International audienceMany datasets are biased, namely they contain easy-to-learn features that are highly correlated with the target class only in the dataset but not in the true underlying distribution of the data. For this reason, learning unbiased models from biased data has become a very relevant research topic in the last years. In this work, we tackle the problem of learning representations that are robust to biases. We first present a margin-based theoretical framework that allows us to clarify why recent contrastive losses (InfoNCE, SupCon, etc.) can fail when dealing with biased data. Based on that, we derive a novel formulation of the supervised contrastive loss (ϵ-SupInfoNCE), providing more accurate control of the minimal dista...
Contrastive learning is a representation learning method performed by contrasting a sample to other ...
This thesis investigates how visual similarities help to learn models robust to bias for computer vi...
Learning invariant representations is a critical first step in a number of machine learning tasks. A...
International audienceMany datasets are biased, namely they contain easy-to-learn features that are ...
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, ...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Vision-language models can encode societal biases and stereotypes, but there are challenges to measu...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Data augmentation is a crucial component in unsupervised contrastive learning (CL). It determines ho...
<p>The presence of bias in existing object recognition datasets is now well-known in the computer vi...
International audienceData augmentation is a crucial component in unsupervised contrastive learning ...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
Computer vision algorithms, e.g. for face recognition, favour groups of individuals that are better ...
International audienceDeep neural networks do not discriminate between spurious and causal patterns,...
Contrastive learning is a representation learning method performed by contrasting a sample to other ...
This thesis investigates how visual similarities help to learn models robust to bias for computer vi...
Learning invariant representations is a critical first step in a number of machine learning tasks. A...
International audienceMany datasets are biased, namely they contain easy-to-learn features that are ...
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, ...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Vision-language models can encode societal biases and stereotypes, but there are challenges to measu...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Data augmentation is a crucial component in unsupervised contrastive learning (CL). It determines ho...
<p>The presence of bias in existing object recognition datasets is now well-known in the computer vi...
International audienceData augmentation is a crucial component in unsupervised contrastive learning ...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
Computer vision algorithms, e.g. for face recognition, favour groups of individuals that are better ...
International audienceDeep neural networks do not discriminate between spurious and causal patterns,...
Contrastive learning is a representation learning method performed by contrasting a sample to other ...
This thesis investigates how visual similarities help to learn models robust to bias for computer vi...
Learning invariant representations is a critical first step in a number of machine learning tasks. A...