Typically, fair machine learning research focuses on a single decisionmaker and assumes that the underlying population is stationary. However, many of the critical domains motivating this work are characterized by competitive marketplaces with many decisionmakers. Realistically, we might expect only a subset of them to adopt any non-compulsory fairness-conscious policy, a situation that political philosophers call partial compliance. This possibility raises important questions: how does the strategic behavior of decision subjects in partial compliance settings affect the allocation outcomes? If k% of employers were to voluntarily adopt a fairness-promoting intervention, should we expect k% progress (in aggregate) towards the benefits of universal adoption, or will the dynamics of partial compliance wash out the hoped-for benefits? How might adopting a global (versus local) perspective impact the conclusions of an auditor? In this paper, we propose a simple model of an employment market, leveraging simulation as a tool to explore the impact of both interaction effects and incentive effects on outcomes and auditing metrics. Our key findings are that at equilibrium: (1) partial compliance (k% of employers) can result in far less than proportional (k%) progress towards the full compliance outcomes; (2) the gap is more severe when fair employers match global (vs local) statistics; (3) choices of local vs global statistics can paint dramatically different pictures of the performance vis-a-vis fairness desiderata of compliant versus non-compliant employers; and (4) partial compliance to local parity measures can induce extreme segregation.
翻译:通常,公平的机器学习研究侧重于单一的决策者,并假定基础人口是固定的。然而,许多推动这项工作的关键领域都以许多决策者的竞争性市场为特征。现实地说,我们可能只期望其中一部分采取非强制性的公平意识政策,政治哲学家称之为部分遵守的政策。这种可能性提出了重要问题:部分遵守情况下决定主体的战略行为如何影响分配结果?如果K%的雇主自愿采取公平促进公平的干预措施,我们是否期望(总体)在普遍接受的好处上取得一定的进展,或者部分遵守的动态会冲淡希望的好处?现实地说,我们可能只期望其中一部分采取非强制性的公平意识政策,政治哲学家称之为部分遵守政策。在本文中,我们提出了一个简单的就业市场模式,利用模拟作为一种工具,以探讨互动效应和激励效应对结果和审计衡量标准的影响。我们的主要结论是平衡:(1)部分遵守(雇主的k%)可以大大低于实现完全遵守结果的(k%)进展,或者部分遵守的动态会冲淡希望的好处?(2)当地方雇主不完全遵守结果时,全球不完全遵守标准的统计数据的差距会更严重时,(bral)比当地雇主更接近当地雇主的遵守标准的情况。