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Data-adaptive Transfer Learning for Translation: A Case Study in Haitian and Jamaican (2209.06295v1)

Published 13 Sep 2022 in cs.CL

Abstract: Multilingual transfer techniques often improve low-resource machine translation (MT). Many of these techniques are applied without considering data characteristics. We show in the context of Haitian-to-English translation that transfer effectiveness is correlated with amount of training data and relationships between knowledge-sharing languages. Our experiments suggest that for some languages beyond a threshold of authentic data, back-translation augmentation methods are counterproductive, while cross-lingual transfer from a sufficiently related language is preferred. We complement this finding by contributing a rule-based French-Haitian orthographic and syntactic engine and a novel method for phonological embedding. When used with multilingual techniques, orthographic transformation makes statistically significant improvements over conventional methods. And in very low-resource Jamaican MT, code-switching with a transfer language for orthographic resemblance yields a 6.63 BLEU point advantage.

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Authors (4)
  1. Nathaniel R. Robinson (8 papers)
  2. Cameron J. Hogan (2 papers)
  3. Nancy Fulda (10 papers)
  4. David R. Mortensen (40 papers)
Citations (3)

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