由最小删减引起的罕见但严重的神经机器翻译错误:中英文的实证研究

Ruikang Shi, Alvin Grissom II, Duc Minh Trinh
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引用次数: 1

摘要

本文利用基于字符的模型研究了在英汉和汉英领域内神经机器翻译中,通过最小化源文本的删除来诱发罕见但严重的错误。通过删除一个字符,我们可以引起严重的翻译错误。我们对这些错误进行分类,并比较删除单个字符和单个单词的结果。我们还研究了训练数据大小对由这些最小扰动引起的病理病例的数量和类型的影响,发现了显著的变化。我们发现,删除一个单词比删除一个字符对整体翻译分数的影响更大,但删除字符时更容易出现某些错误,语言方向也会影响效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rare but Severe Neural Machine Translation Errors Induced by Minimal Deletion: An Empirical Study on Chinese and English
We examine the inducement of rare but severe errors in English-Chinese and Chinese-English in-domain neural machine translation by minimal deletion of source text with character-based models. By deleting a single character, we can induce severe translation errors. We categorize these errors and compare the results of deleting single characters and single words. We also examine the effect of training data size on the number and types of pathological cases induced by these minimal perturbations, finding significant variation. We find that deleting a word hurts overall translation score more than deleting a character, but certain errors are more likely to occur when deleting characters, with language direction also influencing the effect.
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