The Problem of Infra-marginality in Outcome Tests for Discrimination

Outcome tests are a popular method for detecting bias in lending, hiring, and policing decisions. These tests operate by comparing the success rate of decisions across groups. For example, if loans made to minority applicants are observed to be repaid more often than loans made to whites, it suggest...

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1. VerfasserIn: Corbett-Davies, Sam (VerfasserIn)
Beteiligte: Simoiu, Camelia ; Goel, Sharad
Medienart: Elektronisch Aufsatz
Sprache:Englisch
Veröffentlicht: 2017
In: The annals of applied statistics
Jahr: 2017
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Zusammenfassung:Outcome tests are a popular method for detecting bias in lending, hiring, and policing decisions. These tests operate by comparing the success rate of decisions across groups. For example, if loans made to minority applicants are observed to be repaid more often than loans made to whites, it suggests that only exceptionally qualified minorities are granted loans, indicating discrimination. Outcome tests, however, are known to suffer from the problem of infra-marginality: even absent discrimination, the repayment rates for minority and white loan recipients might differ if the two groups have different risk distributions. Thus, at least in theory, outcome tests can fail to accurately detect discrimination. We develop a new statistical test of discrimination---the threshold test---that mitigates the problem of infra-marginality by jointly estimating decision thresholds and risk distributions via a hierarchical Bayesian latent variable model. Applying our test to a dataset of 4.5 million police stops in North Carolina, we find that the problem of infra-marginality is more than a theoretical possibility, and can cause the outcome test to yield misleading results in practice.Comment: To appear in The Annals of Applied Statistics, 201
ISSN:1941-7330
DOI:10.1214/17-aoas1058