In this paper, we develop two approaches to find minmax robust efficient solutions for multi-objective combinatorial optimization problems with cardinality-constrained uncertainty. First, we extend an existing algorithm for the single-objective problem to multi-objective optimization. We propose also an enhancement to accelerate the algorithm, even for the single-objective case, and we develop a faster version for special multi-objective instances. Second, we introduce a deterministic multi-objective problem with sum and bottleneck functions, which provides a superset of the robust efficient solutions. Based on this, we develop a label setting algorithm to solve the multi-objective uncertain shortest path problem. We compare both approaches...
Several robustness concepts for multi-objective uncertain optimization have been developed during th...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
International audienceWe consider robust combinatorial optimization problems where the decision make...
In this paper, we develop two approaches to find minmax robust efficient solutions for multi-objecti...
This thesis addresses combinatorial optimization problems with several objectives containing uncerta...
Robust combinatorial optimization problems with cardinality constrained uncertainty may be solved by...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
Robust optimization (RO) has become a central framework to handle the uncertainty that arises in the...
International audienceWe present in this paper a new model for robust combinatorial optimization wit...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
Data coming from real-world applications are very often affected by uncertainty. On theother hand, i...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
Several robustness concepts for multi-objective uncertain optimization have been developed during th...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
International audienceWe consider robust combinatorial optimization problems where the decision make...
In this paper, we develop two approaches to find minmax robust efficient solutions for multi-objecti...
This thesis addresses combinatorial optimization problems with several objectives containing uncerta...
Robust combinatorial optimization problems with cardinality constrained uncertainty may be solved by...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
Robust optimization (RO) has become a central framework to handle the uncertainty that arises in the...
International audienceWe present in this paper a new model for robust combinatorial optimization wit...
International audienceIn this paper, we consider a variant of adaptive robust combinatorial optimiza...
Data coming from real-world applications are very often affected by uncertainty. On theother hand, i...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
Several robustness concepts for multi-objective uncertain optimization have been developed during th...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
International audienceWe consider robust combinatorial optimization problems where the decision make...