27 pages, 10 figuresInternational audienceQuota-based fairness mechanisms like the so-called Rooney rule or four-fifths rule are used in selection problems such as hiring or college admission to reduce inequalities based on sensitive demographic attributes. These mechanisms are often viewed as introducing a trade-off between selection fairness and utility. In recent work, however, Kleinberg and Raghavan showed that, in the presence of implicit bias in estimating candidates' quality, the Rooney rule can increase the utility of the selection process. We argue that even in the absence of implicit bias, the estimates of candidates' quality from different groups may differ in another fundamental way, namely, in their variance. We term this pheno...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
In this paper we look at popular fairness methods that use causal counterfactuals. These methods cap...
Binary decision making classifiers are not fair by default. Fairness requirements are an additional ...
International audienceDiscrimination in selection problems such as hiring or college admission is of...
International audienceTo better understand discriminations and the effect of affirmative actions in ...
Over the past two decades, the notion of implicit bias has come to serve as an important com- ponent...
In selection processes such as hiring, promotion, and college admissions, implicit bias toward socia...
This article shows that measurement invariance (defined in terms of an invariant measurement model i...
Data-driven decision-making algorithms are increasingly applied in many domains with high social imp...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
International audienceStatistical discrimination results when a decision-maker observes an imperfect...
This article shows that measurement invariance (defined in terms of an invariant measurement model i...
This note contains a corrective and a generalization of results by Borsboom et al. (2008), based on ...
This note contains a corrective and a generalization of results by Borsboom et al. (2008), based on ...
International audienceTypically, merit is defined with respect to some intrinsic measure of worth. W...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
In this paper we look at popular fairness methods that use causal counterfactuals. These methods cap...
Binary decision making classifiers are not fair by default. Fairness requirements are an additional ...
International audienceDiscrimination in selection problems such as hiring or college admission is of...
International audienceTo better understand discriminations and the effect of affirmative actions in ...
Over the past two decades, the notion of implicit bias has come to serve as an important com- ponent...
In selection processes such as hiring, promotion, and college admissions, implicit bias toward socia...
This article shows that measurement invariance (defined in terms of an invariant measurement model i...
Data-driven decision-making algorithms are increasingly applied in many domains with high social imp...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
International audienceStatistical discrimination results when a decision-maker observes an imperfect...
This article shows that measurement invariance (defined in terms of an invariant measurement model i...
This note contains a corrective and a generalization of results by Borsboom et al. (2008), based on ...
This note contains a corrective and a generalization of results by Borsboom et al. (2008), based on ...
International audienceTypically, merit is defined with respect to some intrinsic measure of worth. W...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
In this paper we look at popular fairness methods that use causal counterfactuals. These methods cap...
Binary decision making classifiers are not fair by default. Fairness requirements are an additional ...