A decade of learning analytics: Structural topic modeling based bibliometric analysis

被引:0
|
作者
Xieling Chen
Di Zou
Haoran Xie
机构
[1] The Education University of Hong Kong,Department of Mathematics and Information Technology
[2] Hong Kong SAR,Department of English Language Education
[3] The Education University of Hong Kong,Department of Computing and Decision Sciences
[4] Hong Kong SAR,undefined
[5] Lingnan University,undefined
[6] Hong Kong SAR,undefined
来源
关键词
Learning analytics; Research topics; Topic evolution; Structural topic modeling; Social network analysis;
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中图分类号
学科分类号
摘要
Learning analytics (LA) has become an increasingly active field focusing on leveraging learning process data to understand and improve teaching and learning. With the explosive growth in the number of studies concerning LA, it is significant to investigate its research status and trends, particularly the thematic structure. Based on 3900 LA articles published during the past decade, this study explores answers to questions such as “what research topics were the LA community interested in?” and “how did such research topics evolve?” by adopting structural topic modeling and bibliometrics. Major publication sources, countries/regions, institutions, and scientific collaborations were examined and visualized. Based on the analyses, we present suggestions for future LA research and discussions about important topics in the field. It is worth highlighting LA combining various innovative technologies (e.g., visual dashboards, neural networks, multimodal technologies, and open learner models) to support classroom orchestration, personalized recommendation/feedback, self-regulated learning in flipped classrooms, interaction in game-based and social learning. This work is useful in providing an overview of LA research, revealing the trends in LA practices, and suggesting future research directions.
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页码:10517 / 10561
页数:44
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