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Combining Discrete Lexicon Probabilities with NMT for Low-Resource Mongolian-Chinese Translation

机译:结合离散词典概率与NMT进行资源贫乏的蒙汉翻译

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Mongolian-Chinese neural machine translation (NMT) models often make mistakes in translating low-frequency words. We propose a method to alleviate this problem by improve NMT models with discrete translation lexicons that efficiently encode these low-frequency words. We describe a method to calcu-late the lexicon probability of generating the next word in the translation candi-date by using the attention vector of the NMT model to select which source word lexical probabilities the model should focus on. The method use this probabil-ity as a bias to combine with the stand-ard NMT probability. Experiments show an improvement of 4.02 BLEU score. We apply this method to large-scale corpus and improve the BLEU score. In addition, we also propose a novel approach to combine discrete probabilistic lexicons obtained from large-scale Mongolian - Chinese bilin-gual parallel corpus into NMT of small-scale corpus and enhance the perfor-mance of the system effectively.
机译:蒙汉神经机器翻译(NMT)模型在翻译低频单词时经常会犯错误。我们提出了一种方法,通过使用有效编码这些低频单词的离散翻译词典改进NMT模型来缓解此问题。我们描述了一种方法,该方法通过使用NMT模型的注意力向量来选择模型应关注的源词词汇概率,从而计算出翻译候选单词中生成下一个词的词汇概率。该方法使用该概率作为偏差,与标准NMT概率结合。实验表明,BLEU得分提高了4.02。我们将此方法应用于大型语料库,并提高了BLEU评分。此外,我们还提出了一种新颖的方法,将从大型蒙古语-汉语Bilin-gual并行语料库中获得的离散概率词典合并到小语料库的NMT中,并有效地提高了系统的性能。

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