CMS - Intelligent Machine Translation with Adaptation and AI

Ruhul Amin, Mounika Mandapuram
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引用次数: 8

Abstract

Machine translation, an emerging breakthrough, has changed translation. Dictionary-based machine translation, computer-aided translation, and neural machine translation with AI as its fundamental technology have progressed. However, NMT with AI has advanced machine translation. Many translation concerns still need to be solved. Language changes with context and dialect. Artificial intelligence will enable systems with adaptive algorithms to collaborate with humans to translate content more efficiently and well. The human translation should be revised, according to some. All in all, human progress fixes faults. Neural networks in machine translation ensure that adaptive frameworks can interpret like human translators. AI still needs help with language training and translation. Given the diversity of linguistic patterns and civilizations, they address clever machines; even with AI, handling human productivity seems unlikely. Machine translation is an important NLP topic that uses computers and adaptive systems to understand standard dialects. Neural machine translation (NMT) has become the standard in real-world MT frameworks. We begin this study with a broad assessment of NMT strategies and discuss architecture, decoding, and data analysis to improve content translation. We then summarize the most helpful expert resources and tools. We conclude with a discussion of future paths.
CMS -具有自适应和人工智能的智能机器翻译
机器翻译作为一种新兴的突破,已经改变了翻译。基于词典的机器翻译、计算机辅助翻译、以人工智能为基础的神经网络机器翻译等都有了长足的发展。然而,人工智能的NMT具有先进的机器翻译。许多翻译问题仍然需要解决。语言随上下文和方言而变化。人工智能将使具有自适应算法的系统能够与人类合作,更有效、更好地翻译内容。根据一些人的说法,人工翻译应该进行修改。总而言之,人类的进步会修复错误。机器翻译中的神经网络确保自适应框架可以像人工翻译一样进行翻译。人工智能在语言训练和翻译方面仍然需要帮助。考虑到语言模式和文明的多样性,它们针对的是智能机器;即使有了人工智能,处理人类的生产力似乎也不太可能。机器翻译是一个重要的NLP主题,它使用计算机和自适应系统来理解标准方言。神经机器翻译(NMT)已经成为现实世界机器翻译框架的标准。我们首先对NMT策略进行了广泛的评估,并讨论了架构、解码和数据分析,以改善内容翻译。然后我们总结最有用的专家资源和工具。最后,我们讨论了未来的道路。
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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