We investigate the fairness concerns of training a machine learning model using data with missing values. Even though there are a number of fairness intervention methods in the literature, most of them require a complete training set as input. In practice, data can have missing values, and data missing patterns can depend on group attributes (e.g. gender or race). Simply applying off-the-shelf fair learning algorithms to an imputed dataset may lead to an unfair model. In this paper, we first theoretically analyze different sources of discrimination risks when training with an imputed dataset. Then, we propose an integrated approach based on decision trees that does not require a separate process of imputation and learning. Instead, we train...
In many application settings, the data have missing entries which make analysis challenging. An abun...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
International audienceOne of the challenges of deploying machine learning (ML) systems is fairness. ...
Missing values in real-world data pose a significant and unique challenge to algorithmic fairness. D...
[EN] Nowadays, there is an increasing concern in machine learning about the causes underlying unfair...
Training datasets for machine learning often have some form of missingness. For example, to learn a ...
As we enter a new decade, more and more governance in our society is assisted by autonomous decision...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
Fairness in machine learning is getting rising attention as it is directly related to real-world app...
In recent years, automated data-driven decision-making systems have enjoyed a tremendous success in ...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
OBJECTIVE: Increasing the awareness of how incomplete data affects learning and classification accur...
In many application settings, the data have missing entries which make analysis challenging. An abun...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
International audienceOne of the challenges of deploying machine learning (ML) systems is fairness. ...
Missing values in real-world data pose a significant and unique challenge to algorithmic fairness. D...
[EN] Nowadays, there is an increasing concern in machine learning about the causes underlying unfair...
Training datasets for machine learning often have some form of missingness. For example, to learn a ...
As we enter a new decade, more and more governance in our society is assisted by autonomous decision...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
Fairness in machine learning is getting rising attention as it is directly related to real-world app...
In recent years, automated data-driven decision-making systems have enjoyed a tremendous success in ...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
OBJECTIVE: Increasing the awareness of how incomplete data affects learning and classification accur...
In many application settings, the data have missing entries which make analysis challenging. An abun...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
International audienceOne of the challenges of deploying machine learning (ML) systems is fairness. ...