Improvement of Machine Translation Evaluation by Simple Linguistically Motivated Features

被引:0
|
作者
Mu-Yun Yang
Shu-Qi Sun
Jun-Guo Zhu
Sheng Li
Tie-Jun Zhao
Xiao-Ning Zhu
机构
[1] Harbin Institute of Technology,School of Computer Science and Technology
关键词
machine translation; automatic evaluation; regression SVM (supporting vector machine); linguistic feature;
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学科分类号
摘要
Adopting the regression SVM framework, this paper proposes a linguistically motivated feature engineering strategy to develop an MT evaluation metric with a better correlation with human assessments. In contrast to current practices of “greedy” combination of all available features, six features are suggested according to the human intuition for translation quality. Then the contribution of linguistic features is examined and analyzed via a hill-climbing strategy. Experiments indicate that, compared to either the SVM-ranking model or the previous attempts on exhaustive linguistic features, the regression SVM model with six linguistic information based features generalizes across different datasets better, and augmenting these linguistic features with proper non-linguistic metrics can achieve additional improvements.
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页码:57 / 67
页数:10
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