Visualizing Cartograms: Goals and Task Taxonomy
February 26, 2015 Β· Declared Dead Β· π arXiv.org
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Authors
Sabrina Nusrat, Stephen Kobourov
arXiv ID
1502.07792
Category
cs.HC: Human-Computer Interaction
Citations
6
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Cartograms are maps in which areas of geographic regions (countries, states) appear in proportion to some variable of interest (population, income). Cartograms are popular visualizations for geo-referenced data that have been around for over a century. Newspapers, magazines, textbooks, blogs, and presentations frequently employ cartograms to show voting results, popularity, and in general, geographic patterns. Despite the popularity of cartograms and the large number of cartogram variants, there are very few studies evaluating the effectiveness of cartograms in conveying information. In order to design cartograms as a useful visualization tool and to be able to compare the effectiveness of cartograms generated by different methods, we need to study the nature of information conveyed and the specific tasks that can be performed on cartograms. In this paper we consider a set of cartogram visualization tasks, based on standard taxonomies from cartography and information visualization. We then propose a cartogram task taxonomy that can be used to organize not only the tasks considered here but also other tasks that might be added later.
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