We consider linear multistage stochastic integer programs and study their functional and dynamic programming formulations as well as conditions for optimality and stability of solutions. Furthermore, we study the application of the Rockafellar-Wets dualization approach as well as the structure and algorithmic potential of corresponding dual problems. For discrete underlying probability distributions we discuss possible large scale mixed-integer linear programming formulations and three dual decomposition approaches, namely, scenario, component and nodal decomposition
We introduce and study a two-stage distributionally robust mixed binary problem (TSDR-MBP) where the...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
We consider linear multistage stochastic integer programs and study their functional and dynamic pro...
We consider linear mulitstage stochastic integer programs and study their functional and dynamic pro...
We survey structural properties of and algorithms for stochastic integer programming models, mainly ...
We survey structural properties of and algorithms for stochastic integer programming models, mainly ...
We consider two-stage pure integer programs with discretely distributed stochastic right-hand sides....
Many practical problems from industry that contain uncertain demands, costs and other quantities are...
In this thesis we consider two-stage stochastic linear programming models with integer recourse. Suc...
This paper presents a tutorial on the state-of-the-art software for the solution of two-stage (mixed...
We introduce a unified framework for the study of multilevel mixed integer linear optimization probl...
We present an algorithmic approach for solving two-stage stochastic mixed 0-1 problems. The first st...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
In this paper, we study alternative primal and dual formulations of multistage stochastic convex pro...
We introduce and study a two-stage distributionally robust mixed binary problem (TSDR-MBP) where the...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
We consider linear multistage stochastic integer programs and study their functional and dynamic pro...
We consider linear mulitstage stochastic integer programs and study their functional and dynamic pro...
We survey structural properties of and algorithms for stochastic integer programming models, mainly ...
We survey structural properties of and algorithms for stochastic integer programming models, mainly ...
We consider two-stage pure integer programs with discretely distributed stochastic right-hand sides....
Many practical problems from industry that contain uncertain demands, costs and other quantities are...
In this thesis we consider two-stage stochastic linear programming models with integer recourse. Suc...
This paper presents a tutorial on the state-of-the-art software for the solution of two-stage (mixed...
We introduce a unified framework for the study of multilevel mixed integer linear optimization probl...
We present an algorithmic approach for solving two-stage stochastic mixed 0-1 problems. The first st...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
In this paper, we study alternative primal and dual formulations of multistage stochastic convex pro...
We introduce and study a two-stage distributionally robust mixed binary problem (TSDR-MBP) where the...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...