This paper adresses the robust counterparts of optimization problems containing sums of maxima of linear functions and proposes several reformulations. These problems include many practical problems, e.g. problems with sums of absolute values, and arise when taking the robust counterpart of a linear inequality that is affine in the decision variables, affine in a parameter with box uncertainty, and affine in a parameter with general uncertainty. In the literature, often the reformulation that is exact when there is no uncertainty is used. However, in robust optimization this reformulation gives an inferior solution and provides a pessimistic view. We observe that in many papers this conservatism is not mentioned. Some papers have recognized...
\u3cp\u3eAdjustable robust optimization (ARO) generally produces better worst-case solutions than st...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
In this paper we focus on robust linear optimization problems with uncertainty regions defined by φ-...
This paper addresses the robust counterparts of optimization problems containing sums of maxima of l...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
We propose a framework for robust modeling of linear programming problems using uncertainty sets des...
Abstract. We treat uncertain linear programming problems by utilizing the notion of weighted ana-lyt...
An optimization problem often has some uncertain data, and the optimum of a linear program can be ve...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
\u3cp\u3eAdjustable robust optimization (ARO) generally produces better worst-case solutions than st...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
In this paper we focus on robust linear optimization problems with uncertainty regions defined by φ-...
This paper addresses the robust counterparts of optimization problems containing sums of maxima of l...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
We propose a framework for robust modeling of linear programming problems using uncertainty sets des...
Abstract. We treat uncertain linear programming problems by utilizing the notion of weighted ana-lyt...
An optimization problem often has some uncertain data, and the optimum of a linear program can be ve...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
\u3cp\u3eAdjustable robust optimization (ARO) generally produces better worst-case solutions than st...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
In this paper we focus on robust linear optimization problems with uncertainty regions defined by φ-...