Automatic Y-axis Rescaling in Dynamic Visualizations

Jacob Fisher, Remco Chang, Eugene Wu

View presentation:2021-10-29T14:00:00ZGMT-0600Change your timezone on the schedule page
2021-10-29T14:00:00Z
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Direct link to video on YouTube: https://youtu.be/kUJxYIbcKIk

Keywords

Computing: Software, Networks, Security, Performance Engr., Distr. Systems, Databases, Charts, Diagrams, and Plots, Data Analysis, Reasoning, Problem Solving, and Decision Making, Guidelines, Human-Subjects Quantitative Studies

Abstract

Animated and interactive data visualizations dynamically change the data rendered in a visualization (e.g., bar chart). As the data changes, the y-axis may need to be rescaled as the domain of the data changes. Each axis rescaling potentially improves the readability of the current chart, but may also disorient the user. In contrast to static visualizations, where there is considerable literature to help choose the appropriate y-axis scale, there is a lack of guidance about how and when rescaling should be used in dynamic visualizations. Existing visualization systems and libraries adapt a fixed global y-axis, or rescale every time the data changes. Yet, professional visualizations, such as in data journalism, do not adopt either strategy.They instead carefully and manually choose when to rescale based on the analysis task and data. To this end, we conduct a series of Mechanical Turk experiments to study the potential of dynamic axis rescaling, the factors that affect its effectiveness. We find that the appropriate rescaling policy is both task- and data-dependent, and we do not find one clear policy choice for all situations.