Robust optimization is a common optimization framework under uncertainty when problem parameters are unknown, but it is known that they belong to some given uncertainty set. In the robust optimization framework, a min-max problem is solved wherein a solution is evaluated according to its performance on the worst possible realization of the parameters. In many cases, a straightforward solution to a robust optimization problem of a certain type requires solving an optimization problem of a more complicated type, which might be NP-hard in some cases. For example, solving a robust conic quadratic program, such as those arising in a robust support vector machine (SVM) with an ellipsoidal uncertainty set, leads in general to a semidefinite progra...
In this paper, we consider adjustable robust versions of convex optimization problems with uncertain...
Robust optimization is a methodology for dealing with uncertainty in optimization problems. In this ...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...
Robust optimization (RO) has emerged as one of the leading paradigms to efficiently model parameter ...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
Robust optimization is a rapidly developing methodology for handling optimization problems affected ...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
Robust Optimization has traditionally taken a pessimistic, or worst-case viewpoint of uncertainty wh...
In this paper we study Support Vector Machine(SVM) classifiers in the face of uncertain knowledge se...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
Abstract This paper deals with convex optimization problems in the face of data uncertainty within t...
We propose a novel robust optimization technique, which is applicable to nonconvex and simulation-ba...
In this article we study support vector machine (SVM) classifiers in the face of uncertain knowledge...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
This paper studies robust solutions and semidefinite linear programming (SDP) relaxations of a class...
In this paper, we consider adjustable robust versions of convex optimization problems with uncertain...
Robust optimization is a methodology for dealing with uncertainty in optimization problems. In this ...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...
Robust optimization (RO) has emerged as one of the leading paradigms to efficiently model parameter ...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
Robust optimization is a rapidly developing methodology for handling optimization problems affected ...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
Robust Optimization has traditionally taken a pessimistic, or worst-case viewpoint of uncertainty wh...
In this paper we study Support Vector Machine(SVM) classifiers in the face of uncertain knowledge se...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
Abstract This paper deals with convex optimization problems in the face of data uncertainty within t...
We propose a novel robust optimization technique, which is applicable to nonconvex and simulation-ba...
In this article we study support vector machine (SVM) classifiers in the face of uncertain knowledge...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
This paper studies robust solutions and semidefinite linear programming (SDP) relaxations of a class...
In this paper, we consider adjustable robust versions of convex optimization problems with uncertain...
Robust optimization is a methodology for dealing with uncertainty in optimization problems. In this ...
Most research in robust optimization has so far been focused on inequality-only, convex conic progra...