Models notoriously suffer from dataset biases which are detrimental to robustness and generalization. The identify-emphasize paradigm shows a promising effect in dealing with unknown biases. However, we find that it is still plagued by two challenges: A, the quality of the identified bias-conflicting samples is far from satisfactory; B, the emphasizing strategies just yield suboptimal performance. In this work, for challenge A, we propose an effective bias-conflicting scoring method to boost the identification accuracy with two practical strategies --- peer-picking and epoch-ensemble. For challenge B, we point out that the gradient contribution statistics can be a reliable indicator to inspect whether the optimization is dominated by bias-a...
Underrepresentation and misrepresentation of protected groups in the training data is a significant ...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
This tutorial presents recent advances on the assessment and mitigation of data and algorithmic bias...
Models notoriously suffer from dataset biases which are detrimental to robustness and generalization...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
<p>The presence of bias in existing object recognition datasets is now well-known in the computer vi...
Biased data represents a significant challenge for the proper functioning of machine learning models...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
In this chapter, we explore the surprising result that gradient-based continuous optimization method...
Classical wisdom in machine learning holds that the generalization error can be decomposed into bias...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
International audienceWe present a practical bias correction method for classifier and regression mo...
Underrepresentation and misrepresentation of protected groups in the training data is a significant ...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
This tutorial presents recent advances on the assessment and mitigation of data and algorithmic bias...
Models notoriously suffer from dataset biases which are detrimental to robustness and generalization...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
<p>The presence of bias in existing object recognition datasets is now well-known in the computer vi...
Biased data represents a significant challenge for the proper functioning of machine learning models...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
In this chapter, we explore the surprising result that gradient-based continuous optimization method...
Classical wisdom in machine learning holds that the generalization error can be decomposed into bias...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
International audienceWe present a practical bias correction method for classifier and regression mo...
Underrepresentation and misrepresentation of protected groups in the training data is a significant ...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
This tutorial presents recent advances on the assessment and mitigation of data and algorithmic bias...