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Guiding Neural Machine Translation Decoding with External Knowledge

机译:用外部知识指导神经机器翻译解码

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Differently from the phrase-based paradigm, neural machine translation (NMT) operates on word and sentence representations in a continuous space. This makes the decoding process not only more difficult to interpret, but also harder to influence with external knowledge. For the latter problem, effective solutions like the XML-markup used by phrase-based models to inject fixed translation options as constraints at decoding time are not yet available. We propose a "guide" mechanism that enhances an existing NMT decoder with the ability to prioritize and adequately handle translation options presented in the form of XML annotations of source words. Positive results obtained in two different translation tasks indicate the effectiveness of our approach.
机译:与基于短语的范例不同,神经机器翻译(NMT)对连续空间中的单词和句子表示进行操作。这使得解码过程不仅更难以解释,而且更难以受到外部知识的影响。对于后一个问题,还没有有效的解决方案,例如基于短语的模型使用XML标记来注入固定翻译选项作为解码时的约束。我们提出了一种“指南”机制,该机制可以增强现有NMT解码器的功能,使其能够优先处理和适当处理以源词的XML注释形式提供的翻译选项。在两个不同的翻译任务中获得的积极结果表明了我们方法的有效性。

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