Abstract—Methods for distributed optimization are necessary to solve large-scale problems such as those becoming more common in machine learning. The communication cost associated with transmitting large messages can become a serious perfor-mance bottleneck. We propose a consensus-based distributed algorithm to minimize a convex separable objective. Each node holds one component of the objective function, and the nodes alternate between a computation phase, where local gradient steps are performed based on the local objective, and a commu-nication phase, where consensus steps are performed to bring the local states into agreement. The nodes use local decision rules to adaptively determine when communication is not necessary. This results in...
A new approach to distributed consensus optimization is studied in this paper. The cost function to ...
Large-scale optimization problems, even when convex, can be challenging to solve directly. Recently,...
Many questions of interest in various fields ranging from machine learning to computational biology ...
We propose a consensus-based distributed optimization algo-rithm for minimizing separable convex obj...
We address the problem of distributed unconstrained convex optimization under separability assumptio...
<p>This thesis is concerned with the design of distributed algorithms for solving optimization probl...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
We study the problem of unconstrained distributed optimization in the context of multi-agents system...
Abstract: We consider the distributed unconstrained minimization of separable convex cost functions,...
This dissertation deals with developing optimization algorithms which can be distributed over a netw...
We consider the distributed unconstrained minimization of separable convex cost functions, where the...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
This dissertation contributes toward design, convergence analysis and improving the performance of t...
We consider a convex optimization problem for non-hierarchical agent networks where each agent has a...
A new approach to distributed consensus optimization is studied in this paper. The cost function to ...
Large-scale optimization problems, even when convex, can be challenging to solve directly. Recently,...
Many questions of interest in various fields ranging from machine learning to computational biology ...
We propose a consensus-based distributed optimization algo-rithm for minimizing separable convex obj...
We address the problem of distributed unconstrained convex optimization under separability assumptio...
<p>This thesis is concerned with the design of distributed algorithms for solving optimization probl...
In this paper we introduce a discrete-time, distributed optimization algorithm executed by a set of ...
We study the problem of unconstrained distributed optimization in the context of multi-agents system...
Abstract: We consider the distributed unconstrained minimization of separable convex cost functions,...
This dissertation deals with developing optimization algorithms which can be distributed over a netw...
We consider the distributed unconstrained minimization of separable convex cost functions, where the...
This thesis contributes to the body of research in the design and analysis of distributed algorithms...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
This dissertation contributes toward design, convergence analysis and improving the performance of t...
We consider a convex optimization problem for non-hierarchical agent networks where each agent has a...
A new approach to distributed consensus optimization is studied in this paper. The cost function to ...
Large-scale optimization problems, even when convex, can be challenging to solve directly. Recently,...
Many questions of interest in various fields ranging from machine learning to computational biology ...