In many real world problems, dealing with uncertainty is a significant challenge for mathematical programming and related areas, and typically, standard (mixed-integer) linear programming formulations are not well suited to model such problems. However, a powerful way to express uncertainty or adversarial situations is through the use of quantified variables. To pursue this approach, this thesis is concerned with quantified (integer) linear programming, a generalization of traditional (integer) linear programming. Whereas in traditional linear programs (LPs) and integer programs (IPs) all variables are implicitly existentially quantified, they can be either existentially or universally quantified in quantified (continuous) linear programs (...
Probabilistic methods have recently emerged as an exciting new approach for dealing with uncertainty...
We propose an approach to address data uncertainty for discrete optimization problems that allows co...
A very general and robust approach to solving optimization problems involving probabilistic uncertai...
In many real world problems, dealing with uncertainty is a significant challenge for mathematical pr...
This thesis presents works in the research area of quantified constraint programming, which extends ...
A Quantified Linear Implication (QLI) is an inclusion query over two polyhedral sets, with a quanti...
In general, many general mathematical formulations of uncertainty quantification problems are NP-har...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
Quantified integer programming is the problem of deciding assertions of the form Q_k x_k ... forall ...
Cette thèse s’inscrit dans le cadre de la programmation par contraintes quantifiées, un formalisme é...
This paper deals with multiparametric nonlinear integer programming problems where the optimization ...
Quantified integer programming is the problem of deciding assertions of the form Q_k x_k ... forall ...
AbstractWe make a number of contributions to the study of the Quantified Constraint Satisfaction Pro...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
We treat in this paper linear programming (LP) problems with uncertain data. The focus is on uncerta...
Probabilistic methods have recently emerged as an exciting new approach for dealing with uncertainty...
We propose an approach to address data uncertainty for discrete optimization problems that allows co...
A very general and robust approach to solving optimization problems involving probabilistic uncertai...
In many real world problems, dealing with uncertainty is a significant challenge for mathematical pr...
This thesis presents works in the research area of quantified constraint programming, which extends ...
A Quantified Linear Implication (QLI) is an inclusion query over two polyhedral sets, with a quanti...
In general, many general mathematical formulations of uncertainty quantification problems are NP-har...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
Quantified integer programming is the problem of deciding assertions of the form Q_k x_k ... forall ...
Cette thèse s’inscrit dans le cadre de la programmation par contraintes quantifiées, un formalisme é...
This paper deals with multiparametric nonlinear integer programming problems where the optimization ...
Quantified integer programming is the problem of deciding assertions of the form Q_k x_k ... forall ...
AbstractWe make a number of contributions to the study of the Quantified Constraint Satisfaction Pro...
We treat in this paper Linear Programming (LP) problems with uncertain data. The focus is on uncerta...
We treat in this paper linear programming (LP) problems with uncertain data. The focus is on uncerta...
Probabilistic methods have recently emerged as an exciting new approach for dealing with uncertainty...
We propose an approach to address data uncertainty for discrete optimization problems that allows co...
A very general and robust approach to solving optimization problems involving probabilistic uncertai...