Transfer learning and subword sampling for asymmetric-resource one-to-many neural translation

There are several approaches for improving neural machine translation for low-resource languages: monolingual data can be exploited via pretraining or data augmentation; parallel corpora on related language pairs can be used via parameter sharing or transfer learning in multilingual models; subword...

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Published in:Machine translation Vol. 34; no. 4; pp. 251 - 286
Main Authors: Grönroos, Stig-Arne, Virpioja, Sami, Kurimo, Mikko
Format: Journal Article
Language:English
Published: Dordrecht Springer Netherlands 01.12.2020
Springer Nature B.V
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ISSN:0922-6567, 1573-0573
Online Access:Get full text
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Summary:There are several approaches for improving neural machine translation for low-resource languages: monolingual data can be exploited via pretraining or data augmentation; parallel corpora on related language pairs can be used via parameter sharing or transfer learning in multilingual models; subword segmentation and regularization techniques can be applied to ensure high coverage of the vocabulary. We review these approaches in the context of an asymmetric-resource one-to-many translation task, in which the pair of target languages are related, with one being a very low-resource and the other a higher-resource language. We test various methods on three artificially restricted translation tasks—English to Estonian (low-resource) and Finnish (high-resource), English to Slovak and Czech, English to Danish and Swedish—and one real-world task, Norwegian to North Sámi and Finnish. The experiments show positive effects especially for scheduled multi-task learning, denoising autoencoder, and subword sampling.
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ISSN:0922-6567
1573-0573
DOI:10.1007/s10590-020-09253-x