Naver Labs Europe's Systems for the WMT19 Machine Translation Robustness Task

FOURTH CONFERENCE ON MACHINE TRANSLATION (WMT 2019)(2019)

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Abstract
This paper describes the systems that we submitted to the WMT19 Machine Translation robustness task. This task aims to improve MT's robustness to noise found on social media, like informal language, spelling mistakes and other orthographic variations. The organizers provide parallel data extracted from a social media website(1) in two language pairs: French-English and Japanese-English (in both translation directions). The goal is to obtain the best scores on unseen test sets from the same source, according to automatic metrics (BLEU) and human evaluation. We proposed one single and one ensemble system for each translation direction. Our ensemble models ranked first in all language pairs, according to BLEU evaluation. We discuss the preprocessing choices that we made, and present our solutions for robustness to noise and domain adaptation.
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Key words
translation,robustness
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