Title :
Ranking Visualizations of Correlation Using Weber's Law
Author :
Harrison, Lane ; Fumeng Yang ; Franconeri, Steven ; Chang, Ronald
Author_Institution :
Tufts Univ., Medford, MA, USA
Abstract :
Despite years of research yielding systems and guidelines to aid visualization design, practitioners still face the challenge of identifying the best visualization for a given dataset and task. One promising approach to circumvent this problem is to leverage perceptual laws to quantitatively evaluate the effectiveness of a visualization design. Following previously established methodologies, we conduct a large scale (n = 1687) crowdsourced experiment to investigate whether the perception of correlation in nine commonly used visualizations can be modeled using Weber´s law. The results of this experiment contribute to our understanding of information visualization by establishing that: (1) for all tested visualizations, the precision of correlation judgment could be modeled by Weber´s law, (2) correlation judgment precision showed striking variation between negatively and positively correlated data, and (3) Weber models provide a concise means to quantify, compare, and rank the perceptual precision afforded by a visualization.
Keywords :
data visualisation; human factors; outsourcing; psychology; Weber law; Weber models; correlation judgment precision; correlation perception; correlation visualization ranking; information visualization; large-scale crowdsourced experiment; negatively correlated data; perceptual laws; perceptual precision comparison; perceptual precision quantification; perceptual precision ranking; positively correlated data; quantitative visualization design effectiveness evaluation; Crowdsourcing; Data models; Data visualization; Design methodology; Image color analysis; Testing; Evaluation; Perception; Visualization;
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
DOI :
10.1109/TVCG.2014.2346979