Improving character-level Japanese-Chinese neural machine translation with radicals as an additional input feature

Jinyi Zhang, Tadahiro Matsumoto
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引用次数: 12

Abstract

In recent years, Neural Machine Translation (NMT) has been proven to get impressive results. While some additional linguistic features of input words improve wordlevel NMT, any additional character features have not been used to improve character-level NMT so far. In this paper, we show that the radicals of Chinese characters (or kanji), as a character feature information, can be easily provide further improvements in the character-level NMT. In experiments on WAT2016 Japanese-Chinese scientific paper excerpt corpus (ASPEC-JP), we find that the proposed method improves the translation quality according to two aspects: perplexity and BLEU. The character-level NMT with the radical input feature's model got a state-of-the-art result of 40.61 BLEU points in the test set, which is an improvement of about 8.6 BLEU points over the best system on the WAT2016 Japanese-to-Chinese translation subtask with ASPEC-JP. The improvements over the character-level NMT with no additional input feature are up to about 1.5 and 1.4 BLEU points in the development-test set and the test set of the corpus, respectively.
用词根作为附加输入特征改进字符级日中神经机器翻译
近年来,神经机器翻译(NMT)已被证明取得了令人印象深刻的成果。虽然输入词的一些额外的语言特征可以改进词级NMT,但迄今为止还没有使用任何额外的字符特征来改进字符级NMT。在本文中,我们证明了汉字(或汉字)的词根作为一种字符特征信息,可以很容易地为字符级NMT提供进一步的改进。在WAT2016日中科技论文摘录语料库(ASPEC-JP)的实验中,我们发现该方法从困惑度和BLEU两个方面提高了翻译质量。具有radical输入特征模型的字符级NMT在测试集中获得了40.61 BLEU点的最先进结果,比使用asp - jp的WAT2016日中翻译子任务的最佳系统提高了约8.6 BLEU点。与没有额外输入特征的字符级NMT相比,在语料库的开发测试集和测试集上的改进分别高达1.5和1.4 BLEU点。
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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