sergio; REFORGIATO RECUPERO, DIEGO ANGELO GAETANO; Peroni, Silvio; Mongiovì, Misael; Presutti, Valentina; Nuzzolese, ANDREA GIOVANNI
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