Trustworthiness, and in particular Algorithmic Fairness, is emerging as one of the most trending topics in Machine Learning (ML). In fact, ML is now ubiquitous in decision making scenarios, highlighting the necessity of discovering and correcting unfair treatments of (historically discriminated) subgroups in the population (e.g., based on gender, ethnicity, political and sexual orientation). This necessity is even more compelling and challenging when unexplainable black-box Deep Neural Networks (DNN) are exploited. An emblematic example of this necessity is provided by the detected unfair behavior of the ML-based face recognition systems exploited by law enforcement agencies in the United States. To tackle these issues, we first propose dif...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Facial expression recognition using deep neural networks has become very popular due to their succes...
The remarkable performance of deep learning models and their applications in consequential domains (...
Trustworthiness, and in particular Algorithmic Fairness, is emerging as one of the most trending top...
The central goal of Algorithmic Fairness is to develop AI-based systems which do not discriminate su...
The central goal of Algorithmic Fairness is to develop AI-based systems which do not discriminate su...
The central goal of Algorithmic Fairness is to develop AI-based systems which do not discriminate su...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
We propose a discrimination-aware learning method to improve both the accuracy and fairness of biase...
We propose a discrimination-aware learning method to improve both the accuracy and fairness of biase...
The performance of deep neural networks for image recognition tasks such as predicting a smiling fac...
Facial recognition has been a breakthrough in the development of Neural Networks and Artificial Inte...
International audienceIn spite of the high performance and reliability of deep learning algorithms i...
International audienceIn spite of the high performance and reliability of deep learning algorithms i...
Decisions based on algorithmic, machine learning models can be unfair, reproducing biases in histori...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Facial expression recognition using deep neural networks has become very popular due to their succes...
The remarkable performance of deep learning models and their applications in consequential domains (...
Trustworthiness, and in particular Algorithmic Fairness, is emerging as one of the most trending top...
The central goal of Algorithmic Fairness is to develop AI-based systems which do not discriminate su...
The central goal of Algorithmic Fairness is to develop AI-based systems which do not discriminate su...
The central goal of Algorithmic Fairness is to develop AI-based systems which do not discriminate su...
Machine learning based systems and products are reaching society at large in many aspects of everyda...
We propose a discrimination-aware learning method to improve both the accuracy and fairness of biase...
We propose a discrimination-aware learning method to improve both the accuracy and fairness of biase...
The performance of deep neural networks for image recognition tasks such as predicting a smiling fac...
Facial recognition has been a breakthrough in the development of Neural Networks and Artificial Inte...
International audienceIn spite of the high performance and reliability of deep learning algorithms i...
International audienceIn spite of the high performance and reliability of deep learning algorithms i...
Decisions based on algorithmic, machine learning models can be unfair, reproducing biases in histori...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Facial expression recognition using deep neural networks has become very popular due to their succes...
The remarkable performance of deep learning models and their applications in consequential domains (...