Digitization is currently infiltrating all daily processes, forcing casual computer users to become acquainted with unfamiliar tools. In order to avoid overstraining these users, simplified interfaces that are reduced to the functionality and content which are relevant to the individual userare imperative. Gaze-contingent systems thus monitor viewing behavior during natural system interactions to predict relevant interface elements. The prediction performance is highly dependent on theunderlying features and algorithm, especially when the interface consist of dynamic elements such as videos. In this paper, we conduct two studies with a total of 233 subjects in which we record theviewers' gaze while watching videos. We then compare the quality of preference predictions for video elements of majority voting to the performance of machine learning. Our results indicate that (1)majority voting can predict preferences with an accuracy of up to 73% (66%) for two (four) elements, (2) machine learning improves the performance to 82% (74%), (3) prediction accuracy depends on the strength of the user's preference for an element, and (4) we can rank preferences for individual elements.
CITATION STYLE
Heck, M., Edinger, J., Bünemann, J., & Becker, C. (2021). Exploring Gaze-Based Prediction Strategies for Preference Detection in Dynamic Interface Elements. In CHIIR 2021 - Proceedings of the 2021 Conference on Human Information Interaction and Retrieval (pp. 129–139). Association for Computing Machinery, Inc. https://doi.org/10.1145/3406522.3446013
Mendeley helps you to discover research relevant for your work.