Semantic Discriminability for Visual Communication
Karen B. Schloss, Zachary Leggon, Laurent Lessard

TL;DR
This paper investigates how semantic discriminability, the ability to infer unique mappings between visual features and concepts, enhances interpretation of visualizations independently of perceptual discriminability.
Contribution
It provides experimental evidence that semantic distance improves visualization interpretation independently of perceptual distance, informing color palette design.
Findings
Semantic distance positively affects interpretation accuracy.
Perceptual distance alone does not predict interpretability.
Semantic discriminability dominates when semantic and perceptual distances are uncorrelated.
Abstract
To interpret information visualizations, observers must determine how visual features map onto concepts. First and foremost, this ability depends on perceptual discriminability; e.g., 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…
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