Though there is a growing literature on fairness for supervised learning, incorporating fairness into unsupervised learning has been less well-studied. This paper studies fairness in the context of principal component analysis (PCA). We first define fairness for dimensionality reduction, and our definition can be interpreted as saying a reduction is fair if information about a protected class (e.g., race or gender) cannot be inferred from the dimensionality-reduced data points. Next, we develop convex optimization formulations that can improve the fairness (with respect to our definition) of PCA and kernel PCA. These formulations are semidefinite programs, and we demonstrate their effectiveness using several datasets. We conclude by showing...
Recently, supervised dimensionality reduction has been gaining attention, owing to the realization t...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
Robust Principal Component Analysis (PCA) (or robust subspace recovery) is a particularly important ...
In dimension reduction problems, the adopted technique may produce disparities between the represent...
In this brief, kernel principal component analysis (KPCA) is reinterpreted as the solution to a conv...
We tackle the problem of algorithmic fairness, where the goal is to avoid the unfairly influence of ...
Principal Component Analysis (PCA) finds the best linear representation of data, and is an indispens...
Biased decision making by machine learning systems is increasingly recognized as an important issue....
Biased decision making by machine learning systems is increasingly recognized as an important issue....
This thesis investigates the problem of fair statistical learning. We argue that critical notions of...
Principal component analysis (PCA) finds the best linear representation of data and is an indispensa...
Principal Component Analysis (PCA) finds the best linear representation for data and is an indispens...
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 widely used technique for reducing dimensionality of multiva...
Recently, supervised dimensionality reduction has been gaining attention, owing to the realization t...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
Robust Principal Component Analysis (PCA) (or robust subspace recovery) is a particularly important ...
In dimension reduction problems, the adopted technique may produce disparities between the represent...
In this brief, kernel principal component analysis (KPCA) is reinterpreted as the solution to a conv...
We tackle the problem of algorithmic fairness, where the goal is to avoid the unfairly influence of ...
Principal Component Analysis (PCA) finds the best linear representation of data, and is an indispens...
Biased decision making by machine learning systems is increasingly recognized as an important issue....
Biased decision making by machine learning systems is increasingly recognized as an important issue....
This thesis investigates the problem of fair statistical learning. We argue that critical notions of...
Principal component analysis (PCA) finds the best linear representation of data and is an indispensa...
Principal Component Analysis (PCA) finds the best linear representation for data and is an indispens...
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 widely used technique for reducing dimensionality of multiva...
Recently, supervised dimensionality reduction has been gaining attention, owing to the realization t...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
Robust Principal Component Analysis (PCA) (or robust subspace recovery) is a particularly important ...