Training datasets for machine learning often have some form of missingness. For example, to learn a model for deciding whom to give a loan, the available training data includes individuals who were given a loan in the past, but not those who were not. This missingness, if ignored, nullifies any fairness guarantee of the training procedure when the model is deployed. Using causal graphs, we characterize the missingness mechanisms in different real-world scenarios. We show conditions under which various distributions, used in popular fairness algorithms, can or can not be recovered from the training data. Our theoretical results imply that many of these algorithms can not guarantee fairness in practice. Modeling missingness also helps to iden...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
International audienceIt is crucial to consider the social and ethical consequences of AI and ML bas...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
We investigate the fairness concerns of training a machine learning model using data with missing va...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
[EN] Nowadays, there is an increasing concern in machine learning about the causes underlying unfair...
Machine learning algorithms can produce biased outcome/prediction, typically, against minorities and...
As we enter a new decade, more and more governance in our society is assisted by autonomous decision...
Addressing the problem of fairness is crucial to safely use machine learning algorithms to support d...
Missing values in real-world data pose a significant and unique challenge to algorithmic fairness. D...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
With the wide application of machine learning driven automated decisions (e.g., education, loan appr...
Problem Statement: One potential kind of algorithmic bias is unevenly distributed model inaccuracies...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
International audienceIt is crucial to consider the social and ethical consequences of AI and ML bas...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...
This thesis scrutinizes common assumptions underlying traditional machine learning approaches to fai...
We investigate the fairness concerns of training a machine learning model using data with missing va...
Addressing fairness concerns about machine learning models is a crucial step towards their long-term...
[EN] Nowadays, there is an increasing concern in machine learning about the causes underlying unfair...
Machine learning algorithms can produce biased outcome/prediction, typically, against minorities and...
As we enter a new decade, more and more governance in our society is assisted by autonomous decision...
Addressing the problem of fairness is crucial to safely use machine learning algorithms to support d...
Missing values in real-world data pose a significant and unique challenge to algorithmic fairness. D...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
As machine learning (ML) is increasingly used for decision making in scenarios that impact humans, t...
With the wide application of machine learning driven automated decisions (e.g., education, loan appr...
Problem Statement: One potential kind of algorithmic bias is unevenly distributed model inaccuracies...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
International audienceIt is crucial to consider the social and ethical consequences of AI and ML bas...
One of the challenges of deploying machine learning (ML) systems is fairness. Datasets often include...