© 2017 Springer-Verlag GmbH Germany In this paper, we study convex programming problems with data uncertainty in both the objective function and the constraints. Under the framework of robust optimization, we employ a robust regularity condition, which is much weaker than the ones in the open literature, to establish various properties and characterizations of the set of all robust optimal solutions of the problems. These are expressed in term of subgradients, Lagrange multipliers and epigraphs of conjugate functions. We also present illustrative examples to show the significances of our theoretical results
We propose a framework for robust modeling of linear programming problems using uncertainty sets des...
We consider the linear programming problem with uncertainty set described by p,w-norm. We suggest th...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...
Abstract This paper deals with convex optimization problems in the face of data uncertainty within t...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We review our results for approximate solutions for a robust convex optimization problem with a geom...
Robust optimization has come out to be a potent approach to study mathematical problems with data un...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
We treat in this paper linear programming (LP) problems with uncertain data. The focus is on uncerta...
This paper deals with the robust strong duality for nonconvex optimization problem with the data unc...
In this paper we present a robust conjugate duality theory for convex programming problems in the fa...
Abstract: We propose a new way to derive tractable robust counterparts of a linear conic optimizatio...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
This paper deals with uncertain multi-objective convex programming problems, where the data of the o...
We propose a framework for robust modeling of linear programming problems using uncertainty sets des...
We consider the linear programming problem with uncertainty set described by p,w-norm. We suggest th...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...
Abstract This paper deals with convex optimization problems in the face of data uncertainty within t...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We review our results for approximate solutions for a robust convex optimization problem with a geom...
Robust optimization has come out to be a potent approach to study mathematical problems with data un...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
We treat in this paper linear programming (LP) problems with uncertain data. The focus is on uncerta...
This paper deals with the robust strong duality for nonconvex optimization problem with the data unc...
In this paper we present a robust conjugate duality theory for convex programming problems in the fa...
Abstract: We propose a new way to derive tractable robust counterparts of a linear conic optimizatio...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
This paper deals with uncertain multi-objective convex programming problems, where the data of the o...
We propose a framework for robust modeling of linear programming problems using uncertainty sets des...
We consider the linear programming problem with uncertainty set described by p,w-norm. We suggest th...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...