The Impact of Social Media in Learning and Teaching: A
Bibliometric-based Citation Analysis
- URL: http://arxiv.org/abs/2209.11284v1
- Date: Thu, 22 Sep 2022 19:32:31 GMT
- Title: The Impact of Social Media in Learning and Teaching: A
Bibliometric-based Citation Analysis
- Authors: Abdul Shaikh, Saqib Ali and Ramla Al-Maamari
- Abstract summary: The study explored the overall theoretical foundation of social media research involving in learning and studying.
International Journal of Management Education is the leading journal in social media in learning and teaching research.
- Score: 0.4297070083645049
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents the results of a systematic review of the literature on
the impact of social media in learning and teaching through bibliometric based
Citation analysis. The objective of the review was to map the evolution of the
current literature and identify the leading sources of knowledge in terms of
the most influential journals, authors, and articles. From a total of 50 top
most relevant articles selected from the Scopus database, a detailed citation
analysis was conducted. The study explored the overall theoretical foundation
of social media research involving in learning and studying and identified the
leading sources of knowledge in terms of and papers and revealed research
trends over the last four years by citation analysis. The analysis of citation
data showed that International Journal of Management Education is the leading
journal in social media in learning and teaching research. Author Abdullah Z
was found to be the leading author in this field in terms of a total number of
publications, total citations, and h index, while the most cited article was
authored by Baaran S. and by Bapitha L. The contribution of this study is to
clearly outline the current state of knowledge regarding social media in
learning and teaching services in the literature.
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