We introduce a library, Dataset Grouper, to create large-scale
group-str...
We present a rigorous methodology for auditing differentially private ma...
Gauss-Newton methods and their stochastic version have been widely used ...
Spectral risk objectives - also called L-risks - allow for learning syst...
We consider two federated learning algorithms for training partially
per...
We present a federated learning framework that is designed to robustly
d...
The spectacular success of deep generative models calls for quantitative...
Learning binary representations of instances and classes is a classical
...
Despite major advances in open-ended text generation, there has been lim...
We propose a federated learning framework to handle heterogeneous client...
We present a robust aggregation approach to make federated learning robu...
We present a framework to train a structured prediction model by perform...