Baidu-OSU WMT19 system achieves >10 BLEU gain on En-Fr and Fr-En social media translation via domain sensitive training and pseudo noisy sources.
An Empirical Comparison of Simple Domain Adaptation Methods for Neural Machine Translation
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abstract
In this paper, we propose a novel domain adaptation method named "mixed fine tuning" for neural machine translation (NMT). We combine two existing approaches namely fine tuning and multi domain NMT. We first train an NMT model on an out-of-domain parallel corpus, and then fine tune it on a parallel corpus which is a mix of the in-domain and out-of-domain corpora. All corpora are augmented with artificial tags to indicate specific domains. We empirically compare our proposed method against fine tuning and multi domain methods and discuss its benefits and shortcomings.
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cs.CL 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Robust Machine Translation with Domain Sensitive Pseudo-Sources: Baidu-OSU WMT19 MT Robustness Shared Task System Report
Baidu-OSU WMT19 system achieves >10 BLEU gain on En-Fr and Fr-En social media translation via domain sensitive training and pseudo noisy sources.