[EN] Nowadays, there is an increasing concern in machine learning about the causes underlying unfair decision making, that is, algorithmic decisions discriminating some groups over others, especially with groups that are defined over protected attributes, such as gender, race and nationality. Missing values are one frequent manifestation of all these latent causes: protected groups are more reluctant to give information that could be used against them, sensitive information for some groups can be erased by human operators, or data acquisition may simply be less complete and systematic for minority groups. However, most recent techniques, libraries and experimental results dealing with fairness in machine learning have simply ignored missing...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
There is growing concern that decision-making informed by machine learning (ML) algorithms may unfai...
This work aims to systematically analyze and address fairness issues arising in machine learning mod...
Abstract: Nowadays, there is an increasing concern in machine learning about the causes underlying u...
As we enter a new decade, more and more governance in our society is assisted by autonomous decision...
Missing values in real-world data pose a significant and unique challenge to algorithmic fairness. D...
We investigate the fairness concerns of training a machine learning model using data with missing va...
Training datasets for machine learning often have some form of missingness. For example, to learn a ...
The problem of fair machine learning has drawn much attention over the last few years and the bulk o...
Analysis of the fairness of machine learning (ML) algorithms recently attracted many researchers' in...
One of the difficulties of artificial intelligence is to ensure that model decisions are fair and fr...
With the growing prevalence of AI algorithms and their use to prepare and even execute decisions, th...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
International audienceThe decisions resulting from supervised learning algorithms are coming from hi...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
There is growing concern that decision-making informed by machine learning (ML) algorithms may unfai...
This work aims to systematically analyze and address fairness issues arising in machine learning mod...
Abstract: Nowadays, there is an increasing concern in machine learning about the causes underlying u...
As we enter a new decade, more and more governance in our society is assisted by autonomous decision...
Missing values in real-world data pose a significant and unique challenge to algorithmic fairness. D...
We investigate the fairness concerns of training a machine learning model using data with missing va...
Training datasets for machine learning often have some form of missingness. For example, to learn a ...
The problem of fair machine learning has drawn much attention over the last few years and the bulk o...
Analysis of the fairness of machine learning (ML) algorithms recently attracted many researchers' in...
One of the difficulties of artificial intelligence is to ensure that model decisions are fair and fr...
With the growing prevalence of AI algorithms and their use to prepare and even execute decisions, th...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
International audienceThe decisions resulting from supervised learning algorithms are coming from hi...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
There is growing concern that decision-making informed by machine learning (ML) algorithms may unfai...
This work aims to systematically analyze and address fairness issues arising in machine learning mod...