Wang Arran Zeyu, Borland David, Gotz David
IEEE Trans Vis Comput Graph. 2025 Jan;31(1):776-786. doi: 10.1109/TVCG.2024.3456369. Epub 2024 Nov 28.
Providing effective guidance for users has long been an important and challenging task for efficient exploratory visual analytics, especially when selecting variables for visualization in high-dimensional datasets. Correlation is the most widely applied metric for guidance in statistical and analytical tools, however a reliance on correlation may lead users towards false positives when interpreting causal relations in the data. In this work, inspired by prior insights on the benefits of counterfactual visualization in supporting visual causal inference, we propose a novel, simple, and efficient counterfactual guidance method to enhance causal inference performance in guided exploratory analytics based on insights and concerns gathered from expert interviews. Our technique aims to capitalize on the benefits of counterfactual approaches while reducing their complexity for users. We integrated counterfactual guidance into an exploratory visual analytics system, and using a synthetically generated ground-truth causal dataset, conducted a comparative user study and evaluated to what extent counterfactual guidance can help lead users to more precise visual causal inferences. The results suggest that counterfactual guidance improved visual causal inference performance, and also led to different exploratory behaviors compared to correlation-based guidance. Based on these findings, we offer future directions and challenges for incorporating counterfactual guidance to better support exploratory visual analytics.
长期以来,为用户提供有效的指导一直是高效探索性可视化分析的一项重要且具有挑战性的任务,尤其是在为高维数据集中的可视化选择变量时。相关性是统计和分析工具中应用最广泛的指导指标,然而,在解释数据中的因果关系时,依赖相关性可能会导致用户得出误报结果。在这项工作中,受先前关于反事实可视化在支持视觉因果推理方面的益处的见解启发,我们基于从专家访谈中收集到的见解和关注点,提出了一种新颖、简单且高效的反事实指导方法,以提高基于指导的探索性分析中的因果推理性能。我们的技术旨在利用反事实方法的优势,同时降低其对用户的复杂性。我们将反事实指导集成到一个探索性可视化分析系统中,并使用一个综合生成的真实因果数据集,进行了一项比较用户研究,评估反事实指导在多大程度上可以帮助用户做出更精确的视觉因果推理。结果表明,反事实指导提高了视觉因果推理性能,并且与基于相关性的指导相比,还导致了不同的探索行为。基于这些发现,我们为纳入反事实指导以更好地支持探索性可视化分析提供了未来的方向和挑战。