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

1) Candidate: retrieval


Is in goldstandard

1
paper CL_LiteraturayLingüísticatxt125 - : Jackson, P. y Moulinier, I. (2002). "Natural language processing for online applications Text retrieval, extraction and categorization": Amsterdam: John Benjamins . [ [122]Links ]

2
paper VE_Letrastxt207 - : geriatrics, aphasics or children. As the corpora on which we are working do not fit into any of the categories ascribed by others, we have deliberately chosen to coin this new category, i.e. the special purpose corpus. We plan to use this term whenever the specific purpose for which the corpus is to be used (e.g. retrieval of definition statements, analysis of gender-related issues) is the reason for creating or selecting the corpus (Pearson 1998: p . 48).

3
paper VE_Núcleotxt80 - : 19. Ecke, P. (2001). Lexical retrieval in a third language: Evidence from errors and tip-ofthe- tongue states . En J. Cenoz, B. Hufeisen y U. Jessner (coords.), Cross-linguistic influence in third language acquisition: Psycholinguistic perspectives (pp. 90-114). Clevedon, Multilingual Matters. [ [50]Links ]

Evaluando al candidato retrieval:



retrieval
Lengua: eng
Frec: 158
Docs: 81
Nombre propio: / 158 = 0%
Coocurrencias con glosario:
Puntaje: 0.120 = ( + (1+0) / (1+7.31288295528436)));
Candidato aceptado

Referencias bibliográficas encontradas sobre cada término

(Que existan referencias dedicadas a un término es también indicio de terminologicidad.)
retrieval
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: These language learning strategies are defined by Oxford as "operations employed by the learner to aid the acquisition, storage, retrieval and use of information" (Oxford, 1990 p.8) and she states that they support each other.
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: • Inhibition of verbal memory retrieval as a consequence of prior retrieval. J. Mem. & Lang. 46(3):606-621, 2002 (Psychology RP title)