Interactive High-Dimensional Data Visualization |
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Authors: | Andreas Buja Dianne Cook Deborah F. Swayne Research Scientist |
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Affiliation: | 1. AT&2. T Bell Laboratories , Murray Hill , NJ , 07974-0636 , USA;3. Department of Statistics , Iowa State University , Ames , IA , 50011-1210 , USA |
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Abstract: | Abstract We propose a rudimentary taxonomy of interactive data visualization based on a triad of data analytic tasks: finding Gestalt, posing queries, and making comparisons. These tasks are supported by three classes of interactive view manipulations: focusing, linking, and arranging views. This discussion extends earlier work on the principles of focusing and linking and sets them on a firmer base. Next, we give a high-level introduction to a particular system for multivariate data visualization—XGobi. This introduction is not comprehensive but emphasizes XGobi tools that are examples of focusing, linking, and arranging views; namely, high-dimensional projections, linked scatterplot brushing, and matrices of conditional plots. Finally, in a series of case studies in data visualization, we show the powers and limitations of particular focusing, linking, and arranging tools. The discussion is dominated by high-dimensional projections that form an extremely well-developed part of XGobi. Of particular interest are the illustration of asymptotic normality of high-dimensional projections (a theorem of Diaconis and Freedman), the use of high-dimensional cubes for visualizing factorial experiments, and a method for interactively generating matrices of conditional plots with high-dimensional projections. Although there is a unifying theme to this article, each section—in particular the case studies—can be read separately. |
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Keywords: | Brushing High-dimensional projections Multiple linked views Plot matrices Real-time graphics Taxonomy of data visualization |
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