As most robust combinatorial min-max and min-max regret problems with discrete uncertainty sets are NP-hard, research into approximation algorithm and approximability bounds has been a fruitful area of recent work. A simple and well-known approximation algorithm is the midpoint method, where one takes the average over all scenarios, and solves a problem of nominal type. Despite its simplicity, this method still gives the best-known bound on a wide range of problems, such as robust shortest path, or robust assignment problems. In this paper we present a simple extension of the midpoint method based on scenario aggregation, which improves the current best K-approximation result to an (εK)-approximation for any desired ε>0. Our method can be a...
The robust shortest path problem is a network optimization problem that can be defined to deal with ...
AbstractWe consider combinatorial optimization problems with uncertain parameters of the objective f...
In this paper, we seek robust policies for uncertain Markov Decision Processes (MDPs). Most robust o...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
Minmax regret optimization aims at finding robust solutions that perform best in the worst-case, com...
Abstract Minmax regret optimization aims at finding robust solutions that perform best in the worst-...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
International audienceThis article deals with two min-max regret covering problems: the min-max regr...
Exportado OPUSMade available in DSpace on 2019-08-10T00:29:42Z (GMT). No. of bitstreams: 1 amadeualm...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
International audienceIn this paper, we provide a generic anytime lower bounding procedure for minma...
In this chapter a class of scheduling problems with uncertain parameters is dis-cussed. The uncertai...
International audienceThe following optimization problem is studied. There are several sets of integ...
The minmax regret problem for combinatorial optimization under uncertainty can be viewed as a zero-s...
The robust shortest path problem is a network optimization problem that can be defined to deal with ...
AbstractWe consider combinatorial optimization problems with uncertain parameters of the objective f...
In this paper, we seek robust policies for uncertain Markov Decision Processes (MDPs). Most robust o...
As most robust combinatorial min–max and min–max regret problems with discrete uncertainty sets are ...
In robust combinatorial optimization with discrete uncertainty, approximation algorithms based on co...
Minmax regret optimization aims at finding robust solutions that perform best in the worst-case, com...
Abstract Minmax regret optimization aims at finding robust solutions that perform best in the worst-...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
International audienceThis article deals with two min-max regret covering problems: the min-max regr...
Exportado OPUSMade available in DSpace on 2019-08-10T00:29:42Z (GMT). No. of bitstreams: 1 amadeualm...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
International audienceIn this paper, we provide a generic anytime lower bounding procedure for minma...
In this chapter a class of scheduling problems with uncertain parameters is dis-cussed. The uncertai...
International audienceThe following optimization problem is studied. There are several sets of integ...
The minmax regret problem for combinatorial optimization under uncertainty can be viewed as a zero-s...
The robust shortest path problem is a network optimization problem that can be defined to deal with ...
AbstractWe consider combinatorial optimization problems with uncertain parameters of the objective f...
In this paper, we seek robust policies for uncertain Markov Decision Processes (MDPs). Most robust o...