International audienceDiscrimination in selection problems such as hiring or college admission is often explained by implicit bias from the decision maker against disadvantaged demographic groups. In this paper, we consider a model where the decision maker receives a noisy estimate of each candidate's quality, whose variance depends on the candidate's group-we argue that such differential variance is a key feature of many selection problems. We analyze two notable settings: in the first, the noise variances are unknown to the decision maker who simply picks the candidates with the highest estimated quality independently of their group; in the second, the variances are known and the decision maker picks candidates having the highest expected...
Consider a decision maker who selects between paired random draws from two unconditional distributio...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
Applications based on machine learning models have now become an indispensable part of the everyday ...
27 pages, 10 figuresInternational audienceQuota-based fairness mechanisms like the so-called Rooney ...
International audienceTo better understand discriminations and the effect of affirmative actions in ...
International audienceStatistical discrimination results when a decision-maker observes an imperfect...
Data-driven decision-making algorithms are increasingly applied in many domains with high social imp...
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...
Over the past two decades, the notion of implicit bias has come to serve as an important com- ponent...
This article shows that measurement invariance (defined in terms of an invariant measurement model i...
International audienceStatistical algorithms are usually helping in making decisions in many aspects...
International audienceApplications based on machine learning models have now become an indispensable...
International audienceTypically, merit is defined with respect to some intrinsic measure of worth. W...
In real-world classification settings, individuals respond to classifier predictions by updating the...
Consider a decision maker who selects between paired random draws from two unconditional distributio...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
Applications based on machine learning models have now become an indispensable part of the everyday ...
27 pages, 10 figuresInternational audienceQuota-based fairness mechanisms like the so-called Rooney ...
International audienceTo better understand discriminations and the effect of affirmative actions in ...
International audienceStatistical discrimination results when a decision-maker observes an imperfect...
Data-driven decision-making algorithms are increasingly applied in many domains with high social imp...
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...
Over the past two decades, the notion of implicit bias has come to serve as an important com- ponent...
This article shows that measurement invariance (defined in terms of an invariant measurement model i...
International audienceStatistical algorithms are usually helping in making decisions in many aspects...
International audienceApplications based on machine learning models have now become an indispensable...
International audienceTypically, merit is defined with respect to some intrinsic measure of worth. W...
In real-world classification settings, individuals respond to classifier predictions by updating the...
Consider a decision maker who selects between paired random draws from two unconditional distributio...
We study allocation behavior when outcome inequality is inevitable but a fair process is feasible, a...
Applications based on machine learning models have now become an indispensable part of the everyday ...