Cette thèse relate certains aspects liés à l'analyse post-Pareto issue de Problèmes d'Optimisation Vectorielle Stochastique. Un problème d'optimisation Vectorielle Stochastique consiste à optimiser l'espérance d'une fonction vectorielle aléatoire définie sur un ensemble arbitraire et à valeurs dans un espace sectoriel ordonné. L'ensemble des solutions de ce problème (appelé ensemble de Pareto) est composé des solutions admissibles qui assurent un certain équilibre entre les objectifs : il est impossible d'améliorer la valeur d'un objectif sans détériorer celle d'un autre. D'un point de vue technique, chaque solution de Pareto est acceptable. Nous nous posons alors le problème de la sélection de l'une d'entre elles : en supposant l'existence...
This thesis deals with unconstrained multiobjective optimization when the objectives are written as ...
AbstractThere exist two general approaches to solve multiple objective problems. The first approach ...
The set of available multi-objective optimization algorithms continues to grow. This fact can be pa...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
ABSTRACT. We deal with the problem of minimizing the expectation of a real valued random function ov...
We deal with the problem of minimizing the expectation of a real valued random function over the wea...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Real-world optimization problems are often subject to uncertainties, which can arise regarding stoch...
In the past years, multiple objective optimization has been considered, as an important research are...
In the past years, multiple objective optimization has been considered, as an important research are...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Our paper consists of two main parts. In the first one, we deal with the deterministic problem of mi...
AbstractMultiple objective optimization involves the simultaneous optimization of several objective ...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
This thesis deals with unconstrained multiobjective optimization when the objectives are written as ...
AbstractThere exist two general approaches to solve multiple objective problems. The first approach ...
The set of available multi-objective optimization algorithms continues to grow. This fact can be pa...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
Multiple objective optimization involves the simultaneous optimization of more than one, possibly co...
ABSTRACT. We deal with the problem of minimizing the expectation of a real valued random function ov...
We deal with the problem of minimizing the expectation of a real valued random function over the wea...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Real-world optimization problems are often subject to uncertainties, which can arise regarding stoch...
In the past years, multiple objective optimization has been considered, as an important research are...
In the past years, multiple objective optimization has been considered, as an important research are...
Many real-world applications of multi-objective optimization involve a large number of objectives. A...
Our paper consists of two main parts. In the first one, we deal with the deterministic problem of mi...
AbstractMultiple objective optimization involves the simultaneous optimization of several objective ...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
This thesis deals with unconstrained multiobjective optimization when the objectives are written as ...
AbstractThere exist two general approaches to solve multiple objective problems. The first approach ...
The set of available multi-objective optimization algorithms continues to grow. This fact can be pa...