可视化分析中用于中介分析的智能助手

Chi-Hsien Yen, Yu-Chun Yen, W. Fu
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引用次数: 1

摘要

中介分析通常在统计学、心理学和健康科学中使用回归或贝叶斯网络分析进行;然而,现有的可视化工具并没有有效地支持它。当人们使用可视化来探索因果关系并做出数据驱动的决策时,缺乏帮助会带来很大的风险,因为可能会出现虚假的相关性或看似冲突的视觉模式。在本文中,我们专注于三个变量的因果推理任务,并研究了界面如何帮助用户更有效地进行推理。我们开发了一个界面,促进因果推理中涉及的两个过程:1)检测不一致的趋势,引导用户注意重要的视觉证据;2)通过提供辅助视觉线索并允许用户并排比较关键的可视化来解释可视化。我们的初步研究表明,这些特征可能是有益的。我们讨论了设计含义,以及如何将这些特征推广到更复杂的因果分析中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An intelligent assistant for mediation analysis in visual analytics
Mediation analysis is commonly performed using regressions or Bayesian network analysis in statistics, psychology, and health science; however, it is not effectively supported in existing visualization tools. The lack of assistance poses great risks when people use visualizations to explore causal relationships and make data-driven decisions, as spurious correlations or seemingly conflicting visual patterns might occur. In this paper, we focused on the causal reasoning task over three variables and investigated how an interface could help users reason more efficiently. We developed an interface that facilitates two processes involved in causal reasoning: 1) detecting inconsistent trends, which guides users' attention to important visual evidence, and 2) interpreting visualizations, by providing assisting visual cues and allowing users to compare key visualizations side by side. Our preliminary study showed that the features are potentially beneficial. We discuss design implications and how the features could be generalized for more complex causal analysis.
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