We formalize the problem of machine unlearning as design of efficient
un...
We propose new techniques for reducing communication in private federate...
Recent works show that random neural networks are vulnerable against
adv...
We study the problem of approximating stationary points of Lipschitz and...
We study the problem of (ϵ,δ)-differentially private learning
of linear ...
We study the problem of machine unlearning and identify a notion of
algo...
Existing approaches to federated learning suffer from a communication
bo...
In this paper, we revisit the problem of private stochastic convex
optim...
In the time-decay model for data streams, elements of an underlying data...
Large-scale distributed training of neural networks is often limited by
...
We study the statistical and computational aspects of kernel principal
c...
RMSProp and ADAM continue to be extremely popular algorithms for trainin...