We consider robust combinatorial optimization problems with cost uncertainty where the decision maker can prepare K solutions beforehand and chooses the best of them once the true cost is revealed. Also known as min-max-min robustness (a special case of K-adaptability), it is a viable alternative to otherwise intractable two-stage problems. The uncertainty set assumed in this paper considers that in any scenario, at most Γ of the components of the cost vectors will be higher than expected, which corresponds to the extreme points of the budgeted uncertainty set. While the classical min-max problem with budgeted uncertainty is essentially as easy as the underlying deterministic problem, it turns out that the min-max-min problem is N P-hard fo...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
International audienceWe present in this paper a new model for robust combinatorial optimization wit...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
International audienceWe consider robust combinatorial optimization problems where the decision make...
In this paper we studied combinatorial problems with parameterized locally budgeted uncertainty. We ...
In this paper the problem of selecting p out of n available items is discussed, such that their tota...
Candia-Vejar, A (reprint author), Univ Talca, Modeling & Ind Management Dept, Curico, Chile.Uncertai...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
AbstractIn this paper the minimum spanning tree problem with uncertain edge costs is discussed. In o...
Robust optimization (RO) has become a central framework to handle the uncertainty that arises in the...
Robust optimization (RO) has become a central framework to handle the uncertainty that arises in the...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
We consider robust counterparts of uncertain combinatorial optimization problems, where the differen...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
We continue in this paper the study of k-adaptable robust solutions for combinatorial optimization p...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
International audienceWe present in this paper a new model for robust combinatorial optimization wit...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
International audienceWe consider robust combinatorial optimization problems where the decision make...
In this paper we studied combinatorial problems with parameterized locally budgeted uncertainty. We ...
In this paper the problem of selecting p out of n available items is discussed, such that their tota...
Candia-Vejar, A (reprint author), Univ Talca, Modeling & Ind Management Dept, Curico, Chile.Uncertai...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
AbstractIn this paper the minimum spanning tree problem with uncertain edge costs is discussed. In o...
Robust optimization (RO) has become a central framework to handle the uncertainty that arises in the...
Robust optimization (RO) has become a central framework to handle the uncertainty that arises in the...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
We consider robust counterparts of uncertain combinatorial optimization problems, where the differen...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
We continue in this paper the study of k-adaptable robust solutions for combinatorial optimization p...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
International audienceWe present in this paper a new model for robust combinatorial optimization wit...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...