Visualization supports exploratory data analysis (EDA), but EDA frequently presents spurious charts, which can mislead people into drawing unwarranted conclusions. We investigate interventions to prevent false discovery from visualized data. We evaluate whether eliciting analyst beliefs helps guard against the over-interpretation of noisy visualizations. In two experiments, we exposed participants to both spurious and 'true' scatterplots, and assessed their ability to infer data-generating models that underlie those samples. Participants who underwent prior belief elicitation made 21% more correct inferences along with 12% fewer false discoveries. This benefit was observed across a variety of sample characteristics, suggesting broad utility to the intervention. However, additional interventions to highlight counterevidence and sample uncertainty did not provide significant advantage. Our findings suggest that lightweight, belief-driven interactions can yield a reliable, if moderate, reduction in false discovery. This work also suggests future directions to improve visual inference and reduce bias. The data and materials for this paper are available at https://osf.io/52u6v/
翻译:探索性数据分析(EDA)支持探索性数据分析(EDA),但EDA经常提供虚假的图表,这种图表可以误导人们得出不合理的结论。我们调查防止从可视化数据中得出虚假发现的措施。我们评估了引起分析师的信念是否有助于防止过度解读噪音的视觉化。在两个实验中,我们让参与者了解虚假和“真实”的散射图,并评估他们能否推断出作为这些样品基础的产生数据模型。接受过先前的判断的参与者使21 % 更准确的推论,同时减少12%的虚假发现。这一好处在各种抽样特征中观察到,表明干预具有广泛效用。然而,其他强调反证据和抽样不确定性的干预措施并没有提供显著的优势。我们的研究结果表明,轻量、信仰驱动的互动可以产生可靠、中度的假发现减少。这项工作还提出了改进视觉推断和减少偏差的未来方向。本文的数据和材料可在https://osf.io/552U6v/https://os/ osf.io/526v/ 上查阅。