Abstract. We propose a bundle method for minimizing nonsmooth convex functions that combines both the level and the proximal stabilizations. Most bundle algorithms use a cutting-plane model of the objective function to formulate a subproblem whose solution gives the next iterate. Proximal bundle methods employ the model in the objective function of the subproblem, while level methods put the model in the subproblem’s constraints. The proposed algorithm defines new iterates by solving a subproblem that employs the model in both the objective function and in the constraints. One advantage when compared to the proximal approach is that the level set constraint provides a certain Lagrange multiplier, which is used to update the proximal paramet...
We present a convex nondifferentiable minimization algorithm of proximal bundle type that does not r...
© 2020, Springer Nature Switzerland AG. In the paper, a method is proposed for minimizing a nondiffe...
AbstractFor nonsmooth convex optimization, Robert Mifflin and Claudia Sagastizábal introduce a VU-sp...
Bundle methods are often the algorithms of choice for nonsmooth convex optimization, especially if a...
In this paper, we develop a version of the bundle method to solve unconstrained difference of convex...
We discuss proximal bundle methods for minimizing f(u) subject to h(u) ≤ 0, u ∈ C, where f, h and C...
SIGLEAvailable at INIST (FR), Document Supply Service, under shelf-number : 14802 E, issue : a.1992 ...
We discuss a numerical algorithm for minimization of a convex nondifferentiable function belonging t...
We discuss a numerical algorithm for minimization of a convex nondifferentiable function belonging t...
We discuss about the multiobjective double bundle method for nonsmooth multiobjective optimization w...
We present a bundle method for convex nondifferentiable minimization where the model is a piecewise ...
We present a bundle method for convex nondifferentiable minimization where the model is a piecewise-...
We present a convex nondifferentiable minimization algorithm of proximal bundle type that does not r...
This chapter is devoted to algorithms for solving nonsmooth unconstrained difference of convex optim...
We present a convex nondifferentiable minimization algorithm of proximal bundle type that does not r...
We present a convex nondifferentiable minimization algorithm of proximal bundle type that does not r...
© 2020, Springer Nature Switzerland AG. In the paper, a method is proposed for minimizing a nondiffe...
AbstractFor nonsmooth convex optimization, Robert Mifflin and Claudia Sagastizábal introduce a VU-sp...
Bundle methods are often the algorithms of choice for nonsmooth convex optimization, especially if a...
In this paper, we develop a version of the bundle method to solve unconstrained difference of convex...
We discuss proximal bundle methods for minimizing f(u) subject to h(u) ≤ 0, u ∈ C, where f, h and C...
SIGLEAvailable at INIST (FR), Document Supply Service, under shelf-number : 14802 E, issue : a.1992 ...
We discuss a numerical algorithm for minimization of a convex nondifferentiable function belonging t...
We discuss a numerical algorithm for minimization of a convex nondifferentiable function belonging t...
We discuss about the multiobjective double bundle method for nonsmooth multiobjective optimization w...
We present a bundle method for convex nondifferentiable minimization where the model is a piecewise ...
We present a bundle method for convex nondifferentiable minimization where the model is a piecewise-...
We present a convex nondifferentiable minimization algorithm of proximal bundle type that does not r...
This chapter is devoted to algorithms for solving nonsmooth unconstrained difference of convex optim...
We present a convex nondifferentiable minimization algorithm of proximal bundle type that does not r...
We present a convex nondifferentiable minimization algorithm of proximal bundle type that does not r...
© 2020, Springer Nature Switzerland AG. In the paper, a method is proposed for minimizing a nondiffe...
AbstractFor nonsmooth convex optimization, Robert Mifflin and Claudia Sagastizábal introduce a VU-sp...