Robustness is about reducing the feasible set of a given nominal optimization problem by cutting \u201crisky\u201d solutions away. To this end, the most popular approach in the literature is to extend the nominal model with a polynomial number of additional variables and constraints, so as to obtain its robust counterpart. Robustness can also be enforced by adding a possibly exponential family of cutting planes, which typically leads to an exponential formulation where cuts have to be generated at run time. Both approaches have pros and cons, and it is not clear which is the best one when approaching a specific problem. In this paper we computationally compare the two options on some prototype problems with different characteristics. We fir...
We consider probabilistically constrained linear programs with general distributions for the uncerta...
We consider probabilistic constrained linear programs with general distributions for the uncertain p...
An optimization problem often has some uncertain data, and the optimum of a linear program can be ve...
Robustness is about reducing the feasible set of a given nominal optimization problem by cutting “ri...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
Abstract. We treat uncertain linear programming problems by utilizing the notion of weighted ana-lyt...
Many robust control problems can be formulated in abstract form as convex feasibility programs where...
Real world mixed integer linear programming (MILP) models often contain numeric and hence uncertain ...
In optimization, it is common to deal with uncertain and inaccurate factors which make it difficult ...
Many robust control problems can be formulated in abstract form as convex feasibility programs where...
We treat in this paper linear programming (LP) problems with uncertain data. The focus is on uncerta...
We propose a novel way of applying cutting plane techniques to two-stage mixed-integer stochastic pr...
We consider a general robust block-structured optimization problem, coming from applications in netw...
Many robust control problems can be formulated in abstract form as convex feasibility programs, wher...
We propose an approach to two-stage linear optimization with recourse that does not in-volve a proba...
We consider probabilistically constrained linear programs with general distributions for the uncerta...
We consider probabilistic constrained linear programs with general distributions for the uncertain p...
An optimization problem often has some uncertain data, and the optimum of a linear program can be ve...
Robustness is about reducing the feasible set of a given nominal optimization problem by cutting “ri...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
Abstract. We treat uncertain linear programming problems by utilizing the notion of weighted ana-lyt...
Many robust control problems can be formulated in abstract form as convex feasibility programs where...
Real world mixed integer linear programming (MILP) models often contain numeric and hence uncertain ...
In optimization, it is common to deal with uncertain and inaccurate factors which make it difficult ...
Many robust control problems can be formulated in abstract form as convex feasibility programs where...
We treat in this paper linear programming (LP) problems with uncertain data. The focus is on uncerta...
We propose a novel way of applying cutting plane techniques to two-stage mixed-integer stochastic pr...
We consider a general robust block-structured optimization problem, coming from applications in netw...
Many robust control problems can be formulated in abstract form as convex feasibility programs, wher...
We propose an approach to two-stage linear optimization with recourse that does not in-volve a proba...
We consider probabilistically constrained linear programs with general distributions for the uncerta...
We consider probabilistic constrained linear programs with general distributions for the uncertain p...
An optimization problem often has some uncertain data, and the optimum of a linear program can be ve...