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Target-Centric Features for Translation Quality Estimation

机译:针对翻译质量估计的目标中心特征

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We describe the DCU-MIXED and DCU-SVR submissions to the WMT-14 Quality Estimation task 1.1, predicting sentence-level perceived post-editing effort. Feature design focuses on target-side features as we hypothesise that the source side has little effect on the quality of human translations, which are included in task 1.1 of this year's WMT Quality Estimation shared task. We experiment with features of the QuEst framework, features of our past work, and three novel feature sets. Despite these efforts, our two systems perform poorly in the competition. Follow up experiments indicate that the poor performance is due to improperly optimised parameters.
机译:我们将DCU混合和DCU-SVR提交到WMT-14质量估计任务1.1,预测句子级感知的后编辑努力。特色设计侧重于目标方特征,因为我们假设源侧对人类翻译质量影响不大,这些产品的效果效果纳入今年WMT质量估算共享任务的任务1.1中。我们试验任务框架的特点,我们过去的工作的功能和三个新颖的功能集。尽管有这些努力,我们的两个系统在竞争中表现不佳。随访实验表明,性能不佳是由于不正确的参数。

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