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Jointly Learning to Align and Translate with Transformer Models

About

The state of the art in machine translation (MT) is governed by neural approaches, which typically provide superior translation accuracy over statistical approaches. However, on the closely related task of word alignment, traditional statistical word alignment models often remain the go-to solution. In this paper, we present an approach to train a Transformer model to produce both accurate translations and alignments. We extract discrete alignments from the attention probabilities learnt during regular neural machine translation model training and leverage them in a multi-task framework to optimize towards translation and alignment objectives. We demonstrate that our approach produces competitive results compared to GIZA++ trained IBM alignment models without sacrificing translation accuracy and outperforms previous attempts on Transformer model based word alignment. Finally, by incorporating IBM model alignments into our multi-task training, we report significantly better alignment accuracies compared to GIZA++ on three publicly available data sets.

Sarthak Garg, Stephan Peitz, Udhyakumar Nallasamy, Matthias Paulik• 2019

Related benchmarks

TaskDatasetResultRank
Word AlignmentEnglish-French (test)
AER5
37
Word AlignmentRomanian-English (Ro-En) (test)
AER23
34
Word AlignmentRWTH Gold Alignment de-en (test)
AER0.16
31
Machine TranslationDe-En (test)
BLEU36.6
23
Word AlignmentEnglish-Hindi en-hi (test)
AER43.8
17
Machine Translationen-fr (test)
BLEU38.3
17
Machine Translationja-en (test)
BLEU20.2
11
Machine Translationro-en (test)
BLEU-C33.3
8
Machine Translationen-hi (test)
BLEU-C Score22.5
8
Word Alignmentro-en en→ro
AER33.2
7
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