Matches in ScholarlyData for { <https://w3id.org/scholarlydata/inproceedings/eswc2012/paper/poster/334> ?p ?o. }
Showing items 1 to 13 of
13
with 100 items per page.
- 334 creator danica-damljanovic.
- 334 creator kalina-bontcheva.
- 334 type InProceedings.
- 334 label "Named Entity Disambiguation using Linked Data".
- 334 sameAs 334.
- 334 abstract "Identification of Named Entities (NE) such as people, organisations and locations is fundamental to semantic annotation and is the starting point of more advanced text mining algorithms. For instance, sentiment analysis is widely used in finance to extract the latest signals and events from news that could affect stock prices. However, before extracting company-related sentiment, it is necessary to identify the documents containing the corresponding and unambiguous company entities. Humans usually resolve ambiguities based on context. We argue that Linked Data can be a valuable source for extending the already available context. We combine a state-of-the-art named entity tool with novel Linked Data-based similarity measures and show that our algorithm can improve disambiguation accuracy on a subset of Wikipedia user profiles.".
- 334 hasAuthorList authorList.
- 334 isPartOf proceedings.
- 334 keyword "disambiguation".
- 334 keyword "entity linking".
- 334 keyword "linked data".
- 334 keyword "named entities".
- 334 title "Named Entity Disambiguation using Linked Data".