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Fields Changed

Registration

Field Before After
Study Withdrawn No
Intervention Completion Date October 06, 2020
Data Collection Complete Yes
Final Sample Size: Number of Clusters (Unit of Randomization) 8
Was attrition correlated with treatment status? No
Final Sample Size: Total Number of Observations 779 responses received; 642 retained for analysis
Data Collection Completion Date October 06, 2020
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Papers

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Paper Abstract Using a vignette-based survey experiment on Amazon’s Mechanical Turk, we measure how people’s assessments of the fairness of race-based hiring decisions vary with the motivation and circumstances surrounding the discriminatory act and the races of the parties involved. Regardless of their political leaning, our subjects react in very similar ways to the employer’s motivations for the action, such as the quality of information on which statistical discrimination is based. Compared to conservatives, moderates and liberals are much less accepting of discriminatory actions, and consider the discriminatee’s race when making their fairness assessments. We describe four pre-registered models of fairness – (simple) utilitarianism, race-blind rules (RBRs), racial in-group bias, and belief-based utilitarianism (BBU) – and show that the latter two are inconsistent with major aggregate patterns in our data. Instead, we argue that a two-group framework, in which one group (mostly self-described conservatives) values employers’ decision rights and the remaining respondents value utilitarian concerns, explains our main findings well. In this model, both groups also value applying a consistent set of fairness rules in a race-blind manner.
Paper Citation Kuhn, Peter and Trevor Osaki (2023) "When is Discrimination Unfair?" NBER working paper no. 30236
Paper URL https://www.nber.org/papers/w30236
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