TY - JOUR
T1 - The use of learning analytics and educational data mining to analyze teachers’ teaching in online environments
T2 - a systematic literature review
AU - Chen, Mu Sheng
AU - Hsu, Ting Chia
AU - Tu, Yun Fang
N1 - Publisher Copyright:
© 2024 Informa UK Limited, trading as Taylor & Francis Group.
PY - 2024
Y1 - 2024
N2 - Learning analytics and educational data mining aim to enhance teaching and learning outcomes by utilizing data and analytical methods. Online learning systems provide a wealth of data that enable educators to understand students’ needs and offer appropriate support. This study used bibliometric analysis to examine the distribution of research subjects, educational stages, pedagogical approaches, machine learning algorithms, algorithm evaluation, and keywords in online learning from 2013 to 2022, encompassing the pre-pandemic, mid-pandemic, and post-pandemic periods. The findings indicated that the analyzed studies primarily focused on analyzing students’ experiences in online learning systems, while paying limited attention to teachers’ perspectives. Additionally, the majority of research concentrated on higher education, with insufficient attention given to pre-college education. Regarding pedagogical approaches in online learning environments, there was a notable absence of detailed descriptions of teaching processes, with greater emphasis placed on the interaction between students and online learning platforms. The study also examined the evolution of keywords across three periods: the pre-pandemic (2013–2018), the mid-pandemic (2019–2020), and the post-pandemic (2021–2022) periods. Finally, several recommendations for future research are provided.
AB - Learning analytics and educational data mining aim to enhance teaching and learning outcomes by utilizing data and analytical methods. Online learning systems provide a wealth of data that enable educators to understand students’ needs and offer appropriate support. This study used bibliometric analysis to examine the distribution of research subjects, educational stages, pedagogical approaches, machine learning algorithms, algorithm evaluation, and keywords in online learning from 2013 to 2022, encompassing the pre-pandemic, mid-pandemic, and post-pandemic periods. The findings indicated that the analyzed studies primarily focused on analyzing students’ experiences in online learning systems, while paying limited attention to teachers’ perspectives. Additionally, the majority of research concentrated on higher education, with insufficient attention given to pre-college education. Regarding pedagogical approaches in online learning environments, there was a notable absence of detailed descriptions of teaching processes, with greater emphasis placed on the interaction between students and online learning platforms. The study also examined the evolution of keywords across three periods: the pre-pandemic (2013–2018), the mid-pandemic (2019–2020), and the post-pandemic (2021–2022) periods. Finally, several recommendations for future research are provided.
KW - Bibliometric analysis
KW - educational data mining
KW - machine learning
KW - online learning platforms
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U2 - 10.1080/10494820.2024.2443070
DO - 10.1080/10494820.2024.2443070
M3 - Article
AN - SCOPUS:85213243536
SN - 1049-4820
JO - Interactive Learning Environments
JF - Interactive Learning Environments
ER -