Date
Publisher
arXiv
The surge in the adoption of Intelligent Tutoring Systems (ITSs) in
education, while being integral to curriculum-based learning, can inadvertently
exacerbate performance gaps. To address this problem, student profiling becomes
crucial for tracking progress, identifying struggling students, and alleviating
disparities among students. Such profiling requires measuring student behaviors
and performance across different aspects, such as content coverage, learning
intensity, and proficiency in different concepts within a learning topic.
In this study, we introduce CTGraph, a graph-level representation learning
approach to profile learner behaviors and performance in a self-supervised
manner. Our experiments demonstrate that CTGraph can provide a holistic view of
student learning journeys, accounting for different aspects of student
behaviors and performance, as well as variations in their learning paths as
aligned to the curriculum structure. We also show that our approach can
identify struggling students and provide comparative analysis of diverse groups
to pinpoint when and where students are struggling. As such, our approach opens
more opportunities to empower educators with rich insights into student
learning journeys and paves the way for more targeted interventions.
What is the application?
Who is the user?
Why use AI?
Study design
