COIVis aligns multimodal video concepts with screen space and time to turn eye-tracking data into interpretable learner-state sequences, enabling instructors to explore cohort and individual learning patterns in MOOCs.
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Students want AI tutors offering graduated hints while limiting data collection to problem-solving steps rather than attention signals.
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COIVis: Eye-tracking-based Visual Exploration of Concept Learning in MOOC Videos
COIVis aligns multimodal video concepts with screen space and time to turn eye-tracking data into interpretable learner-state sequences, enabling instructors to explore cohort and individual learning patterns in MOOCs.
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"Help Me, But Don't Track Me": Intervention Timing and Privacy Boundaries for Process-Aware AI Tutors
Students want AI tutors offering graduated hints while limiting data collection to problem-solving steps rather than attention signals.