Transfer Learning in Natural Language Processing (NLP)

IF 0.3 4区 材料科学 Q4 MATERIALS SCIENCE, CERAMICS
Jasmin Bharadiya
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 Methodology: The research design employed in this study involves a comprehensive review of existing literature on transfer learning in radio frequency machine learning. The researchers collected relevant papers from reputable sources and analyzed them to identify patterns, trends, and insights. The method of data collection primarily relied on examining and synthesizing existing literature. Data analysis involved identifying key findings and developing a customized taxonomy for radio frequency applications.
 Findings: The study's findings highlight the limited utilization of transfer learning techniques in radio frequency machine learning. While transfer learning has shown significant performance improvements in computer vision and natural language processing, its potential in the wireless communications domain has yet to be fully explored. The customized taxonomy proposed in this study provides a consistent framework for analyzing and comparing existing and future efforts in this field.
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引用次数: 0

Abstract

Purpose: The purpose of this study is to address the limited use of transfer learning techniques in radio frequency machine learning and to propose a customized taxonomy for radio frequency applications. The aim is to enable performance gains, improved generalization, and cost-effective training data solutions in this specific domain. Methodology: The research design employed in this study involves a comprehensive review of existing literature on transfer learning in radio frequency machine learning. The researchers collected relevant papers from reputable sources and analyzed them to identify patterns, trends, and insights. The method of data collection primarily relied on examining and synthesizing existing literature. Data analysis involved identifying key findings and developing a customized taxonomy for radio frequency applications. Findings: The study's findings highlight the limited utilization of transfer learning techniques in radio frequency machine learning. While transfer learning has shown significant performance improvements in computer vision and natural language processing, its potential in the wireless communications domain has yet to be fully explored. The customized taxonomy proposed in this study provides a consistent framework for analyzing and comparing existing and future efforts in this field. Recommendations: Based on the findings, the study recommends further research and experimentation to explore the potential of transfer learning techniques in radio frequency machine learning. This includes investigating performance gains, improving generalization capabilities, and addressing concerns related to training data costs. Additionally, collaborations between researchers and practitioners in the field are encouraged to facilitate knowledge exchange and foster innovation. Practice: To practitioners in the field of radio frequency machine learning, this study emphasizes the potential benefits of incorporating transfer learning techniques. It encourages practitioners to explore the application of transfer learning in their specific domain, leveraging prior knowledge to enhance performance and address training data challenges. It also highlights the importance of staying informed about the latest developments and collaborating with experts in the field. Policy: To policy makers, the study underscores the need for supportive policies that promote research and development in radio frequency machine learning. It recommends creating an environment that fosters innovation, encourages collaborations between academia and industry, and provides resources and incentives for further exploration of transfer learning techniques. Policy makers should consider the potential impact of transfer learning on the wireless communications industry and support initiatives that enhance its adoption and implementation.
自然语言处理中的迁移学习
目的:本研究的目的是解决迁移学习技术在射频机器学习中的有限使用,并为射频应用提出一个定制的分类。目标是在这个特定领域实现性能提升、改进泛化和经济有效的训练数据解决方案。 方法:本研究采用的研究设计包括对射频机器学习中迁移学习的现有文献进行全面回顾。研究人员从有信誉的来源收集相关论文,并对其进行分析,以确定模式、趋势和见解。资料收集的方法主要依靠对现有文献的查阅和综合。数据分析包括确定关键发现和开发射频应用的定制分类法。 研究结果:研究结果强调了迁移学习技术在射频机器学习中的有限应用。虽然迁移学习在计算机视觉和自然语言处理方面表现出显著的性能改进,但其在无线通信领域的潜力尚未得到充分探索。本研究提出的自定义分类法为分析和比较该领域现有和未来的工作提供了一致的框架。 建议:基于研究结果,该研究建议进一步研究和实验,以探索射频机器学习中迁移学习技术的潜力。这包括调查性能增益,改进泛化能力,以及处理与训练数据成本相关的问题。此外,鼓励研究人员和实践者之间的合作,以促进知识交流和促进创新。实践:对于射频机器学习领域的从业者,本研究强调了结合迁移学习技术的潜在好处。它鼓励从业者探索迁移学习在其特定领域的应用,利用先前的知识来提高性能并解决训练数据的挑战。它还强调了了解最新发展并与该领域专家合作的重要性。政策:对于政策制定者来说,该研究强调了促进射频机器学习研究和开发的支持性政策的必要性。它建议创造一个促进创新的环境,鼓励学术界和工业界之间的合作,并为进一步探索迁移学习技术提供资源和激励。政策制定者应考虑迁移学习对无线通信行业的潜在影响,并支持加强其采用和实施的举措。
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
0.30
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The Journal of the Society of Glass Technology was published between 1917 and 1959. There were four or six issues per year depending on economic circumstances of the Society and the country. Each issue contains Proceedings, Transactions, Abstracts, News and Reviews, and Advertisements, all thesesections were numbered separately. The bound volumes collected these pages into separate sections, dropping the adverts. There is a list of Council members and Officers of the Society and earlier volumes also had lists of personal and company members. JSGT was divided into Part A Glass Technology and Part B Physics and Chemistry of Glasses in 1960.
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