论文标题
上下文资源分配系统中的公平性:指标和不兼容结果
Fairness in Contextual Resource Allocation Systems: Metrics and Incompatibility Results
论文作者
论文摘要
我们研究了分配稀缺资源以满足基本需求的关键系统,例如提供住房的无家可归者服务。这些系统通常支持社区受到系统性种族,性别或其他不公正影响的影响,因此要牢记公平考虑这些系统至关重要。为了解决这个问题,我们提出了一个框架,用于评估上下文资源分配系统中的公平性,该框架灵感来自机器学习中的公平指标。该框架可以应用于评估历史政策的公平性能,并在新(反事实)分配政策的设计中施加限制。我们的工作最终以一组不兼容的结果来研究我们提出的不同公平指标之间的相互作用。值得注意的是,我们证明:1)在结果中分配和公平性的公平性通常是不兼容的; 2)基于漏洞得分确定优先级的策略通常会导致跨组的不平等结果,即使得分是完美校准的; 3)使用上下文信息超出了表征基线风险和治疗效果所需要的政策比仅使用基线风险和治疗效果的政策更公平; 4)除了基线风险和治疗效果外,使用群体状态的政策尽可能公平。我们的框架可以帮助指导利益相关者之间的讨论,以决定在分配稀缺资源时要强加的公平指标。
We study critical systems that allocate scarce resources to satisfy basic needs, such as homeless services that provide housing. These systems often support communities disproportionately affected by systemic racial, gender, or other injustices, so it is crucial to design these systems with fairness considerations in mind. To address this problem, we propose a framework for evaluating fairness in contextual resource allocation systems that is inspired by fairness metrics in machine learning. This framework can be applied to evaluate the fairness properties of a historical policy, as well as to impose constraints in the design of new (counterfactual) allocation policies. Our work culminates with a set of incompatibility results that investigate the interplay between the different fairness metrics we propose. Notably, we demonstrate that: 1) fairness in allocation and fairness in outcomes are usually incompatible; 2) policies that prioritize based on a vulnerability score will usually result in unequal outcomes across groups, even if the score is perfectly calibrated; 3) policies using contextual information beyond what is needed to characterize baseline risk and treatment effects can be fairer in their outcomes than those using just baseline risk and treatment effects; and 4) policies using group status in addition to baseline risk and treatment effects are as fair as possible given all available information. Our framework can help guide the discussion among stakeholders in deciding which fairness metrics to impose when allocating scarce resources.