Performance Comparison of Statistical vs. Neural-Based Translation System on Low-Resource Languages

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Goutam Datta, Nisheeth Joshi, Kusum Gupta
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引用次数: 0

Abstract

Abstract One of the important applications for which natural language processing (NLP) is used is the machine translation (MT) system, which automatically converts one natural language to another. It has witnessed various paradigm shifts since its inception. Statistical machine translation (SMT) has dominated MT research for decades. In the recent past, researchers have focused on developing MT systems based on artificial neural networks (ANN). In this paper, first, some important deep learning models that are mostly exploited in Neural Machine Translation (NMT) design are discussed. A systematic comparison was done between the performances of SMT and NMT concerning the English-to-Bangla and English-to-Hindi translation tasks. Most of the Indian scripts are morphologically rich, and the availability of a sufficient corpus is rare. We have presented and analyzed our work and a survey was conducted on other low-resource languages, and finally some useful conclusions have been drawn.
低资源语言统计与神经翻译系统的性能比较
自然语言处理(NLP)的一个重要应用是机器翻译(MT)系统,它可以自动地将一种自然语言转换为另一种自然语言。自成立以来,它见证了各种范式的转变。统计机器翻译(SMT)几十年来一直是机器翻译研究的主流。近年来,研究人员致力于开发基于人工神经网络(ANN)的机器翻译系统。本文首先讨论了神经机器翻译(NMT)设计中常用的一些重要的深度学习模型。系统比较了SMT和NMT在英语-孟加拉语和英语-印地语翻译任务中的表现。大多数的印度文字是丰富的形态,和可用的一个足够的语料库是罕见的。我们介绍和分析了我们的工作,并对其他低资源语言进行了调查,最后得出了一些有用的结论。
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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来源期刊
CiteScore
2.70
自引率
8.30%
发文量
15
审稿时长
8 weeks
期刊介绍: nternational Journal on Smart Sensing and Intelligent Systems (S2IS) is a rapid and high-quality international forum wherein academics, researchers and practitioners may publish their high-quality, original, and state-of-the-art papers describing theoretical aspects, system architectures, analysis and design techniques, and implementation experiences in intelligent sensing technologies. The journal publishes articles reporting substantive results on a wide range of smart sensing approaches applied to variety of domain problems, including but not limited to: Ambient Intelligence and Smart Environment Analysis, Evaluation, and Test of Smart Sensors Intelligent Management of Sensors Fundamentals of Smart Sensing Principles and Mechanisms Materials and its Applications for Smart Sensors Smart Sensing Applications, Hardware, Software, Systems, and Technologies Smart Sensors in Multidisciplinary Domains and Problems Smart Sensors in Science and Engineering Smart Sensors in Social Science and Humanity
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