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Modeling Target-Side Inflection in Neural Machine Translation

机译:在神经机器翻译中对目标侧变形进行建模

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摘要

NMT systems have problems with large vocabulary sizes. Byte-pair encoding (BPE) is a popular approach to solving this problem, but while BPE allows the system to generate any target-side word, it does not enable effective generalization over the rich vocabulary in morphologically rich languages with strong inflectional phenomena. We introduce a simple approach to overcome this problem by training a system to produce the lemma of a word and its morphologically rich POS tag, which is then followed by a deterministic generation step. We apply this strategy for English-Czech and English-German translation scenarios, obtaining improvements in both settings. We furthermore show that the improvement is not due to only adding explicit morphological information.
机译:NMT系统的词汇量很大。字节对编码(BPE)是解决此问题的一种流行方法,但是虽然BPE允许系统生成任何目标方单词,但它无法在具有强烈拐点现象的形态丰富的语言中对丰富的词汇进行有效的概括。我们引入一种简单的方法来解决此问题,方法是训练一个系统以产生单词的引理及其形态丰富的POS标签,然后再执行确定性生成步骤。我们将此策略应用于英语-捷克语和英语-德语翻译方案,在这两种设置上均得到了改进。我们进一步表明,这种改进并不是仅添加显式的形态学信息。

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