算法辅助决策与住房方面的种族差异:阿勒格尼住房评估工具研究

Lingwei Cheng, Cameron Drayton, Alexandra Chouldechova, Rhema Vaithianathan
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摘要

美国各地对住房援助的需求远远超过了供应量,因此住房提供者的任务就是对接受这一有限资源的客户进行优先排序。为了有资格获得联邦资助,当地的无家可归者系统必须使用评估工具,作为其优先排序程序的一部分。脆弱性指数服务优先决策辅助工具(VI-SPDAT)是全国范围内最常用的评估工具。最近的一些研究批评 VI-SPDAT 有种族偏见,可能会导致在住房供应方面出现不必要的种族差异。我们利用其中一个名为 "阿勒格尼住房评估"(AHA)的优先排序工具的数据,通过描述性分析和定量分析来评估用 AHA 取代 VI-SPDAT 是否会影响住房分配中的种族差异。我们发现,VI-SPDAT 倾向于为白人客户分配较高的风险分值,而为黑人客户分配较低的风险分值。虽然部署后的服务决定与 AHA 分数更加一致,而且不同种族群体的 AHA 分数分布也相似,但我们并未发现服务率差距相应缩小的证据。我们将持续存在的差异归因于 Alt-AHA 的使用,这是一种基于调查的工具,用于数据质量较低的情况,以及与资格相关因素(如长期无家可归和退伍军人身份)的群体差异。
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Algorithm-Assisted Decision Making and Racial Disparities in Housing: A Study of the Allegheny Housing Assessment Tool
The demand for housing assistance across the United States far exceeds the supply, leaving housing providers the task of prioritizing clients for receipt of this limited resource. To be eligible for federal funding, local homelessness systems are required to implement assessment tools as part of their prioritization processes. The Vulnerability Index Service Prioritization Decision Assistance Tool (VI-SPDAT) is the most commonly used assessment tool nationwide. Recent studies have criticized the VI-SPDAT as exhibiting racial bias, which may lead to unwarranted racial disparities in housing provision. Such criticisms have led certain jurisdictions to develop alternative tools. Using data from one such prioritization tool, called the Allegheny Housing Assessment (AHA), we use descriptive and quantitative analysis to assess whether the replacement of the VI-SPDAT with the AHA impacts racial disparities in housing allocation. We find that the VI-SPDAT tended to assign higher risk scores to white clients and lower risk scores to Black clients, and that white clients were served at a higher rates pre-AHA deployment. While post-deployment service decisions became better aligned with the AHA score, and the distribution of AHA scores is similar across racial groups, we do not find evidence of a corresponding decrease in disparities in service rates. We attribute the persistent disparity to the use of Alt-AHA, a survey-based tool that is used in cases of low data quality, as well as group differences in eligibility-related factors, such as chronic homelessness and veteran status. We discuss the implications for housing service systems seeking to reduce racial disparities in their service delivery.
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