Characterising Topic Familiarity and Query Specificity Using Eye-Tracking Data
Characterising Topic Familiarity and Query Specificity Using Eye-Tracking Data
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 (KNN) classifier for query specificity. Furthermore, we developed a novel annotation guideline -- specifically tailored for question answering -- to manually classify queries as Specific or Non-specific. This study demonstrates the feasibility of eye-tracking to better understand topic familiarity and query specificity in search.
Jiaman He、Zikang Leng、Dana McKay、Johanne R. Trippas、Damiano Spina
无线电、电信测量技术及仪器
Jiaman He,Zikang Leng,Dana McKay,Johanne R. Trippas,Damiano Spina.Characterising Topic Familiarity and Query Specificity Using Eye-Tracking Data[EB/OL].(2025-05-05)[2025-07-25].https://arxiv.org/abs/2505.03136.点此复制
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