Effects of data distribution and granularity on color semantics for colormap data visualizations
August 31, 2023 Β· Declared Dead Β· π Visual ..
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Authors
Clementine Zimnicki, Chin Tseng, Danielle Albers Szafir, Karen B. Schloss
arXiv ID
2309.00131
Category
cs.HC: Human-Computer Interaction
Citations
3
Venue
Visual ..
Last Checked
4 months ago
Abstract
To create effective data visualizations, it helps to represent data using visual features in intuitive ways. When visualization designs match observer expectations, visualizations are easier to interpret. Prior work suggests that several factors influence such expectations. For example, the dark-is-more bias leads observers to infer that darker colors map to larger quantities, and the opaque-is-more bias leads them to infer that regions appearing more opaque (given the background color) map to larger quantities. Previous work suggested that the background color only plays a role if visualizations appear to vary in opacity. The present study challenges this claim. We hypothesized that the background color modulate inferred mappings for colormaps that should not appear to vary in opacity (by previous measures) if the visualization appeared to have a "hole" that revealed the background behind the map (hole hypothesis). We found that spatial aspects of the map contributed to inferred mappings, though the effects were inconsistent with the hole hypothesis. Our work raises new questions about how spatial distributions of data influence color semantics in colormap data visualizations.
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