In this article, we present a unified framework for distributed convex optimization using an algorithm called proximal atomic coordination (PAC). PAC is based on the prox-linear approach and we prove that it achieves convergence in both objective values and distance to feasibility with rate o(1/τ), where τ is the number of algorithmic iterations. We further prove that linear convergence is achieved when the objective functions are strongly convex and strongly smooth with condition number κ f, with the number of iterations on the order of square-root of κf. We demonstrate how various decomposition strategies and coordination graphs relate to the convergence rate of PAC. We then compare this convergence rate with that of a distributed algorit...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
Abstract—We present a distributed proximal-gradient method for optimizing the average of convex func...
This paper proposes TriPD, a new primal-dual algorithm for minimizing the sum of a Lipschitz-differe...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
International audienceThis work proposes a theoretical analysis of distributed optimization of conve...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We develop and analyze an asynchronous algorithm for distributed convex optimization when the object...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
Abstract—We present a distributed proximal-gradient method for optimizing the average of convex func...
This paper proposes TriPD, a new primal-dual algorithm for minimizing the sum of a Lipschitz-differe...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
International audienceThis work proposes a theoretical analysis of distributed optimization of conve...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We develop and analyze an asynchronous algorithm for distributed convex optimization when the object...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
Abstract—We present a distributed proximal-gradient method for optimizing the average of convex func...