首页> 外文会议>Annual meeting of the Association for Computational Linguistics >When a Good Translation is Wrong in Context: Context-Aware Machine Translation Improves on Deixis, Ellipsis, and Lexical Cohesion
【24h】

When a Good Translation is Wrong in Context: Context-Aware Machine Translation Improves on Deixis, Ellipsis, and Lexical Cohesion

机译:当上下文中的翻译质量错误时:上下文识别机器翻译在Deixis,省略号和词法衔接方面得到改善

获取原文

摘要

Though machine translation errors caused by the lack of context beyond one sentence have long been acknowledged, the development of context-aware NMT systems is hampered by several problems. Firstly, standard metrics are not sensitive to improvements in consistency in document-level translations. Secondly, previous work on context-aware NMT assumed that the sentence-aligned parallel data consisted of complete documents while in most practical scenarios such document-level data constitutes only a fraction of the available parallel data. To address the first issue, we perform a human study on an English-Russian subtitles dataset and identify deixis, ellipsis and lexical cohesion as three main sources of inconsistency. We then create test sets targeting these phenomena. To address the second shortcoming, we consider a set-up in which a much larger amount of sentence-level data is available compared to that aligned at the document level. We introduce a model that is suitable for this scenario and demonstrate major gains over a context-agnostic baseline on our new benchmarks without sacrificing performance as measured with BLEU.~1
机译:尽管人们早就认识到由于缺少一句话而缺乏上下文所导致的机器翻译错误,但是上下文感知的NMT系统的开发却受到一些问题的阻碍。首先,标准指标对文档级翻译的一致性提高不敏感。其次,先前关于上下文感知的NMT的工作假设句子对齐的并行数据由完整的文档组成,而在大多数实际情况下,此类文档级数据仅占可用并行数据的一小部分。为了解决第一个问题,我们对英语-俄罗斯字幕数据集进行了一项人文研究,并确定了象素,省略号和词汇衔接是不一致的三个主要来源。然后,我们针对这些现象创建测试集。为了解决第二个缺点,我们考虑一种设置,在该设置中,与在文档级别对齐的句子级别数据相比,可获得更多的句子级别数据。我们介绍了一种适合这种情况的模型,并在不牺牲使用BLEU测得的性能的前提下,在我们的新基准测试中证明了在与上下文无关的基准上的重大收获。〜1

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号