论文标题

利用行政数据进行偏见审核:评估COVID-19政策的移动性数据不同的覆盖范围

Leveraging Administrative Data for Bias Audits: Assessing Disparate Coverage with Mobility Data for COVID-19 Policy

论文作者

Coston, Amanda, Guha, Neel, Ouyang, Derek, Lu, Lisa, Chouldechova, Alexandra, Ho, Daniel E.

论文摘要

基于智能手机的匿名移动性数据已广泛采用和评估COVID-19响应策略,例如针对公共卫生资源的靶向策略。然而,很少有人注意测量有效性和人口偏见,部分原因是缺乏代表用户的文档,以及在独特的访问和人口统计学方面获得地面真相数据的挑战。我们说明在没有人口统计信息和地面真相标签的情况下,链接大规模管理数据的链接如何启用审计移动性数据。更确切地说,我们表明,将选民滚动数据链接到包含个人级别的选民投票率以及种族和年龄的链接 - 可以促进严格的偏见和可靠性测试的构建。这些测试阐明了在大流行背景下特别值得注意的抽样偏差:较旧的和非白人选民不太可能被流动数据捕获。我们表明,基于此类流动性数据分配公共卫生资源可能会损害高风险的老年人和少数群体。

Anonymized smartphone-based mobility data has been widely adopted in devising and evaluating COVID-19 response strategies such as the targeting of public health resources. Yet little attention has been paid to measurement validity and demographic bias, due in part to the lack of documentation about which users are represented as well as the challenge of obtaining ground truth data on unique visits and demographics. We illustrate how linking large-scale administrative data can enable auditing mobility data for bias in the absence of demographic information and ground truth labels. More precisely, we show that linking voter roll data -- containing individual-level voter turnout for specific voting locations along with race and age -- can facilitate the construction of rigorous bias and reliability tests. These tests illuminate a sampling bias that is particularly noteworthy in the pandemic context: older and non-white voters are less likely to be captured by mobility data. We show that allocating public health resources based on such mobility data could disproportionately harm high-risk elderly and minority groups.

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