COIVis: Eye-tracking-based Visual Exploration of Concept Learning in MOOC Videos
Zhiguang Zhou, Ruiqi Yu, Yuming Ma, Hao Ni, Guojun Li, Li Ye, Xiaoying Wang, Yize Li, Yigang Wang, Yong Wang

TL;DR
COIVis is an eye-tracking-based visual analytics system that helps instructors analyze learners' cognitive states and learning patterns in MOOC videos at the concept level.
Contribution
It introduces a novel method for extracting and visualizing learner engagement and cognitive load from eye-tracking data aligned with video content.
Findings
COIVis enables detailed analysis of individual learning paths.
It helps identify problematic concepts and learning strategies.
The system supports personalized instructional interventions.
Abstract
Massive Open Online Courses (MOOCs) make high-quality instruction accessible. However, the lack of face-to-face interaction makes it difficult for instructors to obtain feedback on learners' performance and provide more effective instructional guidance. Traditional analytical approaches, such as clickstream logs or quiz scores, capture only coarse-grained learning outcomes and offer limited insight into learners' moment-to-moment cognitive states. In this study, we propose COIVis, an eye tracking-based visual analytics system that supports concept-level exploration of learning processes in MOOC videos. COIVis first extracts course concepts from multimodal video content and aligns them with the temporal structure and screen space of the lecture, defining Concepts of Interest (COIs), which anchor abstract concepts to specific spatiotemporal regions. Learners' gaze trajectories are…
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