基于神经的翻译系统中的超参数优化:一个案例研究

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal on Smart Sensing and Intelligent Systems Pub Date : 2023-01-01 DOI:10.2478/ijssis-2023-0010
Goutam Datta, Nisheeth Joshi, Kusum Gupta
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引用次数: 0

摘要

机器翻译(MT)是自然语言处理(NLP)中的一个重要用例,它将源语言自动转换为目标语言。现代智能系统或人工智能(AI)使用机器学习方法,机器通过使用数据集获得学习能力。目前,在机器翻译领域,神经机器翻译(NMT)系统几乎取代了统计机器翻译(SMT)系统。NMT系统在其实现中使用深度学习框架。为了在NMT模型的训练过程中达到更高的精度,需要进行大量的超参数调谐。本文强调了超参数整定在各种机器学习算法中的重要性。并以低资源英语-孟加拉语对为例,设计了一套NMT系统进行了内部实验,分析了各种超参数优化的意义,并用自动度量BLEU对其性能进行了评价。随机抽取的第一个、第二个和第三个测试句子的BLEU得分分别为4.1、3.2和3.01。
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Hyper-parameter optimization in neural-based translation systems: A case study
Abstract Machine translation (MT) is an important use case in natural language processing (NLP) that converts a source language to a target language automatically. Modern intelligent system or artificial intelligence (AI) uses a machine learning approach and the machine has acquired learning ability using datasets. Nowadays, in the MT domain, the neural machine translation (NMT) system has almost replaced the statistical machine translation (SMT) system. The NMT systems use a deep learning framework in their implementation. To achieve higher accuracy during the training of the NMT model, extensive hyper-parameter tuning is required. The paper highlights the significance of hyper-parameter tuning in various machine learning algorithms. And as a case study, in-house experimentation was conducted on a low-resource English–Bangla language pair by designing an NMT system and the significance of various hyper-parameter optimizations was analyzed while evaluating its performance with an automatic metric BLEU. The BLEU scores obtained for the first, second, and third randomly picked test sentences are 4.1, 3.2, and 3.01, respectively.
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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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