There is growing concern that decision-making informed by machine learning (ML) algorithms may unfairly discriminate based on personal demographic attributes, such as race and gender. Scholars have responded by introducing numerous mathematical definitions of fairness to test the algorithm, many of which are in conflict with one another. However, these reductionist representations of fairness often bear little resemblance to real-life fairness considerations, which in practice are highly contextual. Moreover, fairness metrics tend to be implemented in narrow and targeted toolkits that are difficult to integrate into an algorithm’s broader ethical assessment. In this paper, we derive lessons from ethical philosophy and welfare econ...
AbstractTo address the rising concern that algorithmic decision-making may reinforce discriminatory ...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
Inspired by recent breakthroughs in predictive modeling, practitioners in both industry and governme...
There is growing concern that decision-making informed by machine learning (ML) algorithms may unfai...
There is growing concern that decision-making informed by machine learning (ML) algorithms may unfai...
Abstract: There is growing concern that decision-making informed by machine learning (ML) algorithms...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Fairness is one of the most prominent values in the Ethics and Artificial Intelligence (AI) debate a...
Fairness is one of the most prominent values in the Ethics and Artificial Intelligence (AI) debate a...
Fairness is one of the most prominent values in the Ethics and Artificial Intelligence (AI) debate a...
The problem of fair machine learning has drawn much attention over the last few years and the bulk o...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Fairness-aware machine learning (fair-ml) techniques are algorithmic interventions designed to ensur...
To encourage ethical thinking in Machine Learning (ML) development, fairness researchers have create...
The increasing use of algorithmic decision-making systems has raised significant legal and ethical c...
AbstractTo address the rising concern that algorithmic decision-making may reinforce discriminatory ...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
Inspired by recent breakthroughs in predictive modeling, practitioners in both industry and governme...
There is growing concern that decision-making informed by machine learning (ML) algorithms may unfai...
There is growing concern that decision-making informed by machine learning (ML) algorithms may unfai...
Abstract: There is growing concern that decision-making informed by machine learning (ML) algorithms...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Fairness is one of the most prominent values in the Ethics and Artificial Intelligence (AI) debate a...
Fairness is one of the most prominent values in the Ethics and Artificial Intelligence (AI) debate a...
Fairness is one of the most prominent values in the Ethics and Artificial Intelligence (AI) debate a...
The problem of fair machine learning has drawn much attention over the last few years and the bulk o...
The field of fair machine learning aims to ensure that decisions guided by algorithms are equitable....
Fairness-aware machine learning (fair-ml) techniques are algorithmic interventions designed to ensur...
To encourage ethical thinking in Machine Learning (ML) development, fairness researchers have create...
The increasing use of algorithmic decision-making systems has raised significant legal and ethical c...
AbstractTo address the rising concern that algorithmic decision-making may reinforce discriminatory ...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
Inspired by recent breakthroughs in predictive modeling, practitioners in both industry and governme...