Distributed and parallel algorithms have been frequently investigated in the recent years, in particular in applications like machine learning. Nonetheless, only a small subclass of the optimization algorithms in the literature can be easily distributed, for the presence, e.g., of coupling constraints that make all the variables dependent from each other with respect to the feasible set. Augmented Lagrangian methods are among the most used techniques to get rid of the coupling constraints issue, namely by moving such constraints to the objective function in a structured, well-studied manner. Unfortunately, standard augmented Lagrangian methods need the solution of a nested problem by needing to (at least inexactly) solve a subproblem at eac...
In this paper we investigate how standard nonlinear programming algorithms can be used to solve cons...
International audienceIn this article, we illustrate practical issues arising in the development of ...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
We propose a distributed solution for a constrained convex optimization problem over a network of cl...
Abstract We propose a novel distributed method for convex optimization problems with a certain separ...
In this paper we consider a distributed optimization scenario in which a set of agents has to solve ...
In this paper we propose a novel Augmented Lagrangian Tracking distributed optimization algorithm fo...
Abstract. In this paper we propose a distributed algorithm for solving large-scale separable convex ...
© 2015 Springer Science+Business Media New York In this paper, a class of separable convex optimizat...
© 2014 American Mathematical Society. This paper considers the convex minimization problem with lin...
In this paper, we propose a novel distributed algorithm to address constraint-coupled optimization p...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
Convex programming has played an important role in studying a wide class of applications arising fro...
In this paper we investigate how standard nonlinear programming algorithms can be used to solve cons...
International audienceIn this article, we illustrate practical issues arising in the development of ...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...
We propose a distributed solution for a constrained convex optimization problem over a network of cl...
Abstract We propose a novel distributed method for convex optimization problems with a certain separ...
In this paper we consider a distributed optimization scenario in which a set of agents has to solve ...
In this paper we propose a novel Augmented Lagrangian Tracking distributed optimization algorithm fo...
Abstract. In this paper we propose a distributed algorithm for solving large-scale separable convex ...
© 2015 Springer Science+Business Media New York In this paper, a class of separable convex optimizat...
© 2014 American Mathematical Society. This paper considers the convex minimization problem with lin...
In this paper, we propose a novel distributed algorithm to address constraint-coupled optimization p...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
Convex programming has played an important role in studying a wide class of applications arising fro...
In this paper we investigate how standard nonlinear programming algorithms can be used to solve cons...
International audienceIn this article, we illustrate practical issues arising in the development of ...
A lot of effort has been invested into characterizing the convergence rates of gradient based algori...