Predicting student performance using sequence classification with time-based windows
Galina Deeva, Johannes De Smedt, Cecilia Saint-Pierre and, Richard Weber, Jochen De Weerdt

TL;DR
This paper presents a sequence classification approach using time-based windows to predict student performance accurately in online learning environments, addressing model specificity and temporal data considerations.
Contribution
It introduces a methodology for capturing temporal behavioral data and demonstrates high-accuracy predictive models for student performance, exploring course-specific and general patterns.
Findings
Predictive models achieve up to 90% accuracy for course-specific data.
Temporal data capturing improves model performance.
Models can identify underperforming students early in courses.
Abstract
A growing number of universities worldwide use various forms of online and blended learning as part of their academic curricula. Furthermore, the recent changes caused by the COVID-19 pandemic have led to a drastic increase in importance and ubiquity of online education. Among the major advantages of e-learning is not only improving students' learning experience and widening their educational prospects, but also an opportunity to gain insights into students' learning processes with learning analytics. This study contributes to the topic of improving and understanding e-learning processes in the following ways. First, we demonstrate that accurate predictive models can be built based on sequential patterns derived from students' behavioral data, which are able to identify underperforming students early in the course. Second, we investigate the specificity-generalizability trade-off in…
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