基于跨语言预训练模式的英汉翻译质量评价算法研究

Ping Yang
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引用次数: 0

摘要

针对低资源语料库下翻译质量评价的不足,提出了一种跨句预训练模型。首先,我们提供了一种嵌入技术,通过参考注意力思维来自动调整单词的位置。然后,将跨层语言预训练模型引入到阅读效率测试中,解决了英语资源条件低导致的信息稀疏性问题。通过对句子向量的回归,完成了对翻译质量的机械评价。测试结果表明,该模型显著提高了英汉翻译质量评价的有效性。与CEstmodel相比,该算法的Pearson相关系数提高了0.35,Spielbman相关系数提高了0.15。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Research on English-Chinese Translation Quality Evaluation Agorithm Based on Cross-Language Pre-Training Mode
To overcome the shortcomings of the quality evaluation of translation in the low-resource corpus, a cross-sentence pre-training model is proposed for English-Chinese translation. First of all, we provide an embedding technology to automatically adjust the position of words by using attention thought for reference. Then, the cross-layer language pre-training model is introduced into the reading efficiency test to solve the information sparsity caused by the low resource conditions of English. By regressing the sentence vector, the mechanical evaluation of translation quality is completed. The test results show that this model significantly improves the effectiveness of the evaluation of the quality of English-Chinese translation. Compared with the CEstmodel, the Pearson correlation coefficient of this algorithm has increased by 0.35, and the Spielbman correlation coefficient has increased by 0.15.
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