We provide a unifying framework for distributed convex optimization over time-varying networks, in the presence of constraints and uncertainty, features that are typically treated separately in the literature. We adopt a proximal minimization perspective and show that this set-up allows us to bypass the difficulties of existing algorithms while simplifying the underlying mathematical analysis. We develop an iterative algorithm and show convergence of the resulting scheme to some optimizer of the centralized problem. To deal with the case where the agents’ constraint sets are affected by a possibly common uncertainty vector, we follow a scenario-based methodology and offer probabilistic guarantees regarding the feasibility properties of the ...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
In this paper, we focus on the optimal operation of a multi-agent system affected by uncertainty. In...
We provide a novel iterative algorithm for distributed convex optimization over time-varying multi-a...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
We present distributed algorithms that can be used by multiple agents to align their estimates with ...
In many real-life optimization problems involving multiple agents, the rewards are not necessarily k...
This paper discusses distributed approaches for the solution of random convex programs (RCPs). RCPs ...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
This paper presents a distributed computational framework for stochastic convex optimization problem...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
In this paper we deal with two problems which are of great interest in the field of distributed deci...
In this paper we deal with decision-coupled problems involving multiple agents over a network. Each ...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
In this paper, we focus on the optimal operation of a multi-agent system affected by uncertainty. In...
We provide a novel iterative algorithm for distributed convex optimization over time-varying multi-a...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
We present distributed algorithms that can be used by multiple agents to align their estimates with ...
In many real-life optimization problems involving multiple agents, the rewards are not necessarily k...
This paper discusses distributed approaches for the solution of random convex programs (RCPs). RCPs ...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
This paper presents a distributed computational framework for stochastic convex optimization problem...
We consider a distributed optimization problem over a multi-agent network, in which the sum of sever...
In this paper we deal with two problems which are of great interest in the field of distributed deci...
In this paper we deal with decision-coupled problems involving multiple agents over a network. Each ...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
In this paper, we focus on the optimal operation of a multi-agent system affected by uncertainty. In...