Open Access. Powered by Scholars. Published by Universities.®
Science and Technology Studies Commons™
Open Access. Powered by Scholars. Published by Universities.®
- Keyword
-
- RDF (4)
- SSW (4)
- Semantic Sensor Web (4)
- Semantic Web (4)
- Technology (3)
-
- Government (2)
- Information Integration (2)
- Mashups (2)
- Nicotine Dependence (2)
- Ontologies (2)
- SA-REST (2)
- SAWSDL (2)
- SOA (2)
- SPARQL (2)
- Semantic Mashup (2)
- Semantic Provenance (2)
- Smashups (2)
- Social Networks (2)
- Web 2.0 (2)
- 4 x 4 Semantic Model (1)
- API Classification (1)
- Agile (1)
- Application of XML and XSLT (1)
- Binary Associations (1)
- Bioinformatics (1)
- Biomarkers (1)
- Business Process Tier (1)
- Co-Occurrence (1)
- Comment Analysis (1)
- Compound entity identification (1)
Articles 61 - 61 of 61
Full-Text Articles in Science and Technology Studies
Joint Extraction Of Compound Entities And Relationships From Biomedical Literature, Cartic Ramakrishnan, Pablo N. Mendes, Rodrigo A.T.S. De Gama, Guilherme C.N. Ferreira, Amit P. Sheth
Joint Extraction Of Compound Entities And Relationships From Biomedical Literature, Cartic Ramakrishnan, Pablo N. Mendes, Rodrigo A.T.S. De Gama, Guilherme C.N. Ferreira, Amit P. Sheth
Kno.e.sis Publications
In this paper we identify some limitations of contemporary information extraction mechanisms in the context of biomedical literature. We present an extraction mechanism that generates structured representations of textual content. Our extraction mechanism achieves this by extracting compound entities, and relationships between them, occuring in text. A detailed evaluation of the relationship and compound entities extracted is presented. Our results show over 62% average precision across 8 relationship types tested with over 82% average precision for compound entity identification1.