2011 - 2021年在线学习中的个性化学习:文献计量分析

Hoa-Huy Nguyen, V. A. Nguyen
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引用次数: 0

摘要

本文通过对Scopus数据库928篇论文的研究,运用文献计量学分析方法,分析了个性化学习的研究趋势。主要研究如下问题:(1)研究的发展规模、增长轨迹和地域分布;(2)个性化学习领域的优秀作者和作品;(三)本领域优秀的杂志、书籍;(4)这些文件中发现的关键主题;(5)个性化学习的主要方法/技术。研究结果表明,个性化学习是教育领域一个引人入胜的话题,近年来得到了广泛的关注。许多关于个性化学习的研究来自美国和中国等国家。我们的文献计量分析揭示了个性化学习研究的主题,如人工智能、学习方式和学习技术。该研究观察了学习者的认知方面,如知识水平、学习方式、偏好等。在大多数情况下,推荐的工具和方法结合了基于内容的过滤、协同过滤、本体论方法等。此外,未来的研究目标,困难和关注的问题,在我们的工作中通过检查几个个性化学习元素的趋势。
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Personalized Learning in the Online Learning from 2011 to 2021: A Bibliometric Analysis
This paper has analyzed research trends on personalized learning by bibliometric analysis method through a study of 928 articles from the Scopus database. The following issues are investigated: (1) Development scale, growth trajectory and geographical distribution of the research; (2) Outstanding authors and works on Personalized Learning; (3) Outstanding magazines and books on the topic; (4) Key themes found in these documents, and (5) Prominent methods/technologies used for personalized learning. Research results show that personalized learning is a fascinating topic in education and has been overgrown in recent years. Many researches on personalized learning comes from countries such as the United States and China. Our bibliometric analysis has revealed the main themes in the research works on Personalized Learning, such as artificial intelligence, learning style, and learning technology. The research has observed cognitive aspects of learners like knowledge level, learning style, preferences, etc. In most cases, the recommended tools and methods combined the content-based filtering, collaborative filtering, ontological approaches, etc. In addition, future research goals, difficulties, and concerns are highlighted in our work by examining the trends in several personalized learning elements.
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0.00%
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120
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