The Garden of Forking Paths in Visualization: A Design Space for Reliable Exploratory Visual Analytics : Position Paper

Xiaoying Pu, Matthew Kay
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引用次数: 25

Abstract

Tukey emphasized decades ago that taking exploratory findings as confirmatory is “destructively foolish”. We reframe recent conversations about the reliability of results from exploratory visual analytics—such as the multiple comparisons problem—in terms of Gelman and Loken’s garden of forking paths to lay out a design space for addressing the forking paths problem in visual analytics. This design space encompasses existing approaches to address the forking paths problem (multiple comparison correction) as well as solutions that have not been applied to exploratory visual analytics (regularization). We also discuss how perceptual bias correction techniques may be used to correct biases induced in analysts’ understanding of their data due to the forking paths problem, and outline how this problem can be cast as a threat to validity within Munzner’s Nested Model of visualization design. Finally, we suggest paper review guidelines to encourage reviewers to consider the forking paths problem when evaluating future designs of visual analytics tools.
可视化中的分叉路径花园:可靠探索性视觉分析的设计空间:立场文件
Tukey在几十年前就强调过,把探索性的发现作为证实是“极其愚蠢的”。根据Gelman和Loken的分叉路径花园,我们重新构建了最近关于探索性视觉分析结果可靠性的讨论,例如多重比较问题,为解决视觉分析中的分叉路径问题提供了一个设计空间。这个设计空间包括解决分叉路径问题的现有方法(多次比较校正),以及尚未应用于探索性可视化分析的解决方案(正则化)。我们还讨论了如何使用感知偏差校正技术来纠正由于分叉路径问题而导致的分析师对数据理解中的偏差,并概述了如何将此问题视为Munzner可视化设计嵌套模型中有效性的威胁。最后,我们提出了论文审查指南,以鼓励审稿人在评估可视化分析工具的未来设计时考虑分叉路径问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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