Character Decomposition for Japanese-Chinese Character-Level Neural Machine Translation

Jinyi Zhang, Tadahiro Matsumoto
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引用次数: 2

Abstract

After years of development, Neural Machine Translation (NMT) has produced richer translation results than ever over various language pairs, becoming a new machine translation model with great potential. For the NMT model, it can only translate words/characters contained in the training data. One problem on NMT is handling of the low-frequency words/characters in the training data. In this paper, we propose a method for removing characters whose frequencies of appearance are less than a given minimum threshold by decomposing such characters into their components and/or pseudo-characters, using the Chinese character decomposition table we made. Experiments of Japanese-to-Chinese and Chinese-to-Japanese NMT with ASPEC-JC (Asian Scientific Paper Excerpt Corpus, Japanese-Chinese) corpus show that the BLEU scores, the training time and the number of parameters are varied with the number of the given minimum thresholds of decomposed characters.
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日中字符级神经机器翻译的字符分解
经过多年的发展,神经机器翻译(NMT)在各种语言对上的翻译结果比以往更加丰富,成为一种具有巨大潜力的新型机器翻译模型。对于NMT模型,它只能翻译训练数据中包含的单词/字符。NMT中的一个问题是训练数据中低频词/字符的处理。本文提出了一种去除出现频率小于给定最小阈值的汉字的方法,该方法使用我们制作的汉字分解表,将这些汉字分解为其组成和/或伪字符。用ASPEC-JC (Asian Scientific Paper摘录Corpus, Japanese-Chinese)语料库对日文-汉文和中文-日文NMT进行的实验表明,BLEU分数、训练时间和参数数量随给定的分解字符最小阈值的个数而变化。
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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