CLLGMLFeb 22, 2019

Non-Autoregressive Machine Translation with Auxiliary Regularization

arXiv:1902.10245v1165 citations
Originality Incremental advance
AI Analysis

This work addresses translation quality issues in non-autoregressive models, which are crucial for real-time applications, but it is incremental as it builds on existing NAT frameworks.

The paper tackled the problems of repeated and incomplete translations in non-autoregressive machine translation by introducing two auxiliary regularization terms to improve decoder hidden representations, resulting in significant accuracy improvements over state-of-the-art NAT models while maintaining high inference efficiency.

As a new neural machine translation approach, Non-Autoregressive machine Translation (NAT) has attracted attention recently due to its high efficiency in inference. However, the high efficiency has come at the cost of not capturing the sequential dependency on the target side of translation, which causes NAT to suffer from two kinds of translation errors: 1) repeated translations (due to indistinguishable adjacent decoder hidden states), and 2) incomplete translations (due to incomplete transfer of source side information via the decoder hidden states). In this paper, we propose to address these two problems by improving the quality of decoder hidden representations via two auxiliary regularization terms in the training process of an NAT model. First, to make the hidden states more distinguishable, we regularize the similarity between consecutive hidden states based on the corresponding target tokens. Second, to force the hidden states to contain all the information in the source sentence, we leverage the dual nature of translation tasks (e.g., English to German and German to English) and minimize a backward reconstruction error to ensure that the hidden states of the NAT decoder are able to recover the source side sentence. Extensive experiments conducted on several benchmark datasets show that both regularization strategies are effective and can alleviate the issues of repeated translations and incomplete translations in NAT models. The accuracy of NAT models is therefore improved significantly over the state-of-the-art NAT models with even better efficiency for inference.

Foundations

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