We present a numerical bundle-type method for local minimization of a real function of several variables, which is supposed to be locally Lipschitz. We provide a short survey of some optimization algorithms from the literature, which are able to deal with both nonsmoothness and nonconvexity of the objective function. We focus on possible extensions of classical bundle-type methods, originally conceived to deal with convex nonsmooth optimization. They are all based on a convex cutting plane model which has the property of both minorizing everywhere and interpolating at certain points the objective function. Such properties may be lost whenever nonconvexity is present and the case may be described in terms of possible negative values of certa...
In this paper we propose a new approach for constructing efficient schemes for nonsmooth convex opti...
International audienceIn this paper, we propose a multi-step inertial Forward–Backward splitting alg...
We consider the problem of minimizing nonsmooth convex functions, defined piecewise by a finite numb...
We present a numerical bundle-type method for local minimization of a real function of several varia...
Nowadays, solving nonsmooth (not necessarily differentiable) optimization prob-lems plays a very imp...
Abstract In this paper, we propose an alternating linearization bundle method for minimizing the sum...
This chapter is devoted to algorithms for solving nonsmooth unconstrained difference of convex optim...
We present a bundle type method for minimizing nonconvex nondifferentiable functions of several vari...
We adapt the Douglas–Rachford (DR) splitting method to solve nonconvex feasibility problems by study...
We describe an extension of the redistributed technique form classical proximal bundle method to the...
Typically, practical nonsmooth optimization problems involve functions with hundreds of variables. M...
We study the applicability of the Peaceman–Rachford (PR) splitting method for solving nonconvex opti...
We present a bundle-type method for minimizing non-convex non-smooth func-tions. Our approach is bas...
This chapter is devoted to algorithms for solving nonsmooth unconstrained difference of convex optim...
We consider the problem of minimizing nonsmooth convex functions, dened piecewise by a nite number o...
In this paper we propose a new approach for constructing efficient schemes for nonsmooth convex opti...
International audienceIn this paper, we propose a multi-step inertial Forward–Backward splitting alg...
We consider the problem of minimizing nonsmooth convex functions, defined piecewise by a finite numb...
We present a numerical bundle-type method for local minimization of a real function of several varia...
Nowadays, solving nonsmooth (not necessarily differentiable) optimization prob-lems plays a very imp...
Abstract In this paper, we propose an alternating linearization bundle method for minimizing the sum...
This chapter is devoted to algorithms for solving nonsmooth unconstrained difference of convex optim...
We present a bundle type method for minimizing nonconvex nondifferentiable functions of several vari...
We adapt the Douglas–Rachford (DR) splitting method to solve nonconvex feasibility problems by study...
We describe an extension of the redistributed technique form classical proximal bundle method to the...
Typically, practical nonsmooth optimization problems involve functions with hundreds of variables. M...
We study the applicability of the Peaceman–Rachford (PR) splitting method for solving nonconvex opti...
We present a bundle-type method for minimizing non-convex non-smooth func-tions. Our approach is bas...
This chapter is devoted to algorithms for solving nonsmooth unconstrained difference of convex optim...
We consider the problem of minimizing nonsmooth convex functions, dened piecewise by a nite number o...
In this paper we propose a new approach for constructing efficient schemes for nonsmooth convex opti...
International audienceIn this paper, we propose a multi-step inertial Forward–Backward splitting alg...
We consider the problem of minimizing nonsmooth convex functions, defined piecewise by a finite numb...