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Predicting Visual Search Task Success from Eye Gaze Data as a Basis for User-Adaptive Information Visualization Systems

机译:从眼注释数据预测视觉搜索任务成功作为用户自适应信息可视化系统的基础

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摘要

Information visualizations are an efficient means to support the users in understanding large amounts of complex, interconnected data; user comprehension, however, depends on individual factors such as their cognitive abilities. The research literature provides evidence that user-adaptive information visualizations positively impact the users' performance in visualization tasks. This study attempts to contribute toward the development of a computational model to predict the users' success in visual search tasks from eye gaze data and thereby drive such user-adaptive systems. State-of-the-art deep learning models for time series classification have been trained on sequential eye gaze data obtained from 40 study participants' interaction with a circular and an organizational graph. The results suggest that such models yield higher accuracy than a baseline classifier and previously used models for this purpose. In particular, a Multivariate Long Short Term Memory Fully Convolutional Network shows encouraging performance for its use in online user-adaptive systems. Given this finding, such a computational model can infer the users' need for support during interaction with a graph and trigger appropriate interventions in user-adaptive information visualization systems. This facilitates the design of such systems since further interaction data like mouse clicks is not required.
机译:信息可视化是支持用户在了解大量复杂互连数据的有效手段;然而,用户理解取决于他们的认知能力等个人因素。研究文献提供了证据表明,用户自适应信息可视化对用户在可视化任务中的性能产生积极影响。该研究试图促进开发计算模型,以预测来自眼睛凝视数据的视觉搜索任务中的用户的成功,从而驱动这种用户自适应系统。时间序列分类的最先进的深度学习模型已经训练了从40项研究参与者与循环和组织图表获得的顺序眼凝视数据培训。结果表明,这种模型比基线分类器和以前使用的模型产生更高的精度,以实现此目的。特别是,多变量长的短期记忆完全卷积网络显示在在线用户自适应系统中使用的令人鼓舞的表现。鉴于此发现,这种计算模型可以在与图形交互期间推断用户对支持的需要,并触发适当的干预用户自适应信息可视化系统。这有助于这种系统的设计,因为不需要鼠标鼠标等进一步的交互数据。

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