Binary decision making classifiers are not fair by default. Fairness requirements are an additional element to the decision making rationale, which is typically driven by maximizing some utility function. In that sense, algorithmic fairness can be formulated as a constrained optimization problem. This paper contributes to the discussion on how to implement fairness, focusing on the fairness concepts of positive predictive value (PPV) parity, false omission rate (FOR) parity, and sufficiency (which combines the former two). We show that group-specific threshold rules are optimal for PPV parity and FOR parity, similar to well-known results for other group fairness criteria. However, depending on the underlying population distributions and th...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
In past work on fairness in machine learning, the focus has been on forcingthe prediction of classif...
While the field of algorithmic fairness has brought forth many ways to measure and improve the fairn...
Binary decision making classifiers are not fair by default. Fairness requirements are an additional ...
Binary decision making classifiers are not fair by default. Fairness requirements are an additional ...
Machine learning classifiers are increasingly used to inform, or even make, decisions significantly ...
Machine learning classifiers are increasingly used to inform, or even make, decisions significantly ...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
Fairness in automated decision-making systems has gained increasing attention as their applications ...
Predictive algorithms are playing an increasingly prominent role in society, being used to predict r...
We investigate fairness in classification, where automated decisions are made for individuals from d...
Ensuring fairness of prediction-based decision making is based on statistical group fairness criteri...
Ensuring fairness of prediction-based decision making is based on statistical group fairness criteri...
© 2020 for this paper by its authors. Increasing concern about discrimination and bias in datadriven...
© 2019 Copyright held by the owner/author(s). Society increasingly relies on machine learning models...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
In past work on fairness in machine learning, the focus has been on forcingthe prediction of classif...
While the field of algorithmic fairness has brought forth many ways to measure and improve the fairn...
Binary decision making classifiers are not fair by default. Fairness requirements are an additional ...
Binary decision making classifiers are not fair by default. Fairness requirements are an additional ...
Machine learning classifiers are increasingly used to inform, or even make, decisions significantly ...
Machine learning classifiers are increasingly used to inform, or even make, decisions significantly ...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
Fairness in automated decision-making systems has gained increasing attention as their applications ...
Predictive algorithms are playing an increasingly prominent role in society, being used to predict r...
We investigate fairness in classification, where automated decisions are made for individuals from d...
Ensuring fairness of prediction-based decision making is based on statistical group fairness criteri...
Ensuring fairness of prediction-based decision making is based on statistical group fairness criteri...
© 2020 for this paper by its authors. Increasing concern about discrimination and bias in datadriven...
© 2019 Copyright held by the owner/author(s). Society increasingly relies on machine learning models...
The problem of algorithmic fairness is typically framed as the problem of finding a unique formal cr...
In past work on fairness in machine learning, the focus has been on forcingthe prediction of classif...
While the field of algorithmic fairness has brought forth many ways to measure and improve the fairn...