We tackle the problem of algorithmic fairness, where the goal is to avoid the unfairly influence of sensitive information, in the general context of regression with possible continuous sensitive attributes. We extend the framework of fair empirical risk minimization of [1] to this general scenario, covering in this way the whole standard supervised learning setting. Our generalized fairness measure reduces to well known notions of fairness available in literature. We derive learning guarantees for our method, that imply in particular its statistical consistency, both in terms of the risk and the fairness measure. We then specialize our approach to kernel methods and propose a convex fair estimator in that setting. We test the estimator on a...
In this paper, we present a general framework for estimating regression models subject to a user-def...
In this paper, we present a general framework for estimating regression models subject to a user-def...
Recently a parametric family of fairness metrics to quantify algorithmic fairness has been proposed ...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
This thesis investigates the problem of fair statistical learning. We argue that critical notions of...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
The concerns regarding ramifications of societal bias targeted at a particular identity group (for e...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
In this paper, we consider the problem of fair statistical inference involving outcome variables. Ex...
Decision-making algorithms are becoming intertwined with each aspect of society. As we automate task...
Machine learning based systems are reaching society at large and in many aspects of everyday life. T...
In this paper, we present a general framework for estimating regression models subject to a user-def...
In this paper, we present a general framework for estimating regression models subject to a user-def...
Recently a parametric family of fairness metrics to quantify algorithmic fairness has been proposed ...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
This thesis investigates the problem of fair statistical learning. We argue that critical notions of...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
The concerns regarding ramifications of societal bias targeted at a particular identity group (for e...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
In this paper, we consider the problem of fair statistical inference involving outcome variables. Ex...
Decision-making algorithms are becoming intertwined with each aspect of society. As we automate task...
Machine learning based systems are reaching society at large and in many aspects of everyday life. T...
In this paper, we present a general framework for estimating regression models subject to a user-def...
In this paper, we present a general framework for estimating regression models subject to a user-def...
Recently a parametric family of fairness metrics to quantify algorithmic fairness has been proposed ...