The impressive generalization performance of modern neural networks is
a...
Knowledge distillation has been widely-used to improve the performance o...
This dissertation studies a fundamental open challenge in deep learning
...
We empirically show that the test error of deep networks can be estimate...
In this paper, we explore connections between interpretable machine lear...
Empirical studies suggest that machine learning models often rely on
fea...
A key challenge in applying reinforcement learning to safety-critical do...
The ability of overparameterized deep networks to generalize well has be...
We cast doubt on the power of uniform convergence-based generalization b...
Why does training deep neural networks using stochastic gradient descent...
In this work we formally define the notions of adversarial perturbations...
Despite the growing prominence of generative adversarial networks (GANs)...
Max-cut, clustering, and many other partitioning problems that are of
si...