Conference Proceedings
Characterising Topic Familiarity and Query Specificity Using Eye-Tracking Data
J He, Z Leng, D McKay, JR Trippas, D Spina
SIGIR 2025 Proceedings of the 48th International ACM SIGIR Conference on Research and Development in Information Retrieval | ACM | Published : 2025
Abstract
Eye-tracking data has been shown to correlate with a user’s knowledge level and query formulation behaviour. While previous work has focused primarily on eye gaze fixations for attention analysis, often requiring additional contextual information, our study investigates the memory-related cognitive dimension by relying solely on pupil dilation and gaze velocity to infer users’ topic familiarity and query specificity without needing any contextual information. Using eye-tracking data collected via a lab user study (N = 18), we achieved a Macro F1 score of 71.25% for predicting topic familiarity with a Gradient Boosting classifier, and a Macro F1 score of 60.54% with a k-nearest neighbours (KN..
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