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可视化温度趋势:单色调色板对趋势方向更敏感。

Visualizing temperature trends: Higher sensitivity to trend direction with single-hue palettes.

机构信息

Department of Psychology.

Department of Computer Science.

出版信息

J Exp Psychol Appl. 2022 Dec;28(4):717-745. doi: 10.1037/xap0000411. Epub 2022 Feb 17.

DOI:10.1037/xap0000411
PMID:35175091
Abstract

Design plays a key role in the interpretability of complex visualizations. Many applied domains utilize large quantities of data to make predictions, ranging from maps showing the spread of infectious disease to line graphs displaying global temperature changes. These visualizations tap into the visual system's ability to extract information from groups of similar objects, a process known as ensemble processing, and the cognitive system's ability to relate visual features such as color to meaningful concepts such as disease or temperature. Visualizations must consider both perceptual and cognitive abilities. It remains unclear which best improves comprehension: visualizations designed to exploit ensemble processes or that use semantically resonant colors that align with the underlying data. To address this question, participants were shown visualizations designed for ensemble processes in that they used color encodings with only a single hue or designed for semantic processes in that they prioritized color alignment with the meaning of the data. Participants viewed stripplots using these colors and judged whether the temperature depicted in the graphs was increasing or decreasing. As quantified using the signal detection measure ', participants' sensitivity to trend information was higher with the single-hue palettes than with more semantically expressive multihue palettes. Our results suggest that visualizations may convey trend information more effectively by selecting colors that exploit ensemble processes rather than selecting semantically compatible colors. Moreover, our results showed semantic compatibility had no effect on sensitivity to trend direction. (PsycInfo Database Record (c) 2023 APA, all rights reserved).

摘要

设计在复杂可视化的可解释性中起着关键作用。许多应用领域利用大量数据进行预测,从显示传染病传播的地图到显示全球温度变化的线图。这些可视化利用了视觉系统从相似物体群体中提取信息的能力,这一过程被称为整体处理,以及认知系统将颜色等视觉特征与疾病或温度等有意义的概念联系起来的能力。可视化必须考虑到感知和认知能力。目前还不清楚哪种方法最能提高理解能力:是设计用于利用整体处理的可视化,还是使用与底层数据语义一致的具有共鸣的颜色。为了解决这个问题,参与者观看了旨在利用整体处理的可视化,即使用只有单一色调的颜色编码,或旨在利用语义处理的可视化,即优先考虑颜色与数据含义的一致性。参与者观看了使用这些颜色的条状图,并判断图表中显示的温度是在上升还是下降。使用信号检测测量“”来量化,与语义更丰富的多色调调色板相比,参与者对单一色调调色板的趋势信息的敏感性更高。我们的研究结果表明,通过选择利用整体处理的颜色而不是选择语义兼容的颜色,可视化可能更有效地传达趋势信息。此外,我们的研究结果表明,语义兼容性对趋势方向的敏感性没有影响。(PsycInfo 数据库记录(c)2023 APA,保留所有权利)。

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