As the network scale increases, existing fully distributed solutions sta...
Fully distributed estimation and tracking solutions to large-scale
multi...
Federated learning (FL) is a decentralized learning framework wherein a
...
Federated learning is a decentralized machine learning framework wherein...
Deep learning is the method of choice for trajectory prediction for
auto...
Nonlocal modeling has drawn more and more attention and becomes steadily...
Federated Learning (FL) is a nascent privacy-preserving learning framewo...
This paper studies the problem of model training under Federated Learnin...
Significant advances in edge computing capabilities enable learning to o...
Nakamoto consensus underlies the security of many of the world's largest...
Federated Learning (FL) is a promising framework that has great potentia...
We consider training over-parameterized two-layer neural networks with
R...
Winner-Take-All (WTA) refers to the neural operation that selects a
(typ...
This work studies the problem of non-Bayesian learning over multi-agent
...
We consider multi-armed bandit problems in social groups wherein each
in...
We consider securing a distributed machine learning system wherein the d...
We consider multi-armed bandit problems in social groups wherein each
in...
We consider the problem of distributed statistical machine learning in
a...