We study the problem of formally verifying individual fairness of decision tree ensembles, as well as training tree models which maximize both accuracy and individual fairness. In our approach, fairness verification and fairness-aware training both rely on a notion of stability of a classifier, which is a generalization of the standard notion of robustness to input perturbations used in adversarial machine learning. Our verification and training methods leverage abstract interpretation, a well-established mathematical framework for designing computable, correct, and precise approximations of potentially infinite behaviors. We implemented our fairness-aware learning method by building on a tool for adversarial training of decision trees. We ...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
Fair machine learning has been focusing on the development of equitable algorithms that address disc...
Fairness, through its many forms and definitions, has become an important issue facing the machine l...
International audienceWe study the problem of formally verifying individual fairness of decision tre...
We present a new approach to the global fairness verification of tree-based classifiers. Given a tre...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
Interpretable and fair machine learning models are required for many applications, such as credit as...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
International audienceOne of the challenges of deploying machine learning (ML) systems is fairness. ...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
© 2019 Neural information processing systems foundation. All rights reserved. We study the robustnes...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
Fair machine learning has been focusing on the development of equitable algorithms that address disc...
Fairness, through its many forms and definitions, has become an important issue facing the machine l...
International audienceWe study the problem of formally verifying individual fairness of decision tre...
We present a new approach to the global fairness verification of tree-based classifiers. Given a tre...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
Interpretable and fair machine learning models are required for many applications, such as credit as...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
We study the problem of formally and automatically verifying robustness properties of decision tree ...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
International audienceOne of the challenges of deploying machine learning (ML) systems is fairness. ...
International audienceUnwanted bias is a major concern in machine learning, raising in particular si...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
© 2019 Neural information processing systems foundation. All rights reserved. We study the robustnes...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
Fair machine learning has been focusing on the development of equitable algorithms that address disc...
Fairness, through its many forms and definitions, has become an important issue facing the machine l...