Date
Publisher
arXiv
Students disengaging from their tasks can have serious long-term
consequences, including academic drop-out. This is particularly relevant for
students in distance education. One way to measure the level of disengagement
in distance education is to observe participation in non-mandatory exercises in
different online courses. In this paper, we detect student disengagement in the
non-mandatory quizzes of 42 courses in four semesters from a distance-based
university. We carefully identified the most informative student log data that
could be extracted and processed from Moodle. Then, eight machine learning
algorithms were trained and compared to obtain the highest possible prediction
accuracy. Using the SHAP method, we developed an explainable machine learning
framework that allows practitioners to better understand the decisions of the
trained algorithm. The experimental results show a balanced accuracy of 91\%,
where about 85\% of disengaged students were correctly detected. On top of the
highly predictive performance and explainable framework, we provide a
discussion on how to design a timely intervention to minimise disengagement
from voluntary tasks in online learning.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
