In real world datasets, particular groups are under-represented, much rarer than others, and machine learning classifiers will often preform worse on under-represented populations. This problem is aggravated across many domains where datasets are class imbalanced, with a minority class far rarer than the majority class. Naive approaches to handle under-representation and class imbalance include training sub-population specific classifiers that handle class imbalance or training a global classifier that overlooks sub-population disparities and aims to achieve high overall accuracy by handling class imbalance. In this study, we find that these approaches are vulnerable in class imbalanced datasets with minority sub-populations. We introduced ...
Computer vision algorithms, e.g. for face recognition, favour groups of individuals that are better ...
Facial recognition has been a breakthrough in the development of Neural Networks and Artificial Inte...
As machine learning systems are increasingly used to make real world legal and financial decisions, ...
Fairness in machine learning is getting rising attention as it is directly related to real-world app...
We show that deep networks trained to satisfy demographic parity often do so through a form of race ...
We consider the problem of whether a Neural Network (NN) model satisfies global individual fairness....
Machine learning based systems and products are reaching society at large in many aspects of everyda...
Trustworthiness, and in particular Algorithmic Fairness, is emerging as one of the most trending top...
There is currently a great expansion of the impact of machine learning algorithms on our lives, prom...
In real-world classification settings, individuals respond to classifier predictions by updating the...
In this project, the Ensemble Deep Random Vector Functional Link (edRVFL) network has been modified ...
We study a fair machine learning (ML) setting where an 'upstream' model developer is tasked with pro...
Current face recognition systems achieve high performance on several benchmark tests. Despite this p...
Deep learning has achieved significant improvements in a variety of tasks in computer vision applica...
Due to growing concerns about demographic disparities and discrimination resulting from algorithmic ...
Computer vision algorithms, e.g. for face recognition, favour groups of individuals that are better ...
Facial recognition has been a breakthrough in the development of Neural Networks and Artificial Inte...
As machine learning systems are increasingly used to make real world legal and financial decisions, ...
Fairness in machine learning is getting rising attention as it is directly related to real-world app...
We show that deep networks trained to satisfy demographic parity often do so through a form of race ...
We consider the problem of whether a Neural Network (NN) model satisfies global individual fairness....
Machine learning based systems and products are reaching society at large in many aspects of everyda...
Trustworthiness, and in particular Algorithmic Fairness, is emerging as one of the most trending top...
There is currently a great expansion of the impact of machine learning algorithms on our lives, prom...
In real-world classification settings, individuals respond to classifier predictions by updating the...
In this project, the Ensemble Deep Random Vector Functional Link (edRVFL) network has been modified ...
We study a fair machine learning (ML) setting where an 'upstream' model developer is tasked with pro...
Current face recognition systems achieve high performance on several benchmark tests. Despite this p...
Deep learning has achieved significant improvements in a variety of tasks in computer vision applica...
Due to growing concerns about demographic disparities and discrimination resulting from algorithmic ...
Computer vision algorithms, e.g. for face recognition, favour groups of individuals that are better ...
Facial recognition has been a breakthrough in the development of Neural Networks and Artificial Inte...
As machine learning systems are increasingly used to make real world legal and financial decisions, ...