论文标题

不确定性何时重要?:了解预测不确定性在ML辅助决策中的影响

When Does Uncertainty Matter?: Understanding the Impact of Predictive Uncertainty in ML Assisted Decision Making

论文作者

McGrath, Sean, Mehta, Parth, Zytek, Alexandra, Lage, Isaac, Lakkaraju, Himabindu

论文摘要

随着机器学习(ML)模型越来越多地被用来帮助人类决策者,为这些决策者提供相关投入至关重要,这可以帮助他们决定是否以及如何将模型预测纳入其决策中。例如,在这方面传达与模型预测相关的不确定性可能会有所帮助。在这项工作中,我们进行了用户研究(从190名参与者进行1,330个回答),以系统地评估具有不同类型的预测性不确定性(即具有不同形状和差异的后验预测分布)的人如何在ML辅助决策中响应不同类型的预测性不确定性(即具有不同形状和差异的后验预测分布)。我们发现,无论我们考虑的后验预测分布的形状和差异如何,显示后验预测分布导致与ML模型的预测的分歧较小,并且这些影响可能对ML和域中的专业知识敏感。这表明后验预测分布可以潜在地用作有用的决策辅助工具,应谨慎使用并考虑到人类的分布类型和专业知识。

As machine learning (ML) models are increasingly being employed to assist human decision makers, it becomes critical to provide these decision makers with relevant inputs which can help them decide if and how to incorporate model predictions into their decision making. For instance, communicating the uncertainty associated with model predictions could potentially be helpful in this regard. In this work, we carry out user studies (1,330 responses from 190 participants) to systematically assess how people with differing levels of expertise respond to different types of predictive uncertainty (i.e., posterior predictive distributions with different shapes and variances) in the context of ML assisted decision making for predicting apartment rental prices. We found that showing posterior predictive distributions led to smaller disagreements with the ML model's predictions, regardless of the shapes and variances of the posterior predictive distributions we considered, and that these effects may be sensitive to expertise in both ML and the domain. This suggests that posterior predictive distributions can potentially serve as useful decision aids which should be used with caution and take into account the type of distribution and the expertise of the human.

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