Auditing Fairness under Unobserved Confounding
International Conference on Artificial Intelligence and Statistics(2024)
摘要
A fundamental problem in decision-making systems is the presence of inequity
across demographic lines. However, inequity can be difficult to quantify,
particularly if our notion of equity relies on hard-to-measure notions like
risk (e.g., equal access to treatment for those who would die without it).
Auditing such inequity requires accurate measurements of individual risk, which
is difficult to estimate in the realistic setting of unobserved confounding. In
the case that these unobservables "explain" an apparent disparity, we may
understate or overstate inequity. In this paper, we show that one can still
give informative bounds on allocation rates among high-risk individuals, even
while relaxing or (surprisingly) even when eliminating the assumption that all
relevant risk factors are observed. We utilize the fact that in many real-world
settings (e.g., the introduction of a novel treatment) we have data from a
period prior to any allocation, to derive unbiased estimates of risk. We
demonstrate the effectiveness of our framework on a real-world study of
Paxlovid allocation to COVID-19 patients, finding that observed racial inequity
cannot be explained by unobserved confounders of the same strength as important
observed covariates.
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