AbstractA readily implementable algorithm is proposed for minimizing any convex, not necessarily differentiable, function f of several variables subject to a finite number of linear constraints. The algorithm requires only the calculation of f at designated feasible points. At each iteration a lower polyhedral approximation to f is constructed from a few previously calculated subgradients and an aggregate subgradient. The recursively updated aggregate subgradient accumulates the subgradient information to deal with nondifferentiability of f. The polyhedral approximation and the linear constraints generate constraints in the search direction finding subproblem that is a quadratic programming problem. Then a step length is found by approximat...
In this paper, we developed a novel algorithmic approach for thesolution of multi-parametric non-con...
AbstractUsing only easily computable portions of certain ε-subdifferentials an implementable converg...
© Published under licence by IOP Publishing Ltd.We propose a conditional minimization method of the ...
AbstractA readily implementable algorithm is proposed for minimizing any convex, not necessarily dif...
A descent algorithm is given for solving a large convex program obtained by augmenting the objective...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Copyright © by the paper's authors.An algorithm is suggested for solving a convex programming proble...
International audienceIn this paper we present a subgradient method with non-monotone line search fo...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
We focus on convex semi-infinite programs with an infinite number of quadratically parametrized cons...
Abstract. Consider a problem of minimizing a separable, strictly convex, monotone and differentiable...
A computationally efficient method to solve non-convex programming problems with linear equality con...
AbstractIn this paper an algorithm for solving a linearly constrained nonlinear programming problem ...
In this paper, we developed a novel algorithmic approach for thesolution of multi-parametric non-con...
AbstractUsing only easily computable portions of certain ε-subdifferentials an implementable converg...
© Published under licence by IOP Publishing Ltd.We propose a conditional minimization method of the ...
AbstractA readily implementable algorithm is proposed for minimizing any convex, not necessarily dif...
A descent algorithm is given for solving a large convex program obtained by augmenting the objective...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Copyright © by the paper's authors.An algorithm is suggested for solving a convex programming proble...
International audienceIn this paper we present a subgradient method with non-monotone line search fo...
International audienceWe focus on convex semi-infinite programs with an infinite number of quadratic...
We focus on convex semi-infinite programs with an infinite number of quadratically parametrized cons...
Abstract. Consider a problem of minimizing a separable, strictly convex, monotone and differentiable...
A computationally efficient method to solve non-convex programming problems with linear equality con...
AbstractIn this paper an algorithm for solving a linearly constrained nonlinear programming problem ...
In this paper, we developed a novel algorithmic approach for thesolution of multi-parametric non-con...
AbstractUsing only easily computable portions of certain ε-subdifferentials an implementable converg...
© Published under licence by IOP Publishing Ltd.We propose a conditional minimization method of the ...