Document Sub-structure in Neural Machine Translation

LREC 2020 Radina DobrevaJie ZhouRachel Bawden

Current approaches to machine translation (MT) either translate sentences in isolation, disregarding the context they appear in, or model context at the level of the full document, without a notion of any internal structure the document may have. In this work we consider the fact that documents are rarely homogeneous blocks of text, but rather consist of parts covering different topics... (read more)

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