International audienceDeep neural networks do not discriminate between spurious and causal patterns, and will only learn the most predictive ones while ignoring the others. This shortcut learning behaviour is detrimental to a network's ability to generalize to an unknown test-time distribution in which the spurious correlations do not hold anymore. Debiasing methods were developed to make networks robust to such spurious biases but require to know in advance if a dataset is biased and make heavy use of minority counter-examples that do not display the majority bias of their class. In this paper, we argue that such samples should not be necessarily needed because the "hidden" causal information is often also contained in biased images. To st...
Generative adversarial networks (GANs) are known for their strong abilities on capturing the underly...
Deep neural networks have achieved impressive results in many image classification tasks. However, s...
Due to growing concerns about demographic disparities and discrimination resulting from algorithmic ...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Bias in classifiers is a severe issue of modern deep learning methods, especially for their applicat...
Deep neural networks (DNNs), despite their impressive ability to generalize over-capacity networks, ...
Traditional machine learning operates under the assumption that training and testing data are drawn ...
International audienceDespite their performance, Artificial Neural Networks are not reliable enough ...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Neural networks are prone to be biased towards spurious correlations between classes and latent attr...
International audienceMany datasets are biased, namely they contain easy-to-learn features that are ...
Improperly constructed datasets can result in inaccurate inferences. For instance, models trained on...
Neural networks trained with ERM (empirical risk minimization) sometimes learn unintended decision r...
Adversarial examples easily mislead vision systems based on deep neural networks (DNNs) trained with...
Deep Learning has achieved tremendous success in recent years in several areas such as image classif...
Generative adversarial networks (GANs) are known for their strong abilities on capturing the underly...
Deep neural networks have achieved impressive results in many image classification tasks. However, s...
Due to growing concerns about demographic disparities and discrimination resulting from algorithmic ...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Bias in classifiers is a severe issue of modern deep learning methods, especially for their applicat...
Deep neural networks (DNNs), despite their impressive ability to generalize over-capacity networks, ...
Traditional machine learning operates under the assumption that training and testing data are drawn ...
International audienceDespite their performance, Artificial Neural Networks are not reliable enough ...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Neural networks are prone to be biased towards spurious correlations between classes and latent attr...
International audienceMany datasets are biased, namely they contain easy-to-learn features that are ...
Improperly constructed datasets can result in inaccurate inferences. For instance, models trained on...
Neural networks trained with ERM (empirical risk minimization) sometimes learn unintended decision r...
Adversarial examples easily mislead vision systems based on deep neural networks (DNNs) trained with...
Deep Learning has achieved tremendous success in recent years in several areas such as image classif...
Generative adversarial networks (GANs) are known for their strong abilities on capturing the underly...
Deep neural networks have achieved impressive results in many image classification tasks. However, s...
Due to growing concerns about demographic disparities and discrimination resulting from algorithmic ...