2014

Addressing the Rare Word Problem in Neural Machine Translation

T. Luong, Ilya Sutskever, Quoc V. Le, Oriol Vinyals, Wojciech Zaremba

citations

Cite Score

37

AI summary

This paper introduces a novel approach to address the rare word problem in neural machine translation by annotating training data with explicit alignment information, enabling the NMT system to emit a pointer to the corresponding word in the source sentence and achieving state-of-the-art results on the WMT'14 English to French translation task.

Main Contributions

  • Proposes a novel approach to address the rare word problem in neural machine translation.
  • Annotates the training corpus with explicit alignment information.
  • Enables the NMT system to emit, for each OOV word, a “pointer” to its corresponding word in the source sentence.
  • Introduces three annotation strategies that can easily be applied to any NMT system.
  • Achieves state-of-the-art results on the WMT’14 English to French translation task.

Abstract

Neural Machine Translation (NMT) is a new approach to machine translation that has shown promising results that are comparable to traditional approaches. A significant weakness in conventional NMT systems is their inability to correctly translate very rare words: end-to-end NMTs tend to have relatively small vocabularies with a single unk symbol that represents every possible out-of-vocabulary (OOV) word. In this paper, we propose and implement an effective technique to address this problem. We train an NMT system on data that is augmented by the output of a word alignment algorithm, allowing the NMT system to emit, for each OOV word in the target sentence, the position of its corresponding word in the source sentence. This information is later utilized in a post-processing step that translates every OOV word using a dictionary. Our experiments on the WMT’14 English to French translation task show that this method provides a substantial improvement of up to 2.8 BLEU points over an equivalent NMT system that does not use this technique. With 37.5 BLEU points, our NMT system is the first to surpass the best result achieved on a WMT’14 contest task.

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