用多形式矩阵和小倍数探索高维空间。

Alan Maceachren, Xiping Dai, Frank Hardisty, Diansheng Guo, Gene Lengerich
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引用次数: 110

摘要

我们介绍了一种多变量数据的可视化分析方法,该方法集成了信息可视化、探索性数据分析(EDA)和地理可视化等几种方法。该方法利用在GeoVISTA Studio中实现的基于组件的体系结构来构建灵活的、多视图的、紧密(但一般)协调的EDA工具包。该工具包以三种基本方式建立在小倍数矩阵和散点图矩阵背后的传统思想之上。首先,我们开发了一个一般的,多重形式的,二元矩阵和一个互补的多重形式,二元小多重图,其中不同的二元表示形式可以组合使用。我们用矩阵和小倍数展示了这种方法的灵活性,这些矩阵和小倍数通过散点图、二元图和空间填充显示的组合来描述多变量数据。其次,我们应用条件熵的度量来(a)从可能显示有趣关系的高维数据集中识别变量,(b)在矩阵或小的多重显示中生成这些变量的默认顺序。第三,我们添加条件,这是一种动态查询/过滤,其中使用补充(未显示)变量将视图约束到显示的变量上。条件作用允许从分析中去除一个或多个已被充分理解的变量的影响,使剩余变量之间的关系更容易探索。我们通过应用于分析癌症诊断和死亡率数据及其相关协变量和风险因素,说明了这种方法所实现的个体和组合功能。
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Exploring High-D Spaces with Multiform Matrices and Small Multiples.

We introduce an approach to visual analysis of multivariate data that integrates several methods from information visualization, exploratory data analysis (EDA), and geovisualization. The approach leverages the component-based architecture implemented in GeoVISTA Studio to construct a flexible, multiview, tightly (but generically) coordinated, EDA toolkit. This toolkit builds upon traditional ideas behind both small multiples and scatterplot matrices in three fundamental ways. First, we develop a general, MultiForm, Bivariate Matrix and a complementary MultiForm, Bivariate Small Multiple plot in which different bivariate representation forms can be used in combination. We demonstrate the flexibility of this approach with matrices and small multiples that depict multivariate data through combinations of: scatterplots, bivariate maps, and space-filling displays. Second, we apply a measure of conditional entropy to (a) identify variables from a high-dimensional data set that are likely to display interesting relationships and (b) generate a default order of these variables in the matrix or small multiple display. Third, we add conditioning, a kind of dynamic query/filtering in which supplementary (undisplayed) variables are used to constrain the view onto variables that are displayed. Conditioning allows the effects of one or more well understood variables to be removed from the analysis, making relationships among remaining variables easier to explore. We illustrate the individual and combined functionality enabled by this approach through application to analysis of cancer diagnosis and mortality data and their associated covariates and risk factors.

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Uvf - Unified Volume Format: A General System for Efficient Handling of Large Volumetric Datasets. Special Issue of selected and extended InfoVis '03 papers - Guest Editor' Introduction Exploring High-D Spaces with Multiform Matrices and Small Multiples. Beamtrees: compact visualization of large hierarchies Pixel bar charts: a visualization technique for very large multi-attribute data sets?
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