Improving Neural Machine Translation of Indigenous Languages with
Multilingual Transfer Learning
- URL: http://arxiv.org/abs/2205.06993v1
- Date: Sat, 14 May 2022 07:30:03 GMT
- Title: Improving Neural Machine Translation of Indigenous Languages with
Multilingual Transfer Learning
- Authors: Wei-Rui Chen and Muhammad Abdul-Mageed
- Abstract summary: We describe an approach exploiting bilingual and multilingual pretrained MT models to translate from Spanish to ten South American Indigenous languages.
Our models set new SOTA on five out of the ten language pairs we consider, even doubling performance on one of these five pairs.
- Score: 7.893831644671974
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Machine translation (MT) involving Indigenous languages, including those
possibly endangered, is challenging due to lack of sufficient parallel data. We
describe an approach exploiting bilingual and multilingual pretrained MT models
in a transfer learning setting to translate from Spanish to ten South American
Indigenous languages. Our models set new SOTA on five out of the ten language
pairs we consider, even doubling performance on one of these five pairs. Unlike
previous SOTA that perform data augmentation to enlarge the train sets, we
retain the low-resource setting to test the effectiveness of our models under
such a constraint. In spite of the rarity of linguistic information available
about the Indigenous languages, we offer a number of quantitative and
qualitative analyses (e.g., as to morphology, tokenization, and orthography) to
contextualize our results.
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