Identifying Critical LMS Features for Predicting At-risk Students
Ying Guo, Cengiz Gunay, Sairam Tangirala, David Kerven, Wei Jin, Jamye, Curry Savage, Seungjin Lee

TL;DR
This study leverages LMS data logs and machine learning to accurately predict at-risk students and identify key engagement features, providing a foundation for real-time analytics integration in educational platforms.
Contribution
It introduces a data-driven framework using supervised and unsupervised learning to predict student performance and identify critical LMS features for intervention.
Findings
Predictive models achieved over 90% accuracy.
Number of assignment submissions and content completed are key features.
Framework supports real-time analytics integration.
Abstract
Learning management systems (LMSs) have become essential in higher education and play an important role in helping educational institutions to promote student success. Traditionally, LMSs have been used by postsecondary institutions in administration, reporting, and delivery of educational content. In this paper, we present an additional use of LMS by using its data logs to perform data-analytics and identify academically at-risk students. The data-driven insights would allow educational institutions and educators to develop and implement pedagogical interventions targeting academically at-risk students. We used anonymized data logs created by Brightspace LMS during fall 2019, spring 2020, and fall 2020 semesters at our college. Supervised machine learning algorithms were used to predict the final course performance of students, and several algorithms were found to perform well with…
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Taxonomy
TopicsOnline Learning and Analytics · Educational Technology and Assessment
MethodsShapley Additive Explanations
