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A Topic Similarity Model for Hierarchical Phrase-based Translation

机译:基于层次短语翻译的主题相似度模型

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Previous work using topic model for statistical machine translation (SMT) explore topic information at the word level. However, SMT has been advanced from word-based paradigm to phrase/rule-based paradigm. We therefore propose a topic similarity model to exploit topic information at the synchronous rule level for hierarchical phrase-based translation. We associate each synchronous rule with a topic distribution, and select desirable rules according to the similarity of their topic distributions with given documents. We show that our model significantly improves the translation performance over the baseline on NIST Chinese-to-English translation experiments. Our model also achieves a better performance and a faster speed than previous approaches that work at the word level.
机译:以前使用主题模型进行统计机器翻译(SMT)的工作是在单词级别上探讨主题信息。但是,SMT已从基于单词的范例发展到基于短语/规则的范例。因此,我们提出了一个主题相似度模型,以便在同步规则级别利用主题信息进行基于层次短语的翻译。我们将每个同步规则与主题分布相关联,并根据其主题分布与给定文档的相似性选择所需的规则。我们证明,在NIST汉英翻译实验中,我们的模型大大提高了翻译性能。与以前在单词级别工作的方法相比,我们的模型还实现了更好的性能和更快的速度。

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