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Decoding Optimization for Chinese-English Machine Translation via a Dependent Syntax Language Model

机译:依存句法模型对汉英机器翻译的解码优化

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Decoding is a core process of the statistical machine translation, and determines the final results of it. In this paper, a decoding optimization for Chinese-English SMT with a dependent syntax language model was proposed, in order to improve the performance of the decoder in Chinese-English statistical machine translation. The data set was firstly trained in a dependent language model, and then calculated scores of NBEST list from decoding with the model. According to adding the original score of NBEST list from the decoder, the NBEST list of machine translation was reordered. The experimental results show that this approach can optimize the decoder results, and to some extent, improve the translation quality of the machine translation system.
机译:解码是统计机器翻译的核心过程,并确定其最终结果。为了提高解码器在汉英统计机器翻译中的性能,本文提出了一种基于从属语法语言模型的汉英SMT解码优化方法。首先在相关语言模型中训练数据集,然后通过使用该模型进行解码来计算NBEST列表的分数。通过添加来自解码器的NBEST列表的原始得分,对NBEST机器翻译列表进行了重新排序。实验结果表明,该方法可以优化解码器的结果,并在一定程度上提高机器翻译系统的翻译质量。

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