In:Recent Advances in Computational Terminology
Edited by Didier Bourigault, Christian Jacquemin and Marie-Claude L'Homme
[Natural Language Processing 2] 2001
► pp. 261–278
Term extraction using a similarity-based approach
Published online: 15 June 2001
https://doi.org/10.1075/nlp.2.14may
https://doi.org/10.1075/nlp.2.14may
Traditional methods of multi-word term extraction have used hybrid methods combining linguistic and statistical information. The linguistic part of these applications is often underexploited and consists of very shallow knowledge in the form of a simple syntactic filter. In most cases no interpretation of terms is undertaken and recognition does not involve distinguishing between different senses of terms, although ambiguity can be a serious problem for applications such as ontology building and machine translation. The approach described uses both statistical and linguistic information, combining syntax and semantics to identify, rank and disambiguate terms. We describe a new thesaurus-based similarity measure, which uses semantic information to calculate the importance of different parts of the context in relation to the term. Results show that making use of semantic information is beneficial for both theoretical and practical aspects of terminology.
Cited by (7)
Cited by seven other publications
Melo Mora, Luis Felipe & Yannick Toussaint
Ge, Jike, Yuhui Qiu, Shiqun Yin & Zuqin Chen
Zan, Hongying, Guocheng Duan & Ming Fan
Daille, Béatrice
Langlais, Philippe
2002. Review of Bourigault, Jacquemin & L’Homme (2001): Recent Advances in Computational Terminology. Terminology. International Journal of Theoretical and Applied Issues in Specialized Communication 8:1 ► pp. 167 ff.
[no author supplied]
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