In this paper, we study alternative primal and dual formulations of multistage stochastic convex programs (SP). The alternative dual problems which can be traced to the alterna-tive primal representations, lead to stochastic analogs of standard deterministic constructs such as conjugate functions and Lagrangians. One of the by-products of this approach is that the development does not depend on dynamic programming (DP) type recursive arguments, and is therefore applicable to problems in which the objective function is non-separable (in the DP sense). Moreover, the treatment allows us to handle both continuous and discrete random variables with equal ease. We also investigate properties of the ex-pected value of perfect information (EVPI) wi...
We consider linear mulitstage stochastic integer programs and study their functional and dynamic pro...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
This article studies convex duality in stochastic optimization over fi-nite discrete-time. The first...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
In this paper, we study alternative primal and dual formulations of multistage stochastic convex pro...
AbstractA duality theory is developed for multistage convex stochastic programming problems whose de...
This book investigates convex multistage stochastic programs whose objective and constraint function...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
We consider linear multistage stochastic integer programs and study their functional and dynamic pro...
Abstract. We define a risk averse nonanticipative feasible policy for multistage stochastic pro-gram...
A new duality theory is developed for a class of stochastic programs in which the probability distri...
This paper studies duality and optimality conditions for general convex stochastic optimization prob...
International audienceRisk-averse multistage stochastic programs appear in multiple areas and are ch...
We consider linear mulitstage stochastic integer programs and study their functional and dynamic pro...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
This article studies convex duality in stochastic optimization over fi-nite discrete-time. The first...
∗ This work was supported by NSF grant DMII-9414680 In this paper, we study alternative primal and d...
In this paper, we study alternative primal and dual formulations of multistage stochastic convex pro...
AbstractA duality theory is developed for multistage convex stochastic programming problems whose de...
This book investigates convex multistage stochastic programs whose objective and constraint function...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
This paper presents a new and high performance solution method for multistage stochastic convex prog...
We consider linear multistage stochastic integer programs and study their functional and dynamic pro...
Abstract. We define a risk averse nonanticipative feasible policy for multistage stochastic pro-gram...
A new duality theory is developed for a class of stochastic programs in which the probability distri...
This paper studies duality and optimality conditions for general convex stochastic optimization prob...
International audienceRisk-averse multistage stochastic programs appear in multiple areas and are ch...
We consider linear mulitstage stochastic integer programs and study their functional and dynamic pro...
The Stochastic Dual Dynamic Programming (SDDP) algorithm has become one of the main tools to address...
This article studies convex duality in stochastic optimization over fi-nite discrete-time. The first...