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Main Authors: Braun, Halle C., Mukherjee, Kushin, Gorelik, Seth R., Schloss, Karen B.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.14009
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author Braun, Halle C.
Mukherjee, Kushin
Gorelik, Seth R.
Schloss, Karen B.
author_facet Braun, Halle C.
Mukherjee, Kushin
Gorelik, Seth R.
Schloss, Karen B.
contents Research on affective visualization design has shown that color is an especially powerful feature for influencing the emotional connotation of visualizations. Associations between colors and emotions are largely driven by lightness (e.g., lighter colors are associated with positive emotions, whereas darker colors are associated with negative emotions). Designing visualizations to have all light or all dark colors to convey particular emotions may work well for visualizations in which colors represent categories and spatial channels encode data values. However, this approach poses a problem for visualizations that use color to represent spatial patterns in data (e.g., colormap data visualizations) because lightness contrast is needed to reveal fine details in spatial structure. In this study, we found it is possible to design colormaps that have strong lightness contrast to support spatial vision while communicating clear affective connotation. We also found that affective connotation depended not only on the color scales used to construct the colormaps, but also the frequency with which colors appeared in the map, as determined by the underlying dataset (data-dependence hypothesis). These results emphasize the importance of data-aware design, which accounts for not only the design features that encode data (e.g., colors, shapes, textures), but also how those design features are instantiated in a visualization, given the properties of the data.
format Preprint
id arxiv_https___arxiv_org_abs_2511_14009
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Affective Color Scales for Colormap Data Visualizations
Braun, Halle C.
Mukherjee, Kushin
Gorelik, Seth R.
Schloss, Karen B.
Human-Computer Interaction
Research on affective visualization design has shown that color is an especially powerful feature for influencing the emotional connotation of visualizations. Associations between colors and emotions are largely driven by lightness (e.g., lighter colors are associated with positive emotions, whereas darker colors are associated with negative emotions). Designing visualizations to have all light or all dark colors to convey particular emotions may work well for visualizations in which colors represent categories and spatial channels encode data values. However, this approach poses a problem for visualizations that use color to represent spatial patterns in data (e.g., colormap data visualizations) because lightness contrast is needed to reveal fine details in spatial structure. In this study, we found it is possible to design colormaps that have strong lightness contrast to support spatial vision while communicating clear affective connotation. We also found that affective connotation depended not only on the color scales used to construct the colormaps, but also the frequency with which colors appeared in the map, as determined by the underlying dataset (data-dependence hypothesis). These results emphasize the importance of data-aware design, which accounts for not only the design features that encode data (e.g., colors, shapes, textures), but also how those design features are instantiated in a visualization, given the properties of the data.
title Affective Color Scales for Colormap Data Visualizations
topic Human-Computer Interaction
url https://arxiv.org/abs/2511.14009