We propose a non-hierarchical decentralized algorithm for the asymptotic minimization of possibly time-varying convex functions. In our method, each agent in a network has a private, local (possibly time-varying) cost function, and the objective is to minimize asymptotically the sum of these local functions in every agent (this problem appears in many different applications such as, among others, motion planning, acoustic source localization, and environmental modeling). The algorithm consists of two main steps. First, to improve the estimate of a minimizer, agents apply a particular version of the adaptive projected subgradient method to their local functions. Then the agents exchange and mix their estimates using a communication model bas...
We study the problem of unconstrained distributed optimization in the context of multi-agents system...
Abstract—We consider a distributed multi-agent network system where the goal is to minimize an objec...
We present a distributed proximal-gradient method for optimizing the average of convex functions, ea...
We propose a non-hierarchical decentralized algorithm for the asymptotic minimization of possibly ti...
Many applications in multiagent learning are essentially convex optimization problems in which agent...
We consider a convex optimization problem for non-hierarchical agent networks where each agent has a...
Abstract—We consider the problem of cooperatively minimizing the sum of convex functions, where the ...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
We consider the problem of cooperatively minimizing the sum of convex functions, where the functions...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
A number of important problems that arise in various application domains can be formulated as a dist...
We consider a multi-agent setting with agents exchanging information over a network to solve a conve...
We study distributed algorithms for solving global optimization problems in which the objective func...
Abstract—We introduce a new framework for the convergence analysis of a class of distributed constra...
This paper is dedicated to the memory of Paul Tseng, a great researcher and friend. We study distrib...
We study the problem of unconstrained distributed optimization in the context of multi-agents system...
Abstract—We consider a distributed multi-agent network system where the goal is to minimize an objec...
We present a distributed proximal-gradient method for optimizing the average of convex functions, ea...
We propose a non-hierarchical decentralized algorithm for the asymptotic minimization of possibly ti...
Many applications in multiagent learning are essentially convex optimization problems in which agent...
We consider a convex optimization problem for non-hierarchical agent networks where each agent has a...
Abstract—We consider the problem of cooperatively minimizing the sum of convex functions, where the ...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
We consider the problem of cooperatively minimizing the sum of convex functions, where the functions...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
A number of important problems that arise in various application domains can be formulated as a dist...
We consider a multi-agent setting with agents exchanging information over a network to solve a conve...
We study distributed algorithms for solving global optimization problems in which the objective func...
Abstract—We introduce a new framework for the convergence analysis of a class of distributed constra...
This paper is dedicated to the memory of Paul Tseng, a great researcher and friend. We study distrib...
We study the problem of unconstrained distributed optimization in the context of multi-agents system...
Abstract—We consider a distributed multi-agent network system where the goal is to minimize an objec...
We present a distributed proximal-gradient method for optimizing the average of convex functions, ea...