阿拉伯文方言神经机器翻译的流水线与集成方法比较

Pamela Shapiro, Kevin Duh
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引用次数: 4

摘要

在翻译像阿拉伯语这样的二元语言时,可能会出现这样的情况:我们想翻译一篇文章,但不知道它是哪种方言。解决这一问题的传统方法是设计方言识别系统和特定方言的机器翻译系统。然而,在最近的神经机器翻译范式下,共享的多方言系统已成为一种自然的选择。本文探讨了在哪些条件下对阿拉伯语神经机器翻译进行方言识别比对所有方言使用通用系统更有利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Pipelined and Integrated Approaches to Dialectal Arabic Neural Machine Translation
When translating diglossic languages such as Arabic, situations may arise where we would like to translate a text but do not know which dialect it is. A traditional approach to this problem is to design dialect identification systems and dialect-specific machine translation systems. However, under the recent paradigm of neural machine translation, shared multi-dialectal systems have become a natural alternative. Here we explore under which conditions it is beneficial to perform dialect identification for Arabic neural machine translation versus using a general system for all dialects.
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