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Topic-based term translation models for statistical machine translation

机译:用于统计机器翻译的基于主题的术语翻译模型

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摘要

Term translation is of great importance for machine translation. In this article, we investigate three issues of term translation in the context of statistical machine translation and propose three corresponding models: (a) a term translation disambiguation model which selects desirable translations for terms in the source language with domain information, (b) a term translation consistency model that encourages consistent translations for terms with a high strength of translation consistency throughout a document, and (c) a term unithood model that rewards translation hypotheses where source terms are translated into target strings as a whole unit. We integrate the three models into hierarchical phrase-based SMT and evaluate their effectiveness on NIST Chinese-English translation with large-scale training data. Experiment results show that all three models can achieve substantial improvements over the baseline. Our analyses also suggest that the proposed models are capable of improving term translation.
机译:术语翻译对于机器翻译非常重要。在本文中,我们研究了统计机器翻译环境中的术语翻译三个问题,并提出了三种相应的模型:(a)术语翻译歧义消除模型,该模型为具有域信息的源语言中的术语选择所需的翻译,(b)a术语翻译一致性模型,鼓励在整个文档中具有高度翻译一致性的术语进行一致的翻译,以及(c)术语统一性模型,该模型奖励将源术语翻译成目标字符串整体的翻译假设。我们将这三个模型集成到基于层次短语的SMT中,并使用大规模培训数据评估它们在NIST汉英翻译中的有效性。实验结果表明,所有三个模型都可以在基线之上取得实质性的改进。我们的分析还表明,提出的模型能够改善术语翻译。

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