In many mathematical optimization applications, dual variables are an important output of the solving process, due to their role as price signals. When dual solutions are not unique, different solvers or different computers, even different runs in the same computer if the problem is stochastic, often end up with different optimal multipliers. From the perspective of a decision maker, this variability makes the price signals less reliable and, hence, less useful. We address this issue for a particular family of linear and quadratic programs by proposing a solution procedure that, among all possible optimal multipliers, systematically yields the one with the smallest norm. The approach, based on penalization techniques of nonlinear programmin...
We consider linear multistage stochastic integer programs and study their functional and dynamic pro...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
The thesis deals with the algorithms for two-stage stochastic programs. The first chapter considers ...
URL des Documents de travail : https://centredeconomiesorbonne.cnrs.fr/publications/ Voir aussi l'ar...
Stochastic linear programming problems are linear programming problems for which one or more data el...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
This paper addresses the class of nonlinear mixed integer stochastic programming problems. In partic...
The optimal stopping problem arising in the pricing of American options can be tackled by the so cal...
Le travail général de cette thèse consiste à étendre les outils analytiques et algébriques usuelleme...
AbstractA duality theory is developed for multistage convex stochastic programming problems whose de...
Reduced-cost-based filtering in constraint programming and variable fixing in integer programming ar...
In this paper a condition number for linear-quadratic two-stage stochastic optimization problemsis i...
A new method is proposed for solving two-stage problems in linear and quadratic stochastic programmi...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
We consider linear multistage stochastic integer programs and study their functional and dynamic pro...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
The thesis deals with the algorithms for two-stage stochastic programs. The first chapter considers ...
URL des Documents de travail : https://centredeconomiesorbonne.cnrs.fr/publications/ Voir aussi l'ar...
Stochastic linear programming problems are linear programming problems for which one or more data el...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
This paper addresses the class of nonlinear mixed integer stochastic programming problems. In partic...
The optimal stopping problem arising in the pricing of American options can be tackled by the so cal...
Le travail général de cette thèse consiste à étendre les outils analytiques et algébriques usuelleme...
AbstractA duality theory is developed for multistage convex stochastic programming problems whose de...
Reduced-cost-based filtering in constraint programming and variable fixing in integer programming ar...
In this paper a condition number for linear-quadratic two-stage stochastic optimization problemsis i...
A new method is proposed for solving two-stage problems in linear and quadratic stochastic programmi...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
We consider linear multistage stochastic integer programs and study their functional and dynamic pro...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
The thesis deals with the algorithms for two-stage stochastic programs. The first chapter considers ...