Due to growing concerns about demographic disparities and discrimination resulting from algorithmic and model-based decision-making, recent research has focused on mitigating biases against already disadvantaged or marginalised groups in classification models. From the perspective of classification parity, the two commonest metrics for assessing fairness are statistical parity and equality of opportunity. Current approaches to debiasing in classification either require the knowledge of the protected attribute before or during training or are entirely agnostic to the model class and parameters. This work considers differentiable proxy functions for statistical parity and equality of opportunity and introduces two novel debiasing techniques f...
The goal of fairness in classification is to learn a classifier that does not discriminate against g...
We propose a fairness-aware learning framework that mitigates intersectional subgroup bias associate...
Recently, there is growing concern that machine-learning models, which currently assist or even auto...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Recent discoveries have revealed that deep neural networks might behave in a biased manner in many r...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Deep learning models often learn to make predictions that rely on sensitive social attributes like g...
Developing learning methods which do not discriminate subgroups in the population is the central goa...
Bias in classifiers is a severe issue of modern deep learning methods, especially for their applicat...
In real world datasets, particular groups are under-represented, much rarer than others, and machine...
International audienceDeep neural networks do not discriminate between spurious and causal patterns,...
We consider the problem of whether a Neural Network (NN) model satisfies global individual fairness....
There is currently a great expansion of the impact of machine learning algorithms on our lives, prom...
Discriminative methods have shown significant improvements over traditional generative methods in ma...
We show that deep networks trained to satisfy demographic parity often do so through a form of race ...
The goal of fairness in classification is to learn a classifier that does not discriminate against g...
We propose a fairness-aware learning framework that mitigates intersectional subgroup bias associate...
Recently, there is growing concern that machine-learning models, which currently assist or even auto...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Recent discoveries have revealed that deep neural networks might behave in a biased manner in many r...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Deep learning models often learn to make predictions that rely on sensitive social attributes like g...
Developing learning methods which do not discriminate subgroups in the population is the central goa...
Bias in classifiers is a severe issue of modern deep learning methods, especially for their applicat...
In real world datasets, particular groups are under-represented, much rarer than others, and machine...
International audienceDeep neural networks do not discriminate between spurious and causal patterns,...
We consider the problem of whether a Neural Network (NN) model satisfies global individual fairness....
There is currently a great expansion of the impact of machine learning algorithms on our lives, prom...
Discriminative methods have shown significant improvements over traditional generative methods in ma...
We show that deep networks trained to satisfy demographic parity often do so through a form of race ...
The goal of fairness in classification is to learn a classifier that does not discriminate against g...
We propose a fairness-aware learning framework that mitigates intersectional subgroup bias associate...
Recently, there is growing concern that machine-learning models, which currently assist or even auto...