In this paper we focus on robust linear optimization problems with uncertainty regions defined by φ-divergences (for example, chi-squared, Hellinger, Kullback–Leibler). We show how uncertainty regions based on Φ-divergences arise in a natural way as confidence sets if the uncertain parameters contain elements of a probability vector. Such problems frequently occur in, for example, optimization problems in inventory control or finance that involve terms containing moments of random variables, expected utility, etc. We show that the robust counterpart of a linear optimization problem with Φ-divergence uncertainty is tractable for most of the choices of Φ typically considered in the literature. We extend the results to problems that are nonlin...
Abstract This paper deals with convex optimization problems in the face of data uncertainty within t...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In this paper, we introduce an approach for constructing uncertainty sets for robust optimization us...
Samenvatting In this paper we focus on robust linear optimization problems with uncertainty regions ...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
Abstract: We propose a new way to derive tractable robust counterparts of a linear conic optimizatio...
We derive computationally tractable formulations of the robust counterparts of convex quadratic and ...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Abstract This paper deals with convex optimization problems in the face of data uncertainty within t...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In this paper, we introduce an approach for constructing uncertainty sets for robust optimization us...
Samenvatting In this paper we focus on robust linear optimization problems with uncertainty regions ...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
Abstract: We propose a new way to derive tractable robust counterparts of a linear conic optimizatio...
We derive computationally tractable formulations of the robust counterparts of convex quadratic and ...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Abstract This paper deals with convex optimization problems in the face of data uncertainty within t...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
In this paper, we introduce an approach for constructing uncertainty sets for robust optimization us...