Who Is Lagging Behind: Profiling Student Behaviors with Graph-Level Encoding in Curriculum-Based Online Learning Systems
Aug 31, 2023·,,·
1 min read
Conn Breathnach
Xiao Qian
Vincent Wade
Abstract
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.
Type
This work is the result of a 6 month internship at the ADAPT Centre
Paper is still in preprint and will soon be uploaded to arxiv after confirmation from all authors