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摘要

会话文本的翻译,特别是面向任务的对话,是机器翻译技术的重要应用任务。然而,由于其固有的数据局限性、话语性、非正式性和个性等特点,至今尚未得到广泛的探讨。本文系统地研究了面向任务的对话翻译任务的高级模型,包括句子级、文档级和非自回归NMT模型。此外,我们还探索了现有的技术,如数据选择、向后/向前翻译、大批量学习、微调和领域自适应。为了缓解低资源问题,我们将四种不同的预训练模型中的一般知识转移到下游任务中。令人鼓舞的是,我们发现经过mbat预训练的最佳模型在WMT20英语-德语和IWSLT DIALOG汉英数据集上的SOTA性能分别达到了62.67和23.21 BLEU点
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An Empirical Study on Task-Oriented Dialogue Translation
Translating conversational text, in particular task-oriented dialogues, is an important application task for machine translation technology. However, it has so far not been extensively explored due to its inherent characteristics including data limitation, discourse, informality and personality. In this paper, we systematically investigate advanced models on the task-oriented dialogue translation task, including sentence-level, document-level and non-autoregressive NMT models. Be-sides, we explore existing techniques such as data selection, back/forward translation, larger batch learning, finetuning and domain adaptation. To alleviate low-resource problem, we transfer general knowledge from four different pre-training models to the downstream task. Encouragingly, we find that the best model with mBART pre-training pushes the SOTA performance on WMT20 English-German and IWSLT DIALOG Chinese-English datasets up to 62.67 and 23.21 BLEU points, respectively.1
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