The adoption of automated, data-driven decision making in an ever expanding range of applications has raised concerns about its potential unfairness towards certain social groups. In this context, a number of recent studies have focused on defining, detecting, and removing unfairness from data-driven decision systems. However, the existing notions of fairness, based on parity (equality) in treatment or outcomes for different social groups, tend to be quite stringent, limiting the overall decision making accuracy. In this paper, we draw inspiration from the fair-division and envy-freeness literature in economics and game theory and propose preference-based notions of fairness -- given the choice between various sets of decision treatments or...
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 ...
We consider settings in which the right notion of fairness is not captured by simple mathematical de...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
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 ...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
We investigate fairness in classification, where automated decisions are made for individuals from d...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Artificial Intelligence systems add significant value to decision-making. However, the systems must ...
While the field of algorithmic fairness has brought forth many ways to measure and improve the fairn...
International audienceAutomated decision systems are increasingly used to take consequential decisio...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Algorithmic decision-making has become ubiquitous in our societal and economic lives. With more and ...
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 ...
We consider settings in which the right notion of fairness is not captured by simple mathematical de...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
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 ...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
We investigate fairness in classification, where automated decisions are made for individuals from d...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Artificial Intelligence systems add significant value to decision-making. However, the systems must ...
While the field of algorithmic fairness has brought forth many ways to measure and improve the fairn...
International audienceAutomated decision systems are increasingly used to take consequential decisio...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Algorithmic decision-making has become ubiquitous in our societal and economic lives. With more and ...
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 ...
We consider settings in which the right notion of fairness is not captured by simple mathematical de...