Integrating Unsupervised Data Generation into Self-Supervised Neural Machine Translation for Low-Resource Languages

Abstract

For most language combinations, parallel data is either scarce or simply unavailable. To address this, unsupervised machine translation (UMT) exploits large amounts of monolingual data by using synthetic data generation techniques such as back-translation and noising, while self-supervised NMT (SSNMT) identifies parallel sentences in smaller comparable data and trains on them. To date, the inclusion of UMT data generation techniques in SSNMT has not been investigated. We show that including UMT techniques into SSNMT significantly outperforms SSNMT and UMT on all tested language pairs, with improvements of up to +4.3 BLEU, +50.8 BLEU, +51.5 over SSNMT, statistical UMT and hybrid UMT, respectively, on Afrikaans to English. We further show that the combination of multilingual denoising autoencoding, SSNMT with backtranslation and bilingual finetuning enables us to learn machine translation even for distant language pairs for which only small amounts of monolingual data are available, e.g. yielding BLEU scores of 11.6 (English to Swahili).

Publication
Proceedings of the 18th biennial conference of the International Association of Machine Translation, MT Summit XVIII, Vol 1, Research track
Josef van Genabith
Josef van Genabith
Professor at German Research Center for Artificial Intelligence (DFKI)
Cristina España i Bonet
Cristina España i Bonet
Senior Researcher