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Patterns of Attention: How Data Visualizations Are Read

机译:注意模式:如何读取数据可视化

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摘要

Data visualizations are used to communicate information to people in a wide variety of contexts, but few tools are available to help visualization designers evaluate the effectiveness of their designs. Visual saliency maps that predict which regions of an image are likely to draw the viewer's attention could be a useful evaluation tool, but existing models of visual saliency often make poor predictions for abstract data visualizations. These models do not take into account the importance of features like text in visualizations, which may lead to inaccurate saliency maps. In this paper we use data from two eye tracking experiments to investigate attention to text in data visualizations. The data sets were collected under two different task conditions: a memory task and a free viewing task. Across both tasks, the text elements in the visualizations consistently drew attention, especially during early stages of viewing. These findings highlight the need to incorporate additional features into saliency models that will be applied to visualizations.
机译:数据可视化用于在多种情况下与人们交流信息,但是很少有工具可用来帮助可视化设计人员评估其设计的有效性。预测图像的哪些区域可能吸引观看者注意力的视觉显着性图可能是有用的评估工具,但是现有的视觉显着性模型对于抽象数据的可视化效果通常很难做出预测。这些模型没有考虑到可视化中文本等功能的重要性,这可能导致不正确的显着性图。在本文中,我们使用来自两个眼睛跟踪实验的数据来调查对数据可视化中文本的关注。数据集是在两个不同的任务条件下收集的:一个内存任务和一个免费查看任务。在这两个任务中,可视化中的文本元素始终吸引着人们的注意力,尤其是在查看的早期阶段。这些发现强调了需要将其他功能整合到显着性模型中,以将其应用于可视化。

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