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Multilingual Neural Machine Translation With Soft Decoupled Encoding (1902.03499v1)

Published 9 Feb 2019 in cs.CL

Abstract: Multilingual training of neural machine translation (NMT) systems has led to impressive accuracy improvements on low-resource languages. However, there are still significant challenges in efficiently learning word representations in the face of paucity of data. In this paper, we propose Soft Decoupled Encoding (SDE), a multilingual lexicon encoding framework specifically designed to share lexical-level information intelligently without requiring heuristic preprocessing such as pre-segmenting the data. SDE represents a word by its spelling through a character encoding, and its semantic meaning through a latent embedding space shared by all languages. Experiments on a standard dataset of four low-resource languages show consistent improvements over strong multilingual NMT baselines, with gains of up to 2 BLEU on one of the tested languages, achieving the new state-of-the-art on all four language pairs.

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Authors (4)
  1. Xinyi Wang (152 papers)
  2. Hieu Pham (35 papers)
  3. Philip Arthur (9 papers)
  4. Graham Neubig (342 papers)
Citations (59)