In addition to reproducing discriminatory relationships in the training data, machine learning (ML) systems can also introduce or amplify discriminatory effects. We refer to this as introduced unfairness, and investigate the conditions under which it may arise. To this end, we propose introduced total variation as a measure of introduced unfairness, and establish graphical conditions under which it may be incentivised to occur. These criteria imply that adding the sensitive attribute as a feature removes the incentive for introduced variation under well-behaved loss functions. Additionally, taking a causal perspective, introduced path-specific effects shed light on the issue of when specific paths should be considered fair
Supervised machine learning is a growing assistive framework for professional decision-making. Yet b...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
Fair inference in supervised learning is an important and active area of research, yielding a range ...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Machine learning based systems are reaching society at large and in many aspects of everyday life. T...
Part 1: Keynotes and Invited PapersInternational audienceWe offer a graphical interpretation of unfa...
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...
In this paper, we consider the problem of fair statistical inference involving outcome variables. Ex...
Recently, an increasing amount of research has focused on methods to assess and account for fairness...
Fairness in machine learning has attained significant focus due to the widespread application of mac...
Machine learning algorithms can produce biased outcome/prediction, typically, against minorities and...
Supervised machine learning is a growing assistive framework for professional decision-making. Yet b...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
Fair inference in supervised learning is an important and active area of research, yielding a range ...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Machine learning based systems are reaching society at large and in many aspects of everyday life. T...
Part 1: Keynotes and Invited PapersInternational audienceWe offer a graphical interpretation of unfa...
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...
In this paper, we consider the problem of fair statistical inference involving outcome variables. Ex...
Recently, an increasing amount of research has focused on methods to assess and account for fairness...
Fairness in machine learning has attained significant focus due to the widespread application of mac...
Machine learning algorithms can produce biased outcome/prediction, typically, against minorities and...
Supervised machine learning is a growing assistive framework for professional decision-making. Yet b...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...