Unifying Effects of Direct and Relational Associations for Visual Communication

09/06/2022
by   Melissa A. Schoenlein, et al.
0

People have expectations about how colors map to concepts in visualizations, and they are better at interpreting visualizations that match their expectations. Traditionally, studies on these expectations (inferred mappings) distinguished distinct factors relevant for visualizations of categorical vs. continuous information. Studies on categorical information focused on direct associations (e.g., mangos are associated with yellows) whereas studies on continuous information focused on relational associations (e.g., darker colors map to larger quantities; dark-is-more bias). We unite these two areas within a single framework of assignment inference. Assignment inference is the process by which people infer mappings between perceptual features and concepts represented in encoding systems. Observers infer globally optimal assignments by maximizing the "merit," or "goodness," of each possible assignment. Previous work on assignment inference focused on visualizations of categorical information. We extend this approach to visualizations of continuous data by (a) broadening the notion of merit to include relational associations and (b) developing a method for combining multiple (sometimes conflicting) sources of merit to predict people's inferred mappings. We developed and tested our model on data from experiments in which participants interpreted colormap data visualizations, representing fictitious data about environmental concepts (sunshine, shade, wild fire, ocean water, glacial ice). We found both direct and relational associations contribute independently to inferred mappings. These results can be used to optimize visualization design to facilitate visual communication.

READ FULL TEXT

page 1

page 4

page 5

page 7

page 14

page 15

research
08/31/2023

Effects of data distribution and granularity on color semantics for colormap data visualizations

To create effective data visualizations, it helps to represent data usin...
research
08/01/2019

Estimating Color-Concept Associations from Image Statistics

To interpret the meanings of colors in visualizations of categorical inf...
research
09/07/2020

Semantic Discriminability for Visual Communication

To interpret information visualizations, observers must determine how vi...
research
08/08/2021

Context Matters: A Theory of Semantic Discriminability for Perceptual Encoding Systems

People's associations between colors and concepts influence their abilit...
research
12/13/2014

A Canonical Representation of Data-Linear Visualization Algorithms

We introduce linear-state dataflows, a canonical model for a large set o...
research
05/13/2021

Shades of confusion: Lexical uncertainty modulates ad hoc coordination in an interactive communication task

There is substantial variability in the expectations that communication ...
research
08/28/2023

Categorical data analysis using discretization of continuous variables to investigate associations in marine ecosystems

Understanding and predicting interactions between predators and prey and...

Please sign up or login with your details

Forgot password? Click here to reset