IEEE Trans Vis Comput Graph. 2021 Feb;27(2):1022-1031. doi: 10.1109/TVCG.2020.3030434. Epub 2021 Jan 28.
To interpret information visualizations, observers must determine how visual features map onto concepts. First and foremost, this ability depends on perceptual discriminability; observers must be able to see the difference between different colors for those colors to communicate different meanings. However, the ability to interpret visualizations also depends on semantic discriminability, the degree to which observers can infer a unique mapping between visual features and concepts, based on the visual features and concepts alone (i.e., without help from verbal cues such as legends or labels). Previous evidence suggested that observers were better at interpreting encoding systems that maximized semantic discriminability (maximizing association strength between assigned colors and concepts while minimizing association strength between unassigned colors and concepts), compared to a system that only maximized color-concept association strength. However, increasing semantic discriminability also resulted in increased perceptual distance, so it is unclear which factor was responsible for improved performance. In the present study, we conducted two experiments that tested for independent effects of semantic distance and perceptual distance on semantic discriminability of bar graph data visualizations. Perceptual distance was large enough to ensure colors were more than just noticeably different. We found that increasing semantic distance improved performance, independent of variation in perceptual distance, and when these two factors were uncorrelated, responses were dominated by semantic distance. These results have implications for navigating trade-offs in color palette design optimization for visual communication.
为了理解信息可视化,观察者必须确定视觉特征如何映射到概念上。首先,这种能力取决于感知辨别力;观察者必须能够看到不同颜色之间的差异,以便这些颜色传达不同的含义。然而,解释可视化的能力也取决于语义辨别力,即观察者根据视觉特征和概念本身(即没有来自图例或标签等口头提示的帮助),推断视觉特征和概念之间独特映射的程度。先前的证据表明,与仅最大化颜色-概念关联强度的系统相比,观察者更善于解释最大化语义辨别力的编码系统(最大化分配颜色与概念之间的关联强度,同时最小化未分配颜色与概念之间的关联强度)。然而,增加语义辨别力也会导致感知距离增加,因此不清楚是哪个因素导致了性能的提高。在本研究中,我们进行了两项实验,测试了条形图数据可视化的语义距离和感知距离对语义辨别力的独立影响。感知距离足够大,以确保颜色不仅仅是明显不同。我们发现,增加语义距离可以提高性能,而与感知距离的变化无关,当这两个因素不相关时,反应主要由语义距离决定。这些结果对于在颜色选择优化中权衡视觉传达具有启示意义。