On Romanization for Model Transfer Between Scripts in Neural Machine Translation
September 30, 2020 ยท Declared Dead ยท ๐ Findings
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Authors
Chantal Amrhein, Rico Sennrich
arXiv ID
2009.14824
Category
cs.CL: Computation & Language
Citations
16
Venue
Findings
Last Checked
4 months ago
Abstract
Transfer learning is a popular strategy to improve the quality of low-resource machine translation. For an optimal transfer of the embedding layer, the child and parent model should share a substantial part of the vocabulary. This is not the case when transferring to languages with a different script. We explore the benefit of romanization in this scenario. Our results show that romanization entails information loss and is thus not always superior to simpler vocabulary transfer methods, but can improve the transfer between related languages with different scripts. We compare two romanization tools and find that they exhibit different degrees of information loss, which affects translation quality. Finally, we extend romanization to the target side, showing that this can be a successful strategy when coupled with a simple deromanization model.
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