This thesis discusses different methods for robust optimization problems that are convex in the uncertain parameters. Such problems are inherently difficult to solve as they implicitly require the maximization of convex functions. First, an approximation of such a robust optimization problem based on a reformulation to an equivalent adjustable robust linear optimization problem is proposed. Then, an algorithm to solve convex maximization problems is developed that can be used in a cutting-set method for robust convex problems. Last, distributionally robust optimization is explored as an alternative approach to deal with this convexity. Specifically, it is applied to a novel problem formulation to reduce conservatism in robust optimization a...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...
© 2017 Springer-Verlag GmbH Germany In this paper, we study convex programming problems with data un...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Abstract In this paper, we consider adjustable robust versions of convex optimiza-tion problems with...
We review our results for approximate solutions for a robust convex optimization problem with a geom...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
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 ...
Robust optimization is a rapidly developing methodology for handling optimization problems affected ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Abstract: We propose a new way to derive tractable robust counterparts of a linear conic optimizatio...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...
© 2017 Springer-Verlag GmbH Germany In this paper, we study convex programming problems with data un...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
Abstract Robust convex constraints are difficult to handle, since finding the worst-cas...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Abstract In this paper, we consider adjustable robust versions of convex optimiza-tion problems with...
We review our results for approximate solutions for a robust convex optimization problem with a geom...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
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 ...
Robust optimization is a rapidly developing methodology for handling optimization problems affected ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Abstract: We propose a new way to derive tractable robust counterparts of a linear conic optimizatio...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...
© 2017 Springer-Verlag GmbH Germany In this paper, we study convex programming problems with data un...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...