Spurious correlations in training data often lead to robustness issues since models learn to use them as shortcuts. For example, when predicting whether an object is a cow, a model might learn to rely on its green background, so it would do poorly on a cow on a sandy background. A standard dataset for measuring state-of-the-art on methods mitigating this problem is Waterbirds. The best method (Group Distributionally Robust Optimization - GroupDRO) currently achieves 89\% worst group accuracy and standard training from scratch on raw images only gets 72\%. GroupDRO requires training a model in an end-to-end manner with subgroup labels. In this paper, we show that we can achieve up to 90\% accuracy without using any sub-group information in t...
While deep neural network models offer unmatched classification performance, they are prone to learn...
Traditional machine learning methods such as empirical risk minimization (ERM) frequently encounter ...
In many application areas, predictive models are used to support or make important decisions. There ...
Methods addressing spurious correlations such as Just Train Twice (JTT, arXiv:2107.09044v2) involve ...
Neural image classifiers can often learn to make predictions by overly relying on non-predictive fea...
Neural network classifiers can largely rely on simple spurious features, such as backgrounds, to mak...
In this paper, we provide 20,000 non-trivial human annotations on popular datasets as a first step t...
Deep neural networks trained by minimizing the average risk can achieve strong average performance. ...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
Spurious correlations allow flexible models to predict well during training but poorly on related te...
Neural networks often make predictions relying on the spurious correlations from the datasets rather...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
A fundamental challenge of over-parameterized deep learning models is learning meaningful data repre...
Traditional machine learning operates under the assumption that training and testing data are drawn ...
Neural networks are prone to be biased towards spurious correlations between classes and latent attr...
While deep neural network models offer unmatched classification performance, they are prone to learn...
Traditional machine learning methods such as empirical risk minimization (ERM) frequently encounter ...
In many application areas, predictive models are used to support or make important decisions. There ...
Methods addressing spurious correlations such as Just Train Twice (JTT, arXiv:2107.09044v2) involve ...
Neural image classifiers can often learn to make predictions by overly relying on non-predictive fea...
Neural network classifiers can largely rely on simple spurious features, such as backgrounds, to mak...
In this paper, we provide 20,000 non-trivial human annotations on popular datasets as a first step t...
Deep neural networks trained by minimizing the average risk can achieve strong average performance. ...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
Spurious correlations allow flexible models to predict well during training but poorly on related te...
Neural networks often make predictions relying on the spurious correlations from the datasets rather...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
A fundamental challenge of over-parameterized deep learning models is learning meaningful data repre...
Traditional machine learning operates under the assumption that training and testing data are drawn ...
Neural networks are prone to be biased towards spurious correlations between classes and latent attr...
While deep neural network models offer unmatched classification performance, they are prone to learn...
Traditional machine learning methods such as empirical risk minimization (ERM) frequently encounter ...
In many application areas, predictive models are used to support or make important decisions. There ...