A Parallel Corpora for bi-directional Neural Machine Translation for Low Resourced Ethiopian Languages

A. Tonja, Michael Melese Woldeyohannis, Mesay Gemeda Yigezu
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引用次数: 6

Abstract

In this paper, we described an effort towards the development of parallel corpora for English and Ethiopian Languages, such as Wolaita, Gamo, Gofa, and Dawuro neural machine translation. The corpus is collected from the religious domain and to check the usability of the collected parallel corpora a bi-directional Neural Machine Translation experiments were conducted. The neural machine translation shows good results as a baseline experiment of BLEU score of 13.8 in Wolaita-English and 8.2 English-Wolaita machine translation. The Wolaita-English translation shows a better result than the other pairs of Ethiopian languages and the result of neural machine translation performs well when the amount of dataset increases, thus the amount of dataset has a great impact on the performance. Besides these, the morphological richness of Ethiopian language contributed to the low performance of neural machine translation when the Ethiopian language is used as the target language. Further, we are working on minimizing the effect of morphological richness through different morphological processing techniques in the translation of Ethiopian languages.
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低资源埃塞俄比亚语双向神经机器翻译的平行语料库
在本文中,我们描述了为英语和埃塞俄比亚语言开发平行语料库的努力,如Wolaita, Gamo, Gofa和Dawuro神经机器翻译。从宗教领域收集语料库,并对收集到的平行语料库进行双向神经机器翻译实验,验证其可用性。作为基线实验,神经机器翻译在Wolaita-English和English-Wolaita机器翻译中BLEU得分分别为13.8分和8.2分,取得了较好的效果。Wolaita-English翻译结果优于其他对埃塞俄比亚语,神经机器翻译的结果在数据量增加时表现良好,因此数据量对性能有很大影响。此外,埃塞俄比亚语的词法丰富是神经机器翻译在以埃塞俄比亚语为目的语时表现不佳的原因。此外,我们正在努力通过不同的形态学处理技术在埃塞俄比亚语言翻译中最大限度地减少形态学丰富度的影响。
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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