In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on constructing a single scenario representing the whole uncertainty set are frequently used. One is the midpoint method, which uses the average case scenario. It is known to be an N-approximation, where N is the number of scenarios. In this paper, we present a linear program to construct a representative scenario for the uncertainty set, which gives an approximation guarantee that is at least as good as for previous methods. We further employ hyper heuristic techniques operating over a space of preprocessing and aggregation steps to evolve algorithms that construct alternative representative single scenarios for the uncertainty set. In numerical ...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
While research in robust optimization has attracted considerable interest over the last decades, its...
Two common approaches to model uncertainty in optimization problems are to either explicitly enumera...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
As most robust combinatorial min-max and min-max regret problems with discrete uncertainty sets are ...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
International audienceWe consider robust combinatorial optimization problems where the decision make...
We continue in this paper the study of k-adaptable robust solutions for combinatorial optimization p...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
In robust optimization, the uncertainty set is used to model all possible outcomes of uncertain para...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
In this paper we studied combinatorial problems with parameterized locally budgeted uncertainty. We ...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
While research in robust optimization has attracted considerable interest over the last decades, its...
Two common approaches to model uncertainty in optimization problems are to either explicitly enumera...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
As most robust combinatorial min-max and min-max regret problems with discrete uncertainty sets are ...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
International audienceWe consider robust combinatorial optimization problems where the decision make...
We continue in this paper the study of k-adaptable robust solutions for combinatorial optimization p...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
In robust optimization, the uncertainty set is used to model all possible outcomes of uncertain para...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
In this paper we studied combinatorial problems with parameterized locally budgeted uncertainty. We ...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
While research in robust optimization has attracted considerable interest over the last decades, its...
Two common approaches to model uncertainty in optimization problems are to either explicitly enumera...