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A neural reordering model based on phrasal dependency tree for statistical machine translation

机译:基于短语相关树的神经机器重新排序模型

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摘要

Machine translation is an important field of research and development. Word reordering is one of the main problems in machine translation. It is an important factor of quality and efficiency of machine translations and becomes more difficult when it deals with structurally divergent language pairs. To overcome this problem, we introduce a neural reordering model, using phrasal dependency trees which depict dependency relations among contiguous non-syntactic phrases. The model makes the use of reordering rules, which are automatically learned by a probabilistic neural network classifier from a reordered phrasal dependency tree bank. The proposed model combines the power of the lexical reordering and syntactic pre-ordering models by performing long-distance reorderings. The proposed reordering model is integrated into a standard phrase-based statistical machine translation system to translate input sentences. Our method is evaluated on syntactically divergent language-pairs, English - Persian and English - German using WMT07 benchmark. The results illustrate the superiority of the proposed method in terms of BLEU, TER and LRscore on both translation tasks. On average the proposed method retrieves a significant impact on precision and recall values respect to the hierarchical, lexicalized and distortion reordering models.
机译:机器翻译是研究和开发的重要领域。单词重新排序是机器翻译中的主要问题之一。这是机器翻译质量和效率的重要因素,在处理结构上不同的语言对时会变得更加困难。为了克服这个问题,我们引入了一种神经重排模型,它使用短语依赖树来描述连续的非句法短语之间的依赖关系。该模型利用了重新排序规则,该规则由概率神经网络分类器从重新排序的短语依赖树库中自动学习。所提出的模型通过执行长距离重排序,将词汇重排序和句法预排序模型的功能结合在一起。所提出的重新排序模型已集成到基于标准短语的统计机器翻译系统中,以翻译输入句子。我们使用WMT07基准对在语法上不同的语言对(英语->波斯语和英语->德语)进行评估。结果表明,该方法在两种翻译任务的BLEU,TER和LRscore方面均具有优势。平均而言,相对于分层,词汇化和失真重排序模型,所提出的方法对精度和召回值具有重大影响。

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