The field of automated machine learning (AutoML) introduces techniques that automate parts of the development of machine learning (ML) systems, accelerating the process and reducing barriers for novices. However, decisions derived from ML models can reproduce, amplify, or even introduce unfairness in our societies, causing harm to (groups of) individuals. In response, researchers have started to propose AutoML systems that jointly optimize fairness and predictive performance to mitigate fairness-related harm. However, fairness is a complex and inherently interdisciplinary subject, and solely posing it as an optimization problem can have adverse side effects. With this work, we aim to raise awareness among developers of AutoML systems about ...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
The past few years have seen a dramatic rise of academic and societal interest in fair machine learn...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
The field of automated machine learning (AutoML) introduces techniques that automate parts of the de...
In this work, we propose an Automated Machine Learning (AutoML) system to search for models not only...
Machine learning (ML) is increasingly being used in critical decision-making software, but incidents...
Machine learning is part of the daily life of people and companies worldwide. Unfortunately, machine...
Recent years have seen the development of many open-source ML fairness toolkits aimed at helping ML ...
Machine learning is part of the daily life of people and companies worldwide. Unfortunately, bias in...
Over the last years, a wide spread of Machine Learning in increasingly more, especially sensitive ar...
With the growing prevalence of AI algorithms and their use to prepare and even execute decisions, th...
Fairness-aware machine learning (fair-ml) techniques are algorithmic interventions designed to ensur...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
International audienceFairness emerged as an important requirement to guarantee that Machine Learnin...
Frameworks for fair machine learning are envisioned to play an important practical role in the evalu...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
The past few years have seen a dramatic rise of academic and societal interest in fair machine learn...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
The field of automated machine learning (AutoML) introduces techniques that automate parts of the de...
In this work, we propose an Automated Machine Learning (AutoML) system to search for models not only...
Machine learning (ML) is increasingly being used in critical decision-making software, but incidents...
Machine learning is part of the daily life of people and companies worldwide. Unfortunately, machine...
Recent years have seen the development of many open-source ML fairness toolkits aimed at helping ML ...
Machine learning is part of the daily life of people and companies worldwide. Unfortunately, bias in...
Over the last years, a wide spread of Machine Learning in increasingly more, especially sensitive ar...
With the growing prevalence of AI algorithms and their use to prepare and even execute decisions, th...
Fairness-aware machine learning (fair-ml) techniques are algorithmic interventions designed to ensur...
Fairness emerged as an important requirement to guarantee that Machine Learning (ML) predictive syst...
International audienceFairness emerged as an important requirement to guarantee that Machine Learnin...
Frameworks for fair machine learning are envisioned to play an important practical role in the evalu...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
The past few years have seen a dramatic rise of academic and societal interest in fair machine learn...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...