On modeling human perceptions of allocation policies with uncertain outcomes

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS ACM SIGecom Exchanges Pub Date : 2022-07-01 DOI:10.1145/3572885.3572889
Hoda Heidari, Solon Barocas, J. Kleinberg, K. Levy
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Abstract

Many policies allocate harms or benefits that are uncertain in nature: they produce distributions over the population in which individuals have different probabilities of incurring harm or benefit. Comparing different policies thus involves a comparison of their corresponding probability distributions, and we observe that in many instances the policies selected in practice are hard to explain by preferences based only on the expected value of the total harm or benefit they produce. In cases where the expected value analysis is not a sufficient explanatory framework, what would be a reasonable model for societal preferences over these distributions? Here we investigate explanations based on the framework of probability weighting from the behavioral sciences, which over several decades has identified systematic biases in how people perceive probabilities. We show that probability weighting can be used to make predictions about preferences over probabilistic distributions of harm and benefit that function quite differently from expected-value analysis, and in a number of cases provide potential explanations for policy preferences that appear hard to motivate by other means. In particular, we identify optimal policies for minimizing perceived total harm and maximizing perceived total benefit that take the distorting effects of probability weighting into account, and we discuss a number of real-world policies that resemble such allocational strategies. Our analysis does not provide specific recommendations for policy choices, but is instead interpretive in nature, seeking to describe observed phenomena in policy choices.
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关于对具有不确定结果的分配政策的人类感知建模
许多政策分配的伤害或利益在本质上是不确定的:它们在人口中产生分布,其中个人遭受伤害或受益的概率不同。因此,比较不同的政策涉及到比较它们相应的概率分布,我们观察到,在许多情况下,实践中选择的政策很难用仅基于它们产生的总伤害或收益的预期价值的偏好来解释。在期望值分析不是一个充分的解释框架的情况下,对于这些分布的社会偏好,什么是一个合理的模型?在这里,我们研究了基于行为科学概率加权框架的解释,几十年来,行为科学已经确定了人们如何感知概率的系统性偏差。我们表明,概率加权可以用来预测与期望值分析完全不同的危害和收益概率分布的偏好,并在许多情况下为政策偏好提供潜在的解释,这些政策偏好似乎很难通过其他方式激发。特别是,我们确定了将概率加权的扭曲效应考虑在内的最小化感知总伤害和最大化感知总利益的最佳策略,并讨论了许多类似于此类分配策略的现实世界政策。我们的分析并没有为政策选择提供具体的建议,而是在本质上是解释性的,试图描述在政策选择中观察到的现象。
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ACM SIGecom Exchanges
ACM SIGecom Exchanges COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
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