We consider the problem of learning fair decision systems from data in which a sensitive attribute might affect the decision along both fair and unfair pathways. We introduce a counterfactual approach to disregard effects along unfair pathways that does not incur in the same loss of individual-specific information as previous approaches. Our method corrects observations adversely affected by the sensitive attribute, and uses these to form a decision. We leverage recent developments in deep learning and approximate inference to develop a VAE-type method that is widely applicable to complex nonlinear models
In this paper, we consider the problem of fair statistical inference involving outcome variables. Ex...
In addition to reproducing discriminatory relationships in the training data, machine learning (ML) ...
In the dominant paradigm for designing equitable machine learning systems, one works to ensure that ...
Machine learning has become more important in real-life decision-making but people are concerned abo...
Causal approaches to fairness have seen substantial recent interest, both from the machine learning ...
Machine learning can impact people with legal or ethical consequences when it is used to automate de...
Machine learning can impact people with legal or ethical consequences when it is used to automate de...
Machine learning is now being used to make crucial decisions about people’s lives. For nearly all of...
Machine learning is now being used to make crucial decisions about people's lives. For nearly all of...
The problem of fair classification can be mollified if we develop a method to remove the embedded se...
Counterfactual frameworks have grown popular in machine learning for both explaining algorithmic dec...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
As Machine Learning models are being applied to a wide range of fields, the potential impact that th...
Algorithmic fairness is typically studied from the perspective of predictions. Instead, here we inve...
Fair machine learning aims to avoid treating individuals or sub-populations unfavourably based on \t...
In this paper, we consider the problem of fair statistical inference involving outcome variables. Ex...
In addition to reproducing discriminatory relationships in the training data, machine learning (ML) ...
In the dominant paradigm for designing equitable machine learning systems, one works to ensure that ...
Machine learning has become more important in real-life decision-making but people are concerned abo...
Causal approaches to fairness have seen substantial recent interest, both from the machine learning ...
Machine learning can impact people with legal or ethical consequences when it is used to automate de...
Machine learning can impact people with legal or ethical consequences when it is used to automate de...
Machine learning is now being used to make crucial decisions about people’s lives. For nearly all of...
Machine learning is now being used to make crucial decisions about people's lives. For nearly all of...
The problem of fair classification can be mollified if we develop a method to remove the embedded se...
Counterfactual frameworks have grown popular in machine learning for both explaining algorithmic dec...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
As Machine Learning models are being applied to a wide range of fields, the potential impact that th...
Algorithmic fairness is typically studied from the perspective of predictions. Instead, here we inve...
Fair machine learning aims to avoid treating individuals or sub-populations unfavourably based on \t...
In this paper, we consider the problem of fair statistical inference involving outcome variables. Ex...
In addition to reproducing discriminatory relationships in the training data, machine learning (ML) ...
In the dominant paradigm for designing equitable machine learning systems, one works to ensure that ...