In dimension reduction problems, the adopted technique may produce disparities between the representation errors of two or more different groups. For instance, in the projected space, a specific class can be better represented in comparison with the other ones. Depending on the situation, this unfair result may introduce ethical concerns. In this context, this paper investigates how a fairness measure can be considered when performing dimension reduction through principal component analysis. Since both reconstruction error and fairness measure must be taken into account, we propose a multi-objective-based approach to tackle the Fair Principal Component Analysis problem. The experiments attest that a fairer result can be achieved with a very...
In our recent publication [1], we began with an understanding that many real-world applications of m...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Gasser for many fruitful discussions, the referees for their constructive criticism, and the editor ...
Though there is a growing literature on fairness for supervised learning, incorporating fairness int...
The work contains two major lines of research: subset selection and multi-criteria dimensionality re...
Algorithmic Fairness is an established area of machine learning, willing to reduce the influence of ...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
Fair machine learning has been focusing on the development of equitable algorithms that address disc...
The goal of fairness in classification is to learn a classifier that does not discriminate against g...
Principal Component Analysis (PCA) is the most widely used unsupervised dimensionality reduc-tion ap...
Principal Component Analysis (PCA) is a very successful dimensionality reduction technique, widely u...
Gasser for many fruitful discussions, the referees for their constructive criticism, and the editor ...
Fairness in automated decision-making systems has gained increasing attention as their applications ...
Robust principal component analysis (PCA) is one of the most important dimension reduction technique...
The past few years have seen a dramatic rise of academic and societal interest in fair machine learn...
In our recent publication [1], we began with an understanding that many real-world applications of m...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Gasser for many fruitful discussions, the referees for their constructive criticism, and the editor ...
Though there is a growing literature on fairness for supervised learning, incorporating fairness int...
The work contains two major lines of research: subset selection and multi-criteria dimensionality re...
Algorithmic Fairness is an established area of machine learning, willing to reduce the influence of ...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
Fair machine learning has been focusing on the development of equitable algorithms that address disc...
The goal of fairness in classification is to learn a classifier that does not discriminate against g...
Principal Component Analysis (PCA) is the most widely used unsupervised dimensionality reduc-tion ap...
Principal Component Analysis (PCA) is a very successful dimensionality reduction technique, widely u...
Gasser for many fruitful discussions, the referees for their constructive criticism, and the editor ...
Fairness in automated decision-making systems has gained increasing attention as their applications ...
Robust principal component analysis (PCA) is one of the most important dimension reduction technique...
The past few years have seen a dramatic rise of academic and societal interest in fair machine learn...
In our recent publication [1], we began with an understanding that many real-world applications of m...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Gasser for many fruitful discussions, the referees for their constructive criticism, and the editor ...