首页> 外文期刊>IEEE transactions on visualization and computer graphics >GPLOM: The Generalized Plot Matrix for Visualizing Multidimensional Multivariate Data
【24h】

GPLOM: The Generalized Plot Matrix for Visualizing Multidimensional Multivariate Data

机译:GPLOM:用于可视化多维多元数据的通用绘图矩阵

获取原文
获取原文并翻译 | 示例
       

摘要

Scatterplot matrices (SPLOMs), parallel coordinates, and glyphs can all be used to visualize the multiple continuous variables (i.e., dependent variables or measures) in multidimensional multivariate data. However, these techniques are not well suited to visualizing many categorical variables (i.e., independent variables or dimensions). To visualize multiple categorical variables, 'hierarchical axes' that 'stack dimensions' have been used in systems like Polaris and Tableau. However, this approach does not scale well beyond a small number of categorical variables. Emerson et al. [8] extend the matrix paradigm of the SPLOM to simultaneously visualize several categorical and continuous variables, displaying many kinds of charts in the matrix depending on the kinds of variables involved. We propose a variant of their technique, called the Generalized Plot Matrix (GPLOM). The GPLOM restricts Emerson et al.'s technique to only three kinds of charts (scatterplots for pairs of continuous variables, heatmaps for pairs of categorical variables, and barcharts for pairings of categorical and continuous variable), in an effort to make it easier to understand. At the same time, the GPLOM extends Emerson et al.'s work by demonstrating interactive techniques suited to the matrix of charts. We discuss the visual design and interactive features of our GPLOM prototype, including a textual search feature allowing users to quickly locate values or variables by name. We also present a user study that compared performance with Tableau and our GPLOM prototype, that found that GPLOM is significantly faster in certain cases, and not significantly slower in other cases.
机译:散点图矩阵(SPLOM),平行坐标和字形都可以用于可视化多维多元数据中的多个连续变量(即因变量或度量)。但是,这些技术不太适合可视化许多分类变量(即,独立变量或尺寸)。为了可视化多个类别变量,已在Polaris和Tableau等系统中使用了“堆栈尺寸”的“层次轴”。但是,这种方法不能很好地扩展到少数分类变量之外。艾默生等。 [8]扩展了SPLOM的矩阵范式,以同时可视化几个分类变量和连续变量,根据所涉及变量的种类在矩阵中显示多种图表。我们提出了他们的技术的一种变体,称为广义图矩阵(GPLOM)。 GPLOM将Emerson等人的技术限制为仅三种图表(用于连续变量对的散点图,用于类别变量对的热图以及用于类别变量和连续变量对的条形图),以使其更容易了解。同时,GPLOM通过展示适用于图表矩阵的交互式技术,扩展了Emerson等人的工作。我们讨论了GPLOM原型的视觉设计和交互功能,其中包括文本搜索功能,使用户可以按名称快速定位值或变量。我们还提供了一项用户研究,将性能与Tableau和我们的GPLOM原型进行了比较,发现在某些情况下GPLOM显着更快,而在其他情况下GPLOM却没有显着降低。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号