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Uncertain About Uncertainty: How Qualitative Expressions of Forecaster Confidence Impact Decision-Making With Uncertainty Visualizations

机译:不确定的不确定性:如何用不确定性可视化对预测的投资者信心影响决策的定性表达

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When forecasting events, multiple types of uncertainty are often inherently present in the modeling process. Various uncertainty typologies exist, and each type of uncertainty has different implications a scientist might want to convey. In this work, we focus on one type of distinction between direct quantitative uncertainty and indirect qualitative uncertainty . Direct quantitative uncertainty describes uncertainty about facts, numbers, and hypotheses that can be communicated in absolute quantitative forms such as probability distributions or confidence intervals. Indirect qualitative uncertainty describes the quality of knowledge concerning how effectively facts, numbers, or hypotheses represent reality, such as evidence confidence scales proposed by the Intergovernmental Panel on Climate Change. A large body of research demonstrates that both experts and novices have difficulty reasoning with quantitative uncertainty, and visualizations of uncertainty can help with such traditionally challenging concepts. However, the question of if, and how, people may reason with multiple types of uncertainty associated with a forecast remains largely unexplored. In this series of studies, we seek to understand if individuals can integrate indirect uncertainty about how “good” a model is (operationalized as a qualitative expression of forecaster confidence) with quantified uncertainty in a prediction (operationalized as a quantile dotplot visualization of a predicted distribution). Our first study results suggest that participants utilize both direct quantitative uncertainty and indirect qualitative uncertainty when conveyed as quantile dotplots and forecaster confidence. In manipulations where forecasters were less sure about their prediction, participants made more conservative judgments. In our second study, we varied the amount of quantified uncertainty (in the form of the SD of the visualized distributions) to examine how participants’ decisions changed under different combinations of quantified uncertainty (variance) and qualitative uncertainty (low, medium, and high forecaster confidence). The second study results suggest that participants updated their judgments in the direction predicted by both qualitative confidence information (e.g., becoming more conservative when the forecaster confidence is low) and quantitative uncertainty (e.g., becoming more conservative when the variance is increased). Based on the findings from both experiments, we recommend that forecasters present qualitative expressions of model confidence whenever possible alongside quantified uncertainty.
机译:在预测事件时,在建模过程中通常存在多种类型的不确定性。存在各种不确定性类型,并且每种类型的不确定性都有不同的含义,科学家可能想要传达。在这项工作中,我们专注于直接定量不确定性和间接定性不确定性之间的一种区别。直接定量的不确定性描述了可以以绝对定量形式传送的事实,数字和假设的不确定性,例如概率分布或置信区间。间接定性不确定性描述了有关事实,数字或假设如何有效,数字或假设的知识质量,例如政府间议会在气候变化方面提出的证据置信度规模。大型研究表明,专家和新手都难以满足定量不确定性的推理,不确定性的可视化可以帮助这种传统挑战的概念。但是,如果和如何,人们可能可能有多种与预测相关的不确定性的问题仍然很大程度上是未开发的。在这一系列的研究中,我们寻求了解个人可以将间接不确定性集成了关于如何在预测中的量化不确定性(作为预测的定量Dotplot可视化的定量不确定性)的“良好”的间接不确定性分配)。我们的第一项研究结果表明,当参与者作为Simitile Dotplots和Increcaster信心传达时,参与者利用直接定量的不确定性和间接定性不确定性。在预测者对他们的预测不太肯定的操纵中,参与者做出了更保守的判断。在我们的第二次研究中,我们改变了量化的不确定性(以可视化分布的SD形式),以检查参与者的决定如何在不同的量化不确定性(方差)和定性不确定性(低,媒体和高预测者的信心)。第二次研究结果表明,参与者以定性置信信息(例如,当预测者的信心低时)和变得更加保守的方向上更新了他们的判断,并且在差异增加时变得更加保守,变得更加保守。根据两种实验的研究结果,我们建议预测,只要在量化的不确定性方面,可以在可能的情况下存在模型信心的定性表达。

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