The pretrain-finetune paradigm usually improves downstream performance o...
Representations learned by pre-training a neural network on a large data...
With the increasing reliance on deep neural networks, it is important to...
A major challenge in studying robustness in deep learning is defining th...
Online bipartite-matching platforms are ubiquitous and find applications...
We argue that a valuable perspective on when a model learns good
represe...
As machine learning algorithms have been widely deployed across applicat...
As deep neural networks (DNNs) get adopted in an ever-increasing number ...
Deep neural networks are being increasingly used in real world applicati...
Rideshare platforms, when assigning requests to drivers, tend to maximiz...
Most existing notions of algorithmic fairness are one-shot: they ensure ...