Archive/Stage-Dependent Behavioral Patterns in MOOC Dropout: An Explainable Learning Analytics Study
Stage-Dependent Behavioral Patterns in MOOC Dropout: An Explainable Learning Analytics Study
Xinyu Xiang, Jiayue Song, Shukai Duan et al.
24 juin 2026
en

Abstract

The high dropout rate in massive open online courses (MOOCs) continues to limit their potential in promoting inclusive and sustainable learning. Although many prediction models have been used to identify potential dropouts, most studies view dropout as a static classification problem and fail to clearly reveal the dynamic trajectory of learner participation over time. Therefore, this study introduces a phased analysis perspective, treating MOOC dropout as a process that continuously evolves at different stages. On the basis of the KDDCUP2015 dataset, we constructed behavioral characteristics at three time points: the first week, the third week, and the fifth week. By combining robust feature analysis and interpretable models, we systematically examined the changing patterns of dropout modes. The results revealed significant differences across the different stages. In the early stage of the course, dropout was related mainly to the unstable interaction behaviors of learners, such as restricted access to resources and irregular participation rhythms. In the middle and late stages, task-oriented behaviors, especially those related to video-based learning activities, gradually became key factors. Notably, high-frequency video participation does not always reduce the risk of dropout; when video activity is high but the overall interaction rate is low, it is more likely to indicate an increase in the risk of dropout. These results indicate that the combination of behaviors is more crucial than mere activity levels. By revealing the changing characteristics of behaviors at different stages, this study helps support the design of more practical early warning methods.

IPC Classification

G06

Keywords

stage-dependentbehavioralpatternsmoocdropoutexplainablelearninganalyticseducationscienceshighratemassiveopenonlinecoursesmoocscontinueslimitpotentialpromotinginclusivesustainablealthough
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