A Study of Neural Machine Translation from Chinese to Urdu

Zeeshan Khan
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引用次数: 5

Abstract

Machine Translation (MT) is used for giving a translation from a source language to a target language. Machine translation simply translates text or speech from one language to another language, but this process is not sufficient to give the perfect translation of a text due to the requirement of identification of whole expressions and their direct counterparts. Neural Machine Translation (NMT) is one of the most standard machine translation methods, which has made great progress in the recent years especially in non-universal languages. However, local language translation software for other foreign languages is limited and needs improving. In this paper, the Chinese language is translated to the Urdu language with the help of Open Neural Machine Translation (OpenNMT) in Deep Learning. Firstly, a Chineseto Urdu language sentences datasets were established and supported with Seven million sentences. After that, these datasets were trained by using the Open Neural Machine Translation (OpenNMT) method. At the final stage, the translation was compared to the desired translation with the help of the Bleu Score Method.
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神经机器翻译汉译乌研究
机器翻译(MT)用于提供从源语言到目标语言的翻译。机器翻译只是将文本或语音从一种语言翻译成另一种语言,但由于需要识别整个表达及其直接对应物,这一过程不足以实现文本的完美翻译。神经机器翻译(NMT)是最标准的机器翻译方法之一,近年来在非通用语言领域取得了很大的进展。然而,其他外语的本地语言翻译软件是有限的,需要改进。本文借助深度学习中的开放式神经机器翻译(OpenNMT),将汉语翻译成Urdu语言。首先,建立了汉语-乌尔都语句子数据集,并支持了700万个句子。然后,使用开放式神经机器翻译(OpenNMT)方法对这些数据集进行训练。在最后阶段,借助布鲁评分法将译文与期望的译文进行比较。
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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CiteScore
0.40
自引率
0.00%
发文量
25
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