Besides its common use cases in epidemiology, political, and social sciences, causality turns out to be crucial in evaluating the fairness of automated decisions, both in a legal and everyday sense. We provide arguments and examples, of why causality is particularly important for fairness evaluation. In particular, we point out the social impact of non-causal predictions and the legal anti-discrimination process that relies on causal claims. We conclude with a discussion about the challenges and limitations of applying causality in practical scenarios as well as possible solutions
Addressing the problem of fairness is crucial to safely use machine learning algorithms to support d...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
The problem of fair machine learning has drawn much attention over the last few years and the bulk o...
Besides its common use cases in epidemiology, political, and social sciences, causality turns out to...
With the wide application of machine learning driven automated decisions (e.g., education, loan appr...
In this work, we argue for the importance of causal reasoning in creating fair algorithms for decisi...
It is crucial to consider the social and ethical consequences of AI and ML based decisions for the s...
Addressing the problem of fairness is crucial to safely use machine learning algorithms to support d...
AI plays an increasingly prominent role in society since decisions that were once made by humans are...
Fairness is a social norm and a legal requirement in today\u27s society. Many laws and regulations (...
Machine learning algorithms can produce biased outcome/prediction, typically, against minorities and...
As Machine Learning models are being applied to a wide range of fields, the potential impact that th...
Machine learning can impact people with legal or ethical consequences when it is used to automate de...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
Over the last years, a wide spread of Machine Learning in increasingly more, especially sensitive ar...
Addressing the problem of fairness is crucial to safely use machine learning algorithms to support d...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
The problem of fair machine learning has drawn much attention over the last few years and the bulk o...
Besides its common use cases in epidemiology, political, and social sciences, causality turns out to...
With the wide application of machine learning driven automated decisions (e.g., education, loan appr...
In this work, we argue for the importance of causal reasoning in creating fair algorithms for decisi...
It is crucial to consider the social and ethical consequences of AI and ML based decisions for the s...
Addressing the problem of fairness is crucial to safely use machine learning algorithms to support d...
AI plays an increasingly prominent role in society since decisions that were once made by humans are...
Fairness is a social norm and a legal requirement in today\u27s society. Many laws and regulations (...
Machine learning algorithms can produce biased outcome/prediction, typically, against minorities and...
As Machine Learning models are being applied to a wide range of fields, the potential impact that th...
Machine learning can impact people with legal or ethical consequences when it is used to automate de...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
Over the last years, a wide spread of Machine Learning in increasingly more, especially sensitive ar...
Addressing the problem of fairness is crucial to safely use machine learning algorithms to support d...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
The problem of fair machine learning has drawn much attention over the last few years and the bulk o...