Automatic Selection of Partitioning Variables for Small Multiple Displays

IEEE Transactions on Visualization and Computer Graphics(2016)

引用 31|浏览55
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摘要
Effective small multiple displays are created by partitioning a visualization on variables that reveal interesting conditional structure in the data. We propose a method that automatically ranks partitioning variables, allowing analysts to focus on the most promising small multiple displays. Our approach is based on a randomized, non-parametric permutation test, which allows us to handle a wide range of quality measures for visual patterns defined on many different visualization types, while discounting spurious patterns. We demonstrate the effectiveness of our approach on scatterplots of real-world, multidimensional datasets.
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关键词
data visualisation,automatic selection,data conditional structure,partitioning variables,quality measures,randomized nonparametric permutation test,real-world multidimensional datasets,small multiple displays,visual patterns,visualization,Multidimensional data,Small multiple displays,Visualization selection
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