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Domain specialization: a post-training domain adaptation for Neural Machine Translation

2016-12-19
Christophe Servan, Josep Crego, Jean Senellart

Abstract

Domain adaptation is a key feature in Machine Translation. It generally encompasses terminology, domain and style adaptation, especially for human post-editing workflows in Computer Assisted Translation (CAT). With Neural Machine Translation (NMT), we introduce a new notion of domain adaptation that we call “specialization” and which is showing promising results both in the learning speed and in adaptation accuracy. In this paper, we propose to explore this approach under several perspectives.

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URL

https://arxiv.org/abs/1612.06141

PDF

https://arxiv.org/pdf/1612.06141


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