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Update: February 24, 2023 The new version of Termout.org is now online, so this web site is now obsolete and will soon be dismantled.

Lista de candidatos sometidos a examen:
1) computational linguistics (*)
(*) Términos presentes en el nuestro glosario de lingüística

1) Candidate: computational linguistics


Is in goldstandard

1
paper corpusSignosTxtLongLines455 - : Agirre, E., Bengoetxea, K., Gojenola, K. & Nivre, J. (2011). Improving dependency parsing with semantic classes. In Proceedings of the 49th Annual Meeting of the Association for Computational Linguistics: Human Language Technologies: Short papers -Volume 2 (pp . 699-703). Association for Computational Linguistics. [ [143]Links ]

2
paper corpusSignosTxtLongLines505 - : Partee, B. H. (2008). Symmetry and symmetrical predicates. En A. E. Kibrik, V. I. Belikov & B. V. Dobrovolsky (Eds.), Computational linguistics and intellectual technologies: Papers from the international conference “Dialogue” (pp . 606-611). Moscow: Institut Problem Informatiki. [ [144]Links ]

Evaluando al candidato computational linguistics:



computational linguistics
Lengua:
Frec: 105
Docs: 43
Nombre propio: 2 / 105 = 1%
Coocurrencias con glosario:
Puntaje: 0.129 = ( + (1+0) / (1+6.7279204545632)));
Candidato aceptado

Referencias bibliográficas encontradas sobre cada término

(Que existan referencias dedicadas a un término es también indicio de terminologicidad.)
computational linguistics
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