TL;DR
This paper introduces linguistically-informed multi-task pre-training objectives tailored for low-resource neural machine translation involving Japanese and English, significantly improving translation quality over existing methods.
Contribution
It proposes novel Japanese-specific and English-specific pre-training tasks that incorporate linguistic knowledge, enhancing low-resource NMT performance.
Findings
JASS and ENSS outperform MASS and other methods in BLEU scores
The methods show complementary effects between subtasks
Significant improvements in adequacy over fluency in evaluations
Abstract
In the present study, we propose novel sequence-to-sequence pre-training objectives for low-resource machine translation (NMT): Japanese-specific sequence to sequence (JASS) for language pairs involving Japanese as the source or target language, and English-specific sequence to sequence (ENSS) for language pairs involving English. JASS focuses on masking and reordering Japanese linguistic units known as bunsetsu, whereas ENSS is proposed based on phrase structure masking and reordering tasks. Experiments on ASPEC Japanese--English & Japanese--Chinese, Wikipedia Japanese--Chinese, News English--Korean corpora demonstrate that JASS and ENSS outperform MASS and other existing language-agnostic pre-training methods by up to +2.9 BLEU points for the Japanese--English tasks, up to +7.0 BLEU points for the Japanese--Chinese tasks and up to +1.3 BLEU points for English--Korean tasks. Empirical…
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