2021
DOI: 10.48550/arxiv.2109.04292
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Generalised Unsupervised Domain Adaptation of Neural Machine Translation with Cross-Lingual Data Selection

Abstract: This paper considers the unsupervised domain adaptation problem for neural machine translation (NMT), where we assume the access to only monolingual text in either the source or target language in the new domain. We propose a cross-lingual data selection method to extract in-domain sentences in the missing language side from a large generic monolingual corpus. Our proposed method trains an adaptive layer on top of multilingual BERT by contrastive learning to align the representation between the source and targ… Show more

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