We deal with a general distributed constrained online learning problem with privacy over time-varying networks, where a class of nondecomposable objectives are considered. Under this setting, each node only controls a part of the global decision, and the goal of all nodes is to collaboratively minimize the global cost over a time horizon $T$ while guarantees the security of the transmitted information. For such problems, we first design a novel generic algorithm framework, named as DPSDA, of differentially private distributed online learning using the Laplace mechanism and the stochastic variants of dual averaging method. Note that in the dual updates, all nodes of DPSDA employ the noise-corrupted gradients for more generality. Then, we pro...
We investigate the problem of distributed online convex optimization with complicated constraints, i...
We study distributed stochastic nonconvex optimization in multi-agent networks. We introduce a novel...
Collaborative learning has received huge interests due to its capability of exploiting the collectiv...
Distributed convex optimization refers to the task of minimizing the aggregate sum of convex risk fu...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
The recent deployment of multi-agent systems in a wide range of scenarios has enabled the solution o...
We consider distributed online learning for joint regret with communication constraints. In this se...
This paper develops a fully distributed differentially-private learning algorithm based on the alter...
We study distributed algorithms for finding a Nash equilibrium (NE) in a class of non-cooperative co...
We study the consensus decentralized optimization problem where the objective function is the averag...
In distributed optimization and control, each network node performs local computation based on its o...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
The first part of this dissertation considers distributed learning problems over networked agents. T...
International audienceWe consider decentralized online supervised learning where estimators are chos...
The aim of this paper is to develop a general framework for training neural networks (NNs) in a dist...
We investigate the problem of distributed online convex optimization with complicated constraints, i...
We study distributed stochastic nonconvex optimization in multi-agent networks. We introduce a novel...
Collaborative learning has received huge interests due to its capability of exploiting the collectiv...
Distributed convex optimization refers to the task of minimizing the aggregate sum of convex risk fu...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
The recent deployment of multi-agent systems in a wide range of scenarios has enabled the solution o...
We consider distributed online learning for joint regret with communication constraints. In this se...
This paper develops a fully distributed differentially-private learning algorithm based on the alter...
We study distributed algorithms for finding a Nash equilibrium (NE) in a class of non-cooperative co...
We study the consensus decentralized optimization problem where the objective function is the averag...
In distributed optimization and control, each network node performs local computation based on its o...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
The first part of this dissertation considers distributed learning problems over networked agents. T...
International audienceWe consider decentralized online supervised learning where estimators are chos...
The aim of this paper is to develop a general framework for training neural networks (NNs) in a dist...
We investigate the problem of distributed online convex optimization with complicated constraints, i...
We study distributed stochastic nonconvex optimization in multi-agent networks. We introduce a novel...
Collaborative learning has received huge interests due to its capability of exploiting the collectiv...