Eye-tracking for user modeling in exploratory learning environments: An empirical evaluation
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摘要
In this paper, we describe research on using eye-tracking data for on-line assessment of user meta-cognitive behavior during interaction with an environment for exploration-based learning. This work contributes to user modeling and intelligent interfaces research by extending existing research on eye-tracking in HCI to on-line capturing of high-level user mental states for real-time interaction tailoring. We first describe the empirical work we did to understand the user meta-cognitive behaviors to be modeled. We then illustrate the probabilistic user model we designed to capture these behaviors with the help of on-line information on user attention patterns derived from eye-tracking data. Next, we describe the evaluation of this model, showing that gaze-tracking data can significantly improve model performance compared to lower level, time-based evidence. Finally, we discuss work we have done on using pupil dilation information, also gathered through eye-tracking data, to further improve model accuracy.
论文关键词:User modeling,Eye-tracking,Intelligent learning environments,Exploration-based learning,Self-explanation
论文评审过程:Received 18 December 2006, Accepted 17 April 2007, Available online 27 April 2007.
论文官网地址:https://doi.org/10.1016/j.knosys.2007.04.010