CLFeb 17, 2020

Incorporating BERT into Neural Machine Translation

arXiv:2002.06823v1125 citationsHas Code
AI Analysis

This work addresses a gap in leveraging BERT for machine translation, offering improvements for translation tasks across supervised, semi-supervised, and unsupervised settings.

The paper tackles the problem of effectively applying BERT to neural machine translation by proposing a BERT-fused model that integrates BERT representations with NMT encoder and decoder layers, achieving state-of-the-art results on seven benchmark datasets.

The recently proposed BERT has shown great power on a variety of natural language understanding tasks, such as text classification, reading comprehension, etc. However, how to effectively apply BERT to neural machine translation (NMT) lacks enough exploration. While BERT is more commonly used as fine-tuning instead of contextual embedding for downstream language understanding tasks, in NMT, our preliminary exploration of using BERT as contextual embedding is better than using for fine-tuning. This motivates us to think how to better leverage BERT for NMT along this direction. We propose a new algorithm named BERT-fused model, in which we first use BERT to extract representations for an input sequence, and then the representations are fused with each layer of the encoder and decoder of the NMT model through attention mechanisms. We conduct experiments on supervised (including sentence-level and document-level translations), semi-supervised and unsupervised machine translation, and achieve state-of-the-art results on seven benchmark datasets. Our code is available at \url{https://github.com/bert-nmt/bert-nmt}.

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