通过数据增强提高神经机器翻译的鲁棒性:超越反向翻译

Zhenhao Li, Lucia Specia
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引用次数: 31

摘要

神经机器翻译(NMT)模型在翻译干净文本时已被证明是强大的,但它们对输入中的噪声非常敏感。改进NMT模型的鲁棒性可以看作是对噪声的“域”适应的一种形式。最近创建的基于噪声文本的机器翻译任务语料库为一些语言对提供了噪声清洁的并行数据,但这些数据在大小和多样性方面非常有限。最先进的方法严重依赖于大量的反向翻译数据。本文有两个主要贡献:首先,我们提出了新的数据增强方法来扩展有限的噪声数据,进一步提高NMT对噪声的鲁棒性,同时保持模型的小。其次,我们探索了以语音转录本的形式利用外部数据噪声的效果,并表明它可以帮助鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Neural Machine Translation Robustness via Data Augmentation: Beyond Back-Translation
Neural Machine Translation (NMT) models have been proved strong when translating clean texts, but they are very sensitive to noise in the input. Improving NMT models robustness can be seen as a form of “domain” adaption to noise. The recently created Machine Translation on Noisy Text task corpus provides noisy-clean parallel data for a few language pairs, but this data is very limited in size and diversity. The state-of-the-art approaches are heavily dependent on large volumes of back-translated data. This paper has two main contributions: Firstly, we propose new data augmentation methods to extend limited noisy data and further improve NMT robustness to noise while keeping the models small. Secondly, we explore the effect of utilizing noise from external data in the form of speech transcripts and show that it could help robustness.
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