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SOURCE: SOURce-Conditional Elmo-style Model for Machine Translation Quality Estimation

机译:消息来源:用于机器翻译质量估计的消息来源Elmo风格模型

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Quality estimation (QE) of machine translation (MT) systems is a task of growing importance. It reduces the cost of post-editing, allowing machine-translated text to be used in formal occasions. In this work, we describe our submission system in WMT 2019 sentence-level QE task. We mainly explore the utilization of pre-trained translation models in QE and adopt a bi-directional translation-like strategy. The strategy is similar to ELMo, but additionally conditions on source sentences. Experiments on WMT QE dataset show that our strategy, which makes the pre-training slightly harder, can bring improvements for QE. In WMT-2019 QE task, our system ranked in the second place on En-De NMT dataset and the third place on En-Ru NMT dataset.
机译:机器翻译(MT)系统的质量评估(QE)是一项日益重要的任务。它减少了后期编辑的成本,允许在正式场合使用机器翻译的文本。在这项工作中,我们在WMT 2019句子级QE任务中描述了我们的提交系统。我们主要探索在量化宽松中使用预训练的翻译模型,并采用类似双向翻译的策略。该策略类似于ELMo,但附加条件取决于源语句。在WMT QE数据集上进行的实验表明,我们的策略使预训练更加困难,可以为QE带来改进。在WMT-2019 QE任务中,我们的系统在En-De NMT数据集上排名第二,在En-Ru NMT数据集上排名第三。

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