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Neural Lattice Search for Domain Adaptation in Machine Translation

机译:神经晶格在机器翻译中搜索域适应

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Domain adaptation is a major challenge for neural machine translation (NMT). Given unknown words or new domains, NMT systems tend to generate fluent translations at the expense of adequacy. We present a stack-based lattice search algorithm for NMT and show that constraining its search space with lattices generated by phrase-based machine translation (PBMT) improves robustness. We report consistent BLEU score gains across four diverse domain adaptation tasks involving medical, IT, Koran, or subtitles texts.
机译:域适应是神经机翻译(NMT)的主要挑战。鉴于未知的单词或新域名,NMT系统倾向于以牺牲足够的牺牲品产生流利的翻译。我们介绍了一种基于堆栈的晶格搜索算法,用于NMT,并显示使用由基于短语的机器翻译(PBMT)生成的格子的搜索空间提高了鲁棒性。我们在涉及医疗,koran或字幕文本的四个不同域适应任务中报告一致的Bleu评分增益。

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