Interactive linked micromap plots and dynamically conditioned choropleth maps
Daniel B. Carr,Jim X. Chen,B. Sue Bell,Linda Williams Pickle,Yuguang Zhang +4 more
- 19 May 2002
- pp 1-7
26
TL;DR: In this paper, interactive extensions to two recently developed templates for displaying geospatially-indexed estimates are introduced, linked micromap plots and conditioned choropleth maps.
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Abstract: This paper introduces interactive extensions to two recently developed templates for displaying geospatially-indexed estimates. The first template, linked micromap plots, links small generalized maps with statistical panels that describe regions. Research centered at the National Cancer Institute addressed the task of communicating state and county cancer statistics and tailored this template to show estimates, confidence intervals, and Healthy People 2010 target values. The research also integrated interactive options, such as variable selection, sorting, fixed header scrolling, mouse tips, enlarged dynamic map views and drill down, in a Java applet. This template has fared well in early usability tests. The second template, called conditioned choropleth maps, seeks to improve hypothesis generation about the spatial patterns shown in a classed choropleth map. Since variation of a study variable is often related to known risk factors, the template provides a way to control for the known variation. This paper describes dynamic sliders that change class boundaries for a study variable and that partition regions into a 3 x 3 layout of maps based on values of two risk factors. Highlighted regions in each map are more homogeneous with respect to both risk factors. Comparisons across maps and spatial patterns within maps provide the basis for generating hypotheses. The JAVA application shareware also includes dynamic statistical annotation and QQplots for comparing distributions
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References
Emphasizing Statistical Summaries and Showing Spatial Context with Micromaps
Suzanne M. Pierson
- 01 Jan 1999
TL;DR: To keep this example simple, the authors’ll just have one fill-in-the-blank field, and a set of three checkboxes, but any of the more complex form elements can be easily accommodated with this scheme.
Using Linked Micromap Plots to Characterize Omernik Ecoregions
TL;DR: The paper introduces linked micromap (LM) plots for presenting environmental summaries and shows LM plots for Omernik Level II Ecoregions, a new visualization methodology useful in the data and knowledge based pattern representation and knowledge discovery process.
25
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Visualizing Data
William S. Cleveland
- 01 Mar 1993
TL;DR: Using a downloadable programming environment developed by the author, Visualizing Data demonstrates methods for representing data accurately on the Web and elsewhere, complete with user interaction, animation, and more.
Designing linked micromap plots for states with many counties.
TL;DR: The linked micromap template was specifically developed to represent spatially indexed statistical summaries, and the new designs are suitable for presenting sophisticated summaries.
Two new templates for epidemiology applications: linked micromap plots and conditioned choropleth maps.
TL;DR: This paper describes two interactive templates for representing spatially indexed estimates that use a matrix layout of small panels and describes the cognitive considerations that motivate the layouts and representation details.