Boosting Neural Machine Translation from Finnish to Northern Sámi with Rule-Based Backtranslation

We consider a low-resource translation task from Finnish into Northern Sámi. Collecting all available parallel data between the languages, we obtain around 30,000 sentence pairs. However, there exists a significantly larger monolingual Northern Sámi corpus, as well as a rule-based machine translatio...

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Bibliographic Details
Main Authors: Aulamo, Mikko, Virpioja, Sami, Scherrer, Yves, Tiedemann, Jörg
Other Authors: Dobnik, Simon, Øvrelid, Lilja, Department of Digital Humanities, Language Technology, Mind and Matter
Format: Conference Object
Language:English
Published: 2021
Subjects:
Online Access:http://hdl.handle.net/10138/330760
Description
Summary:We consider a low-resource translation task from Finnish into Northern Sámi. Collecting all available parallel data between the languages, we obtain around 30,000 sentence pairs. However, there exists a significantly larger monolingual Northern Sámi corpus, as well as a rule-based machine translation (RBMT) system between the languages. To make the best use of the monolingual data in a neural machine translation (NMT) system, we use the backtranslation approach to create synthetic parallel data from it using both NMT and RBMT systems. Evaluating the results on an in-domain test set and a small out-of-domain set, we find that the RBMT backtranslation outperforms NMT backtranslation clearly for the out-of-domain test set, but also slightly for the in-domain data, for which the NMT backtranslation model provided clearly better BLEU scores than the RBMT. In addition, combining both backtranslated data sets improves the RBMT approach only for the in-domain test set. This suggests that the RBMT system provides general-domain knowledge that cannot be found from the relative small parallel training data. Peer reviewed