Machine learning algorithms with empirical risk minimization are vulnerable under distributional shifts due to the greedy adoption of all the correlations found in training data. Recently, there are robust learning methods aiming at this problem by minimizing the worst-case risk over an uncertainty set. However, they equally treat all covariates to form the decision sets regardless of the stability of their correlations with the target, resulting in the overwhelmingly large set and low confidence of the learner. In this paper, we propose Stable Adversarial Learning (SAL) algorithm that leverages heterogeneous data sources to construct a more practical uncertainty set and conduct differentiated robustness optimization, where covariates are d...
Distributional Reinforcement Learning (RL) maintains the entire probability distribution of the rewa...
We consider a general statistical learning problem where an unknown fraction of the training data is...
Machine learning models, especially deep neural networks, have achieved impressive performance acros...
Machine learning algorithms with empirical risk minimization are vulnerable under distributional shi...
Adversarial learning is an emergent technique that provides better security to machine learning syst...
Many of the successes of machine learning are based on minimizing an averaged loss function. However...
One of the main goal of Artificial Intelligence is to develop models capable of providing valuable p...
Robustness to distributional shift is one of the key challenges of contemporary machine learning. At...
Deep learning plays an important role in various disciplines, such as auto-driving, information tech...
Certified robustness in machine learning has primarily focused on adversarial perturbations of the i...
Modern machine learning algorithms are able to reach an astonishingly high level of performance in ...
Training models that perform well under distribution shifts is a central challenge in machine learni...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
Despite impressive success in many tasks, deep learning models are shown to rely on spurious feature...
A central problem in statistical learning is to design prediction algorithms that not only perform w...
Distributional Reinforcement Learning (RL) maintains the entire probability distribution of the rewa...
We consider a general statistical learning problem where an unknown fraction of the training data is...
Machine learning models, especially deep neural networks, have achieved impressive performance acros...
Machine learning algorithms with empirical risk minimization are vulnerable under distributional shi...
Adversarial learning is an emergent technique that provides better security to machine learning syst...
Many of the successes of machine learning are based on minimizing an averaged loss function. However...
One of the main goal of Artificial Intelligence is to develop models capable of providing valuable p...
Robustness to distributional shift is one of the key challenges of contemporary machine learning. At...
Deep learning plays an important role in various disciplines, such as auto-driving, information tech...
Certified robustness in machine learning has primarily focused on adversarial perturbations of the i...
Modern machine learning algorithms are able to reach an astonishingly high level of performance in ...
Training models that perform well under distribution shifts is a central challenge in machine learni...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
Despite impressive success in many tasks, deep learning models are shown to rely on spurious feature...
A central problem in statistical learning is to design prediction algorithms that not only perform w...
Distributional Reinforcement Learning (RL) maintains the entire probability distribution of the rewa...
We consider a general statistical learning problem where an unknown fraction of the training data is...
Machine learning models, especially deep neural networks, have achieved impressive performance acros...