注意机制和跳码嵌入短语

Q2 Arts and Humanities
P. Krimpas, C. Valavani
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引用次数: 0

摘要

本文探讨了法律文本翻译中常见的翻译错误。特别地,它侧重于如何德语文本包含法律术语被翻译成现代希腊语谷歌翻译机器。我们的案例研究是在谷歌的帮助下将德意志联邦共和国宪法的原始(德语)版本翻译成现代希腊语。提出了一种基于出现频率的短语提取训练方法,该方法通过Skip-gram算法,然后集成到Vaswani等人(2017)提出的自注意机制中,以最大限度地减少人力,并有助于开发多词法律术语和特殊短语的强大机器翻译系统。这种神经机器翻译方法旨在从大型语料库中开发矢量化短语并对其进行处理以进行翻译。研究方向是增加域内训练数据集,为法律概念(领域特定特征)提供更多信息,丰富向量维度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention mechanism and skip-gram embedded phrases
This article examines common translation errors that occur in the translation of legal texts. In particular, it focuses on how German texts containing legal terminology are rendered into Modern Greek by the Google translation machine. Our case study is the Google-assisted translation of the original (German) version of the Constitution of the Federal Republic of Germany into Modern Greek. A training method is proposed for phrase extraction based on the occurrence frequency, which goes through the Skip-gram algorithm to be then integrated into the Self Attention Mechanism proposed by Vaswani et al. (2017) in order to minimise human effort and contribute to the development of a robust machine translation system for multi-word legal terms and special phrases. This Neural Machine Translation approach aims at developing vectorised phrases from large corpora and process them for translation. The research direction is to increase the in-domain training data set and enrich the vector dimension with more information for legal concepts (domain specific features).
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来源期刊
Comparative Legilinguistics
Comparative Legilinguistics Arts and Humanities-Language and Linguistics
CiteScore
1.00
自引率
0.00%
发文量
12
审稿时长
18 weeks
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