We consider robust shortest path problems, where the aim is to find a path that optimizes the worst-case performance over an uncertainty set containing all relevant scenarios for arc costs. The usual approach for such problems is to assume this uncertainty set given by an expert who can advise on the shape and size of the set. Following the idea of data-driven robust optimization, we instead construct a range of uncertainty sets from the current literature based on real-world traffic measurements provided by the City of Chicago. We then compare the performance of the resulting robust paths within and outside the sample, which allows us to draw conclusions on the suitability of uncertainty sets. Based on our experiments, we then focus on ell...
We consider robust counterparts of uncertain combinatorial optimization problems, where the differen...
Many real problems can be modelled as robust shortest path problems on interval digraphs, where inte...
In this exploratory paper we consider a robust approach to decisional problems subject to uncertain ...
Through the development of efficient algorithms, data structures and preprocessing techniques, real-...
In optimization, it is common to deal with uncertain and inaccurate factors which make it difficult ...
Recoverable robustness is a concept to avoid over-conservatism in robust optimization by allowing a ...
We develop a fast method to compute an optimal robust shortest path in large networks like road netw...
In practical optimization problems, uncertainty in parameter values is often present. This uncertain...
The robust shortest path problem is a network optimization problem that can be defined to deal with ...
Data coming from real-world applications are very often affected by uncertainty. On theother hand, i...
Cet article constitue un état de l’art sur les problèmes de plus courts chemins pour lesquels il exi...
National audienceThe shortest path problem in a network with nonnegative arc lengths can be solved e...
Cet article constitue un état de l’art sur les problèmes de plus courts chemins pour lesquels il exi...
In robust optimization, the uncertainty set is used to model all possible outcomes of uncertain para...
International audienceThe Resource Constrained Shortest Path Problem (RCSP P) models several applica...
We consider robust counterparts of uncertain combinatorial optimization problems, where the differen...
Many real problems can be modelled as robust shortest path problems on interval digraphs, where inte...
In this exploratory paper we consider a robust approach to decisional problems subject to uncertain ...
Through the development of efficient algorithms, data structures and preprocessing techniques, real-...
In optimization, it is common to deal with uncertain and inaccurate factors which make it difficult ...
Recoverable robustness is a concept to avoid over-conservatism in robust optimization by allowing a ...
We develop a fast method to compute an optimal robust shortest path in large networks like road netw...
In practical optimization problems, uncertainty in parameter values is often present. This uncertain...
The robust shortest path problem is a network optimization problem that can be defined to deal with ...
Data coming from real-world applications are very often affected by uncertainty. On theother hand, i...
Cet article constitue un état de l’art sur les problèmes de plus courts chemins pour lesquels il exi...
National audienceThe shortest path problem in a network with nonnegative arc lengths can be solved e...
Cet article constitue un état de l’art sur les problèmes de plus courts chemins pour lesquels il exi...
In robust optimization, the uncertainty set is used to model all possible outcomes of uncertain para...
International audienceThe Resource Constrained Shortest Path Problem (RCSP P) models several applica...
We consider robust counterparts of uncertain combinatorial optimization problems, where the differen...
Many real problems can be modelled as robust shortest path problems on interval digraphs, where inte...
In this exploratory paper we consider a robust approach to decisional problems subject to uncertain ...