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Domain adaptation strategies in statistical machine translation: a brief overview
Authors
Marta Ruiz Costa-Jussà
Publication date
1 January 2015
Publisher
'Cambridge University Press (CUP)'
Doi
Abstract
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given that it can easily be adapted to any pair of languages. One of the main challenges in SMT is domain adaptation because the performance in translation drops when testing conditions deviate from training conditions. Many research works are arising to face this challenge. Research is focused on trying to exploit all kinds of material, if available. This paper provides an overview of research, which copes with the domain adaptation challenge in SMT.Peer ReviewedPostprint (author's final draft
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info:doi/10.1017%2Fs0269888915...
Last time updated on 24/03/2019
UPCommons (Universitat Politècnica de Catalunya)
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Last time updated on 28/02/2025
UPCommons
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UPCommons. Portal del coneixement obert de la UPC
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Last time updated on 12/10/2017