Automated data-driven decision making systems are increasingly being used to assist, or even replace humans in many settings. These systems function by learning from historical decisions, often taken by humans. In order to maximize the utility of these systems (or, classifiers), their training involves minimizing the errors (or, misclassifications) over the given historical data. However, it is quite possible that the optimally trained classifier makes decisions for people belonging to different social groups with different misclassification rates (e.g., misclassification rates for females are higher than for males), thereby placing these groups at an unfair disadvantage. To account for and avoid such unfairness, in this paper, we introduce...
Classifier construction is one of the most researched topics within the data mining and machine lear...
We study fairness in classification, where individuals are classified, e.g., admitted to a uni-versi...
Although many fairness criteria have been proposed to ensure that machine learning algorithms do not...
The rise of algorithmic decision making in a variety of applications has also raised concerns about ...
In recent years, automated data-driven decision-making systems have enjoyed a tremendous success in ...
We investigate fairness in classification, where automated decisions are made for individuals from d...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Decision-making algorithms are becoming intertwined with each aspect of society. As we automate task...
Machine learning algorithms called classifiers make discrete predictions about new data by training ...
We present a new approach for mitigating unfairness in learned classifiers. In particular, we focus ...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
In real-world classification settings, individuals respond to classifier predictions by updating the...
International audienceStatistical algorithms are usually helping in making decisions in many aspects...
The use of machine learning models in decision support systems with high societal impact raised conc...
Classifier construction is one of the most researched topics within the data mining and machine lear...
We study fairness in classification, where individuals are classified, e.g., admitted to a uni-versi...
Although many fairness criteria have been proposed to ensure that machine learning algorithms do not...
The rise of algorithmic decision making in a variety of applications has also raised concerns about ...
In recent years, automated data-driven decision-making systems have enjoyed a tremendous success in ...
We investigate fairness in classification, where automated decisions are made for individuals from d...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Decision-making algorithms are becoming intertwined with each aspect of society. As we automate task...
Machine learning algorithms called classifiers make discrete predictions about new data by training ...
We present a new approach for mitigating unfairness in learned classifiers. In particular, we focus ...
Machine Learning has become more and more prominent in our daily lives as the Information Age and Fo...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
In real-world classification settings, individuals respond to classifier predictions by updating the...
International audienceStatistical algorithms are usually helping in making decisions in many aspects...
The use of machine learning models in decision support systems with high societal impact raised conc...
Classifier construction is one of the most researched topics within the data mining and machine lear...
We study fairness in classification, where individuals are classified, e.g., admitted to a uni-versi...
Although many fairness criteria have been proposed to ensure that machine learning algorithms do not...