
Data Skeptic Eye Tracking in Recommender Systems
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Dec 18, 2025 In this discussion, guest Santiago De Leon Martinez, a doctoral researcher at the Kempelin Institute, dives into the innovative use of eye tracking in recommender systems. He reveals the mechanics behind gaze data, fixations, and saccades, showcasing the RecGaze dataset tailored for studying browsing patterns. Santiago highlights how eye tracking can uncover insights beyond traditional click data, addressing positional bias and user engagement. He also addresses ethical concerns and shares his vision for improving recommendation algorithms by simulating user behavior.
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How Eye Tracking Data Is Processed
- Gaze data captures timestamped XY screen positions and is processed into fixations and saccades to reduce noise.
- Researchers filter fixations under ~100ms as non-cognitive to focus on meaningful looks.
Carousel Browsing Flips After Swipe
- In Netflix-style carousels users often keep their gaze near the swipe point and browse right-to-left after swiping.
- This contradicts the standard left-to-right rank assumption for item ordering after swipes.
Edge And Top-Row Attention Patterns
- Users rarely transition from middle items when moving between rows; they switch from left or right ends.
- The top two carousels receive disproportionate attention and are most valuable for placements.
