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Reinventing the Contingency Wheel: Scalable Visual Analytics of Large Categorical Data

机译:重塑意外之轮:大型分类数据的可扩展可视化分析

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Contingency tables summarize the relations between categorical variables and arise in both scientific and business domains. Asymmetrically large two-way contingency tables pose a problem for common visualization methods. The Contingency Wheel has been recently proposed as an interactive visual method to explore and analyze such tables. However, the scalability and readability of this method are limited when dealing with large and dense tables. In this paper we present Contingency Wheel++, new visual analytics methods that overcome these major shortcomings: (1) regarding automated methods, a measure of association based on Pearson’s residuals alleviates the bias of the raw residuals originally used, (2) regarding visualization methods, a frequency-based abstraction of the visual elements eliminates overlapping and makes analyzing both positive and negative associations possible, and (3) regarding the interactive exploration environment, a multi-level overview+detail interface enables exploring individual data items that are aggregated in the visualization or in the table using coordinated views. We illustrate the applicability of these new methods with a use case and show how they enable discovering and analyzing nontrivial patterns and associations in large categorical data.
机译:列联表汇总了分类变量之间的关系,并且在科学和商业领域均出现。非对称较大的双向列联表对常见的可视化方法提出了问题。应急轮最近被提出作为一种交互式的可视化方法来探索和分析这种桌子。但是,当处理大而密集的表时,此方法的可伸缩性和可读性受到限制。在本文中,我们介绍了Contingency Wheel ++,它是克服了这些主要缺点的新型视觉分析方法:(1)关于自动化方法,一种基于Pearson残差的关联度量可减轻最初使用的原始残差的偏差;(2)关于可视化方法,视觉元素的基于频率的抽象消除了重叠并使得分析正向和负向关联成为可能,并且(3)关于交互式探索环境,多级概述+详细信息界面使您可以探索在可视化中聚合的单个数据项或在表格中使用协调视图。我们用用例说明了这些新方法的适用性,并展示了它们如何使发现和分析大型分类数据中的非平凡模式和关联成为可能。

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