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UAlacant machine translation quality estimation at WMT 2018: a simple approach using phrase tables and feed-forward neural networks

机译:2018年WMT的UAlacant机器翻译质量估计:使用短语表和前馈神经网络的简单方法

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We describe the Universitat d'Alacant submissions to the word- and sentence-level machine translation (MT) quality estimation (QE) shared task at WMT 2018. Our approach to word-level MT QE builds on previous work to mark the words in the machine-translated sentence as OK or BAD, and is extended to determine if a word or sequence of words need to be inserted in the gap after each word. Our sentence-level submission simply uses the edit operations predicted by the word-level approach to approximate TER. The method presented ranked first in the sub-task of identifying insertions in gaps for three out of the six datasets, and second in the rest of them.
机译:我们将在2018年WMT上描述Universitat d'Alacant对词级和句子级机器翻译(MT)质量评估(QE)共享任务的意见书。机器翻译的句子,如OK或BAD,并扩展为确定是否需要在每个单词后的空格中插入一个单词或单词序列。我们的句子级提交仅使用词级方法预测的编辑操作来近似TER。提出的方法在识别六个数据集中的三个数据集的间隙插入的子任务中排名第一,在其余数据集中排名第二。

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