We study solution methods for (strongly-)convex-(strongly)-concave Saddle-Point Problems (SPPs) over networks of two type - master/workers (thus centralized) architectures and meshed (thus decentralized) networks. The local functions at each node are assumed to be similar, due to statistical data similarity or otherwise. We establish lower complexity bounds for a fairly general class of algorithms solving the SPP. We show that a given suboptimality $\epsilon>0$ is achieved over master/workers networks in $\Omega\big(\Delta\cdot \delta/\mu\cdot \log (1/\varepsilon)\big)$ rounds of communications, where $\delta>0$ measures the degree of similarity of the local functions, $\mu$ is their strong convexity constant, and $\Delta$ is the diameter o...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
We propose a new approach for distributed optimization based on an emerging area of theoretical comp...
We consider distributed convex-concave saddle point problems over arbitrary connected undirected net...
This paper focuses on the distributed optimization of stochastic saddle point problems. The first pa...
In this paper, we propose GT-GDA, a distributed optimization method to solve saddle point problems o...
In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed...
A number of important problems that arise in various application domains can be formulated as a dist...
Large-scale saddle-point problems arise in such machine learning tasks as GANs and linear models wit...
International audienceThis work proposes a theoretical analysis of distributed optimization of conve...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
partially_open4siWe study distributed multi-agent large-scale optimization problems, wherein the cos...
We study distributed optimization in networked systems, where nodes cooperate to find the optimal qu...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
In this paper, we consider the distributed version of Support Vector Machine (SVM) under the coordin...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
We propose a new approach for distributed optimization based on an emerging area of theoretical comp...
We consider distributed convex-concave saddle point problems over arbitrary connected undirected net...
This paper focuses on the distributed optimization of stochastic saddle point problems. The first pa...
In this paper, we propose GT-GDA, a distributed optimization method to solve saddle point problems o...
In this paper, we determine the optimal convergence rates for strongly convex and smooth distributed...
A number of important problems that arise in various application domains can be formulated as a dist...
Large-scale saddle-point problems arise in such machine learning tasks as GANs and linear models wit...
International audienceThis work proposes a theoretical analysis of distributed optimization of conve...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
partially_open4siWe study distributed multi-agent large-scale optimization problems, wherein the cos...
We study distributed optimization in networked systems, where nodes cooperate to find the optimal qu...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
In this paper, we consider the distributed version of Support Vector Machine (SVM) under the coordin...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
Classically, the design of multi-agent systems is approached using techniques from distributed optim...
We propose a new approach for distributed optimization based on an emerging area of theoretical comp...