While research in robust optimization has attracted considerable interest over the last decades, its algorithmic development has been hindered by several factors. One of them is a missing set of benchmark instances that make algorithm performance better comparable, and makes reproducing instances unnecessary. Such a benchmark set should contain hard instances in particular, but so far, the standard approach to produce instances has been to sample values randomly from a uniform distribution. In this paper we introduce a new method to produce hard instances for min-max combinatorial optimization problems, which is based on an optimization model itself. Our approach does not make any assumptions on the problem structure and can thus be applied...
We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial opti...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
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 the past few years, there has been significant progress in our understanding of the extent to w...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
In this paper, we study the following robust optimization problem. Given an independence system and ...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial opti...
This open access book demonstrates all the steps required to design heuristic algorithms for difficu...
We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial opti...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
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 the past few years, there has been significant progress in our understanding of the extent to w...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
In this paper, we study the following robust optimization problem. Given an independence system and ...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
We establish strong NP-hardness and in-approximability of the so-called representatives selection pr...
We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial opti...
This open access book demonstrates all the steps required to design heuristic algorithms for difficu...
We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial opti...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...