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Discriminative reranking for SMT using various global features

机译:使用各种全局功能对SMT进行歧视性重新排名

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In this paper, we propose to use various global features for discriminative reranking in an SMT framework. We employ an online large-margin based training algorithm for the structural output support vector machines based on the margin infused relaxed algorithm. Besides the standard features used, such as decoder's scores, source and target sentences, alignments and part-of-speech tags, we include sentence type probabilities, posterior probabilities and back translation features for reranking. These features have been proved to be useful in other approaches in statistical machine translation but it is the first attempt to apply them in reranking. Our experimental results using 160K BTEC corpus show an improvement of 1–4 BLEU percentage points on Japanese/Chinese to English translation.
机译:在本文中,我们建议在SMT框架中使用各种全局功能进行歧视性排名。我们采用基于大边距的在线训练算法,用于基于边距注入松弛算法的结构输出支持向量机。除了使用的标准功能(例如解码器的分数,源和目标句子,对齐方式和词性标签)外,我们还包括句子类型概率,后验概率和用于重新排序的后向翻译功能。这些功能已被证明在统计机器翻译的其他方法中很有用,但这是将它们应用于重新排名的首次尝试。我们使用160K BTEC语料库的实验结果显示,日语/中文到英语翻译的翻译量提高了1-4个BLEU百分点。

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