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Explaining With Examples: Lessons Learned From Crowdsourced Introductory Description of Information Visualizations

Leni Yang, Cindy Xiong, Wong Kam-Kwai, Aoyu Wu, Huamin Qu

2021IEEE Transactions on Visualization and Computer Graphics24 citationsDOIOpen Access PDF

Abstract

Data visualizations have been increasingly used in oral presentations to communicate data patterns to the general public. Clear verbal introductions of visualizations to explain how to interpret the visually encoded information are essential to convey the takeaways and avoid misunderstandings. We contribute a series of studies to investigate how to effectively introduce visualizations to the audience with varying degrees of visualization literacy. We begin with understanding how people are introducing visualizations. We crowdsource 110 introductions of visualizations and categorize them based on their content and structures. From these crowdsourced introductions, we identify different introduction strategies and generate a set of introductions for evaluation. We conduct experiments to systematically compare the effectiveness of different introduction strategies across four visualizations with 1,080 participants. We find that introductions explaining visual encodings with concrete examples are the most effective. Our study provides both qualitative and quantitative insights into how to construct effective verbal introductions of visualizations in presentations, inspiring further research in data storytelling.

Topics & Concepts

Computer scienceVisualizationCategorizationSet (abstract data type)Human–computer interactionData visualizationStorytellingData scienceCrowdsourcingConstruct (python library)Visual analyticsInformation visualizationWorld Wide WebInformation retrievalNarrativeArtificial intelligenceProgramming languagePhilosophyLinguisticsData Visualization and AnalyticsAdvanced Text Analysis TechniquesData Analysis with R