We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial optimization. Unlike most existing models, Bulk-Robust combinatorial optimization features a highly nonuniform failure model. Instead of an interdiction budget, Bulk-Robust counterparts provide an explicit list of interdiction sets, comprising the admissible set of scenarios, thus allowing to model correlations between failures of different components in the system, interdiction sets of variable cardinality and more. The resulting model is suitable for capturing failures of complex structures in the system. We provide complexity results and approximation algorithms for Bulk-Robust counterparts of the Minimum Matroid Basis problems and the Shortes...
The robustness function of an optimization problem measures the maximum change in the value of its o...
Solving combinatorial optimization (CO) on graphs is among the fundamental tasks for upper-stream ap...
In this thesis, we study robust combinatorial problems with interval data. We introduce several new ...
We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial opti...
Robust optimization is concerned with constructing solutions that remain feasible also when a limite...
The robustness function of an optimization problem measures the maximum change in the value of its o...
The robustness function of an optimization problem measures the maximum change in the value of its o...
In this paper, we study the following robust optimization problem. Given an independence system and ...
While research in robust optimization has attracted considerable interest over the last decades, its...
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...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
Robust optimization is concerned with constructing solutions that remain feasible also when a limite...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
The robustness function of an optimization problem measures the maximum change in the value of its o...
Solving combinatorial optimization (CO) on graphs is among the fundamental tasks for upper-stream ap...
In this thesis, we study robust combinatorial problems with interval data. We introduce several new ...
We commence an algorithmic study of Bulk-Robustness, a new model of robustness in combinatorial opti...
Robust optimization is concerned with constructing solutions that remain feasible also when a limite...
The robustness function of an optimization problem measures the maximum change in the value of its o...
The robustness function of an optimization problem measures the maximum change in the value of its o...
In this paper, we study the following robust optimization problem. Given an independence system and ...
While research in robust optimization has attracted considerable interest over the last decades, its...
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...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
Robust optimization is concerned with constructing solutions that remain feasible also when a limite...
We provide test instances for robust combinatorial optimization with budget uncertainty in the objec...
The robustness function of an optimization problem measures the maximum change in the value of its o...
Solving combinatorial optimization (CO) on graphs is among the fundamental tasks for upper-stream ap...
In this thesis, we study robust combinatorial problems with interval data. We introduce several new ...