Deep learning models often learn to make predictions that rely on sensitive social attributes like gender and race, which poses significant fairness risks, especially in societal applications, e.g., hiring, banking, and criminal justice. Existing work tackles this issue by minimizing information about social attributes in models for debiasing. However, the high correlation between target task and social attributes makes bias mitigation incompatible with target task accuracy. Recalling that model bias arises because the learning of features in regard to bias attributes (i.e., bias features) helps target task optimization, we explore the following research question: \emph{Can we leverage proxy features to replace the role of bias feature in t...
The issue of fairness in machine learning models has recently attracted a lot of attention as ensuri...
The performance of deep neural networks for image recognition tasks such as predicting a smiling fac...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Recent discoveries have revealed that deep neural networks might behave in a biased manner in many r...
Language Representation Models (LRMs) trained with real-world data may capture and exacerbate undesi...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Deep neural networks (DNNs), despite their impressive ability to generalize over-capacity networks, ...
Due to growing concerns about demographic disparities and discrimination resulting from algorithmic ...
Vision Transformer (ViT) has recently gained significant interest in solving computer vision (CV) pr...
Fairness is crucial when training a deep-learning discriminative model, especially in the facial dom...
Deep learning models have achieved excellent recognition results on large-scale video benchmarks. Ho...
Recent research has highlighted the vulnerabilities of modern machine learning based systems to bias...
CHI ’22, April 29-May 5, 2022, New Orleans, LA, USA © 2022 Copyright held by the owner/author(s). AC...
Deep Learning has achieved tremendous success in recent years in several areas such as image classif...
The concerns regarding ramifications of societal bias targeted at a particular identity group (for e...
The issue of fairness in machine learning models has recently attracted a lot of attention as ensuri...
The performance of deep neural networks for image recognition tasks such as predicting a smiling fac...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Recent discoveries have revealed that deep neural networks might behave in a biased manner in many r...
Language Representation Models (LRMs) trained with real-world data may capture and exacerbate undesi...
Recent studies indicate that deep neural networks (DNNs) are prone to show discrimination towards ce...
Deep neural networks (DNNs), despite their impressive ability to generalize over-capacity networks, ...
Due to growing concerns about demographic disparities and discrimination resulting from algorithmic ...
Vision Transformer (ViT) has recently gained significant interest in solving computer vision (CV) pr...
Fairness is crucial when training a deep-learning discriminative model, especially in the facial dom...
Deep learning models have achieved excellent recognition results on large-scale video benchmarks. Ho...
Recent research has highlighted the vulnerabilities of modern machine learning based systems to bias...
CHI ’22, April 29-May 5, 2022, New Orleans, LA, USA © 2022 Copyright held by the owner/author(s). AC...
Deep Learning has achieved tremendous success in recent years in several areas such as image classif...
The concerns regarding ramifications of societal bias targeted at a particular identity group (for e...
The issue of fairness in machine learning models has recently attracted a lot of attention as ensuri...
The performance of deep neural networks for image recognition tasks such as predicting a smiling fac...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...