Forward-backward methods are valid tools to solve a variety of optimization problems where the objective function is the sum of a smooth, possibly nonconvex term plus a convex, possibly nonsmooth function. The corresponding iteration is built on two main ingredients: the computation of the gradient of the smooth part and the evaluation of the proximity (or resolvent) operator associated to the convex term. One of the main difficulties, from both implementation and theoretical point of view, arises when the proximity operator is computed in an inexact way. The aim of this paper is to provide new convergence results about forward-backward methods with inexact computation of the proximity operator, under the assumption that the objective funct...
In view of the minimization of a function which is the sum of a differentiable function $f$ and a c...
This paper introduces the generalized forward-backward splitting algorithm for minimizing convex fun...
Abstract. We propose a forward-backward proximal-type algorithm with inertial/memory effects for min...
Forward-backward methods are valid tools to solve a variety of optimization problems where the objec...
One of the most popular approaches for the minimization of a convex functional given by the sum of a...
This paper deals with a general framework for inexact forward-backward algorithms aimed at minimizin...
Forward-backward methods are a very useful tool for the minimization of a functional given by the su...
A number of recent works have emphasized the prominent role played by the Kurdyka-Lojasiewicz inequa...
International audienceA number of recent works have emphasized the prominent role played by the Kurd...
International audienceIn a Hilbert space H, assuming (alpha(kappa)) a general sequence of nonnegativ...
We propose a convergence analysis of accelerated forward-backward splitting methods for composite fu...
In this paper, we present a forward\u2013backward linesearch\u2013based algorithm suited for the min...
We consider the minimization of a function G defined on RN, which is the sum of a (non necessarily c...
In this paper we introduce a novel abstract descent scheme suited for the minimization of proper and...
International audienceWe consider the minimization of a function $G$ defined on $R^N$, which is the ...
In view of the minimization of a function which is the sum of a differentiable function $f$ and a c...
This paper introduces the generalized forward-backward splitting algorithm for minimizing convex fun...
Abstract. We propose a forward-backward proximal-type algorithm with inertial/memory effects for min...
Forward-backward methods are valid tools to solve a variety of optimization problems where the objec...
One of the most popular approaches for the minimization of a convex functional given by the sum of a...
This paper deals with a general framework for inexact forward-backward algorithms aimed at minimizin...
Forward-backward methods are a very useful tool for the minimization of a functional given by the su...
A number of recent works have emphasized the prominent role played by the Kurdyka-Lojasiewicz inequa...
International audienceA number of recent works have emphasized the prominent role played by the Kurd...
International audienceIn a Hilbert space H, assuming (alpha(kappa)) a general sequence of nonnegativ...
We propose a convergence analysis of accelerated forward-backward splitting methods for composite fu...
In this paper, we present a forward\u2013backward linesearch\u2013based algorithm suited for the min...
We consider the minimization of a function G defined on RN, which is the sum of a (non necessarily c...
In this paper we introduce a novel abstract descent scheme suited for the minimization of proper and...
International audienceWe consider the minimization of a function $G$ defined on $R^N$, which is the ...
In view of the minimization of a function which is the sum of a differentiable function $f$ and a c...
This paper introduces the generalized forward-backward splitting algorithm for minimizing convex fun...
Abstract. We propose a forward-backward proximal-type algorithm with inertial/memory effects for min...