终身学习中的科学生产力与合作网络:纵向文献计量分析(1963-2022 年)

IF 0.6 Q3 INFORMATION SCIENCE & LIBRARY SCIENCE Journal of Scientometric Research Pub Date : 2024-04-15 DOI:10.5530/jscires.13.1.17
Kannan Thamizhiniyan, Kathirkamanathan Chellamani, Abdul Huq Jahitha Begum, Sheriff Naseema
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引用次数: 0

摘要

在后流行病时代,终身学习(LLL)成为专业发展的关键和所有学科的核心能力。即使在全球范围内,也缺乏以证据为基础的文献计量分析,尤其是关于 LLL 的文献计量分析。本研究通过研究从 Elsevier Scopus 数据库中检索到的数据,填补了这一空白。本研究采用系统检索法,从 790 种期刊中检索到 1963 年至 2022 年期间的 1806 篇出版物。数据分析使用了 R 软件包 Biblioshiny,包括生产率/绩效分析、引文分析和社会结构协作网络分析。研究结果表明,随着时间的推移,论文数量显著增加。大量研究发表于 2022 年。总体而言,85 个国家为 LLL 做出了贡献。其中,美国的论文数量最多,达到 787 篇;英国的论文被引用次数达到 4731 次。学习是LLL的热门话题,技能培养是LLL的新兴主题。研究结果将有助于相关方确定需要更多关注和资金的、尚未开发的研究领域。本研究不仅概述了当前的科学发展,而且还展望了 LLL 研究的潜在前景。本研究还将作为 LLL 研究人员和教师的资源。本研究还概述了这一知识领域未来的研究方向。
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Scientific Productivity and Collaboration Networks in Lifelong Learning: A Longitudinal Bibliometric Analysis (1963-2022)
In the post-pandemic era, lifelong learning (LLL) emerged as the key to professional development and the core competency of all disciplines. Even globally, there is a dearth of evidence based bibliometric analysis, notably on LLL. This study addresses this gap by examining the data retrieved from the Elsevier Scopus database. A systematic search method was adopted to retrieve 1806 publications from 790 journals from 1963 to 2022. The R package, Biblioshiny, was used for data analysis, including productivity/performance analysis, citation analysis, and collaboration network analysis of social structure. The findings showed that the number of publications has significantly increased over time. A large number of studies were published in 2022. Overall, 85 countries contributed to LLL. Among them, the United States was the most productive with 787 publications, and the United Kingdom was the country with 4731 citations. Learning was the trending topic, and skill development was an emerging theme in LLL. The results will aid the stakeholders in identifying largely unexplored areas of research that need more attention and funding. This study outlines not only the current scientific developments but also the potential future of LLL research. This study will also be used as a resource for researchers and teachers in LLL. Future research directions in this area of knowledge are also outlined.
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来源期刊
Journal of Scientometric Research
Journal of Scientometric Research INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
1.30
自引率
12.50%
发文量
52
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