We continue in this paper the study of k-adaptable robust solutions for combinatorial optimization problems with bounded uncertainty sets. In this concept not a single solution needs to be chosen to hedge against the uncertainty. Instead one is allowed to choose a set of k different solutions from which one can be chosen after the uncertain scenario has been revealed. We first show how the problem can be decomposed into polynomially many subproblems if k is fixed. In the remaining part of the paper we consider the special case where k=2, i.e., one is allowed to choose two different solutions to hedge against the uncertainty. We decompose this problem into so called coordination problems. The study of these coordination problems turns out to...
We consider robust combinatorial optimization problems with cost uncertainty where the decision make...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
none3siWe consider stochastic problems in which both the objective function and the feasible set are...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
International audienceWe consider robust combinatorial optimization problems where the decision make...
In this thesis, we study the role of adaptivity in decision-making problems under uncertainty. The f...
We propose a novel approach to solve K-adaptability problems with convex objective and constraints a...
We consider stochastic problems in which both the objective function and the feasible set are affect...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
We consider stochastic problems in which both the objective function and the feasible set are affect...
Two-stage robust optimization problems constitute one of the hardest optimization problem classes. O...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2005.Includes bibliogr...
In this paper, we study the following robust optimization problem. Given an independence system and ...
We consider robust combinatorial optimization problems with cost uncertainty where the decision make...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
none3siWe consider stochastic problems in which both the objective function and the feasible set are...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
International audienceWe consider robust combinatorial optimization problems where the decision make...
In this thesis, we study the role of adaptivity in decision-making problems under uncertainty. The f...
We propose a novel approach to solve K-adaptability problems with convex objective and constraints a...
We consider stochastic problems in which both the objective function and the feasible set are affect...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
We consider stochastic problems in which both the objective function and the feasible set are affect...
Two-stage robust optimization problems constitute one of the hardest optimization problem classes. O...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2005.Includes bibliogr...
In this paper, we study the following robust optimization problem. Given an independence system and ...
We consider robust combinatorial optimization problems with cost uncertainty where the decision make...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
none3siWe consider stochastic problems in which both the objective function and the feasible set are...