We propose a proximal Newton method for solving nondifferentiable convex optimization. This method combines the generalized Newton method with Rockafellar's proximal point algorithm. At each step, the proximal point is found approximately and the regularization matrix is preconditioned to overcome inexactness of this approximation. We show that such a preconditioning is possible within some accuracy and the second-order differentiability properties of the Moreau-Yosida regularization are invariant with respect to this preconditioning. Based upon these, superlinear convergence is established under a semismoothness condition.
This paper describes the first phase of a project attempting to construct an efficient general-purpo...
We consider a class of difference-of-convex (DC) optimization problems where the objective function ...
Non-euclidean versions of some primal-dual iterative optimization algorithms are presented. In these...
We propose a proximal Newton method for solving nondifferentiable convex optimization. This method c...
This paper proposes an implementable proximal quasi-Newton method for minimizing a nondifferentiable...
We seek to solve convex optimization problems in composite form: minimize x∈Rn f(x): = g(x) + h(x), ...
International audienceWe introduce a novel algorithm for solving learning problems where both the lo...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
Several optimization schemes have been known for convex optimization problems. However, numerical al...
In this paper an algorithm for minimization of a nondifferentiable function is presented. The algor...
Proximal Point Methods (PPM) can be traced to the pioneer works of Moreau [16], Martinet [14, 15] an...
We present an inexact interior point proximal method to solve linearly constrained convex problems....
International audienceProximal methods are known to identify the underlying substructure of nonsmoot...
Abstract. Many scientific and engineering applications feature nonsmooth convex minimization problem...
This paper describes the first phase of a project attempting to construct an efficient general-purpo...
We consider a class of difference-of-convex (DC) optimization problems where the objective function ...
Non-euclidean versions of some primal-dual iterative optimization algorithms are presented. In these...
We propose a proximal Newton method for solving nondifferentiable convex optimization. This method c...
This paper proposes an implementable proximal quasi-Newton method for minimizing a nondifferentiable...
We seek to solve convex optimization problems in composite form: minimize x∈Rn f(x): = g(x) + h(x), ...
International audienceWe introduce a novel algorithm for solving learning problems where both the lo...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
Several optimization schemes have been known for convex optimization problems. However, numerical al...
In this paper an algorithm for minimization of a nondifferentiable function is presented. The algor...
Proximal Point Methods (PPM) can be traced to the pioneer works of Moreau [16], Martinet [14, 15] an...
We present an inexact interior point proximal method to solve linearly constrained convex problems....
International audienceProximal methods are known to identify the underlying substructure of nonsmoot...
Abstract. Many scientific and engineering applications feature nonsmooth convex minimization problem...
This paper describes the first phase of a project attempting to construct an efficient general-purpo...
We consider a class of difference-of-convex (DC) optimization problems where the objective function ...
Non-euclidean versions of some primal-dual iterative optimization algorithms are presented. In these...