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Revealing at-risk learning patterns and corresponding self-regulated strategies via LSTM encoder and time-series clustering

Mingyan Zhang (National Engineering Research Center for E-Learning, Central China Normal University, Wuhan, China)
Xu Du (National Engineering Research Center for E-Learning, Central China Normal University, Wuhan, China)
Kerry Rice (Department of Educational Technology, College of Education, Boise State University, Boise, Idaho, USA)
Jui-Long Hung (Department of Educational Technology, College of Education, Boise State University, Boise, Idaho, USA)
Hao Li (National Engineering Research Center for E-Learning, Central China Normal University, Wuhan, China)

Information Discovery and Delivery

ISSN: 2398-6247

Article publication date: 28 June 2021

Issue publication date: 18 April 2022

232

Abstract

Purpose

This study aims to propose a learning pattern analysis method which can improve a predictive model’s performance, as well as discover hidden insights into micro-level learning pattern. Analyzing student’s learning patterns can help instructors understand how their course design or activities shape learning behaviors; depict students’ beliefs about learning and their motivation; and predict learning performance by analyzing individual students’ learning patterns. Although time-series analysis is one of the most feasible predictive methods for learning pattern analysis, literature-indicated current approaches cannot provide holistic insights about learning patterns for personalized intervention. This study identified at-risk students by micro-level learning pattern analysis and detected pattern types, especially at-risk patterns that existed in the case study. The connections among students’ learning patterns, corresponding self-regulated learning (SRL) strategies and learning performance were finally revealed.

Design/methodology/approach

The method used long short-term memory (LSTM)-encoder to process micro-level behavioral patterns for feature extraction and compression, thus the students’ behavior pattern information were saved into encoded series. The encoded time-series data were then used for pattern analysis and performance prediction. Time series clustering were performed to interpret the unique strength of proposed method.

Findings

Successful students showed consistent participation levels and balanced behavioral frequency distributions. The successful students also adjusted learning behaviors to meet with course requirements accordingly. The three at-risk patten types showed the low-engagement (R1) the low-interaction (R2) and the non-persistent characteristics (R3). Successful students showed more complete SRL strategies than failed students. Political Science had higher at-risk chances in all three at-risk types. Computer Science, Earth Science and Economics showed higher chances of having R3 students.

Research limitations/implications

The study identified multiple learning patterns which can lead to the at-risk situation. However, more studies are needed to validate whether the same at-risk types can be found in other educational settings. In addition, this case study found the distributions of at-risk types were vary in different subjects. The relationship between subjects and at-risk types is worth further investigation.

Originality/value

This study found the proposed method can effectively extract micro-level behavioral information to generate better prediction outcomes and depict student’s SRL learning strategies in online learning. The authors confirm that the research in their work is original, and that all the data given in the paper are real and authentic. The study has not been submitted to peer review and not has been accepted for publishing in another journal.

Keywords

Acknowledgements

This work was supported by the National Natural Science Foundation of China under Grant 61807013 and 61877027.

Citation

Zhang, M., Du, X., Rice, K., Hung, J.-L. and Li, H. (2022), "Revealing at-risk learning patterns and corresponding self-regulated strategies via LSTM encoder and time-series clustering", Information Discovery and Delivery, Vol. 50 No. 2, pp. 206-216. https://doi.org/10.1108/IDD-12-2020-0160

Publisher

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Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

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