User-adaptive information visualization: using eye gaze data to infer visualization tasks and user cognitive abilities

B. Steichen, G. Carenini, C. Conati
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引用次数: 150

Abstract

Information Visualization systems have traditionally followed a one-size-fits-all model, typically ignoring an individual user's needs, abilities and preferences. However, recent research has indicated that visualization performance could be improved by adapting aspects of the visualization to each individual user. To this end, this paper presents research aimed at supporting the design of novel user-adaptive visualization systems. In particular, we discuss results on using information on user eye gaze patterns while interacting with a given visualization to predict the user's visualization tasks, as well as user cognitive abilities including perceptual speed, visual working memory, and verbal working memory. We show that such predictions are significantly better than a baseline classifier even during the early stages of visualization usage. These findings are discussed in view of designing visualization systems that can adapt to each individual user in real-time.
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用户自适应信息可视化:利用眼睛注视数据推断可视化任务和用户认知能力
信息可视化系统传统上遵循一种“一刀切”的模式,通常忽略了单个用户的需求、能力和偏好。然而,最近的研究表明,可视化性能可以通过调整可视化的各个方面来改善每个用户。为此,本文进行了旨在支持新型用户自适应可视化系统设计的研究。特别是,我们讨论了在与给定可视化交互时使用用户眼睛注视模式信息的结果,以预测用户的可视化任务,以及用户的认知能力,包括感知速度,视觉工作记忆和言语工作记忆。我们表明,即使在可视化使用的早期阶段,这种预测也明显优于基线分类器。这些发现讨论了可视化系统的设计,可以适应每个单独的用户实时。
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