仅仅是资源分配?算法预测和人类的正义观念如何相互作用

Amanda Kube, Sanmay Das, P. Fowler, Yevgeniy Vorobeychik
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引用次数: 5

摘要

我们在稀缺的社会资源分配问题的背景下,研究数据辅助决策中的正义。非专家(在亚马逊Mechanical Turk上招募)必须决定为哪些无家可归的家庭提供有限的住房援助。我们根据经验得出决策者的偏好,以确定是优先考虑更脆弱的家庭,还是最能利用更密集干预措施的家庭。我们提出了三个主要发现。(1)当脆弱性或结果被定量地概念化和呈现时,人类(在单一时间点)在做出以脆弱性为导向或以结果为导向的决策时是非常一致的。(2)在三分之一的时间内,人类决策者的偏好从脆弱性导向转变为结果导向。(3)除了家庭描述外,提供算法衍生的风险预测可以增强决策者的偏好。在以脆弱性为导向的情况下,提出风险预测导致对较脆弱家庭的拨款显著增加,而在以结果为导向的情况下,提出风险预测导致对较脆弱家庭的拨款显著减少。这些发现强调了明确地将数据驱动的决策辅助与系统范围的分配目标相一致的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Just Resource Allocation? How Algorithmic Predictions and Human Notions of Justice Interact
We examine justice in data-aided decisions in the context of a scarce societal resource allocation problem. Non-experts (recruited on Amazon Mechanical Turk) have to determine which homeless households to serve with limited housing assistance. We empirically elicit decision-maker preferences for whether to prioritize more vulnerable households or households who would best take advantage of more intensive interventions. We present three main findings. (1) When vulnerability or outcomes are quantitatively conceptualized and presented, humans (at a single point in time) are remarkably consistent in making either vulnerability- or outcome-oriented decisions. (2) Prior exposure to quantitative outcome predictions has a significant effect and changes the preferences of human decision-makers from vulnerability-oriented to outcome-oriented about one-third of the time. (3) Presenting algorithmically-derived risk predictions in addition to household descriptions reinforces decision-maker preferences. Among the vulnerability-oriented, presenting the risk predictions leads to a significant increase in allocations to the more vulnerable household, whereas among the outcome-oriented it leads to a significant decrease in allocations to the more vulnerable household. These findings emphasize the importance of explicitly aligning data-driven decision aids with system-wide allocation goals.
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