In this paper, we propose a successive approximation heuristic which solves large stochastic mixed-integer programming problem with complete fixed recourse. We refer to this method as the Scenario Updating Method, since it solves the problem by considering only a subset of scenarios which is updated at each iteration. Only those scenarios which imply a significant change in the objective function are added. The algorithm is terminated when no such scenarios are available to enter in the current scenario subtree. Several rules to select scenarios are discussed. Bounds on heuristic solutions are computed by relaxing some of the non-anticipativity constraints. The proposed procedure is tested on a multistage stochastic batch-sizing problem
Dynamic stochastic optimization problems with a large (possibly infinite) number of decision stages ...
We study the uncapacitated lot-sizing problem with uncertain demand and costs. The problem is modele...
We present improved approximation algorithms in stochastic optimization. We prove that the multi-sta...
In this paper, we propose an approximation scheme to solve large stochastic mixed-integer programmin...
This paper addresses a particular stochastic lot-sizing and scheduling problem. The evolution of th...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
We consider convex stochastic programs with an (approximate) initial probability distribution P havi...
Scenarios are indispensable ingredients for the numerical solution of stochastic programs. Earlier a...
The stochastic uncapacitated lot-sizing problems with incremental quantity discount have been studie...
Many practical problems from industry that contain uncertain demands, costs and other quantities are...
International audienceWe consider an uncapacitated multi-item multi-echelon lot-sizing problem withi...
Stochastic optimization is a popular modeling paradigm for decision-making under uncertainty and has...
Multistage stochastic programs bring computational complexity which may increase exponentially with ...
In this paper we present a branch-and-price method to solve special structured multi-stage stochasti...
In this paper, we present a branch-and-price method to solve special structured multistage stochasti...
Dynamic stochastic optimization problems with a large (possibly infinite) number of decision stages ...
We study the uncapacitated lot-sizing problem with uncertain demand and costs. The problem is modele...
We present improved approximation algorithms in stochastic optimization. We prove that the multi-sta...
In this paper, we propose an approximation scheme to solve large stochastic mixed-integer programmin...
This paper addresses a particular stochastic lot-sizing and scheduling problem. The evolution of th...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
We consider convex stochastic programs with an (approximate) initial probability distribution P havi...
Scenarios are indispensable ingredients for the numerical solution of stochastic programs. Earlier a...
The stochastic uncapacitated lot-sizing problems with incremental quantity discount have been studie...
Many practical problems from industry that contain uncertain demands, costs and other quantities are...
International audienceWe consider an uncapacitated multi-item multi-echelon lot-sizing problem withi...
Stochastic optimization is a popular modeling paradigm for decision-making under uncertainty and has...
Multistage stochastic programs bring computational complexity which may increase exponentially with ...
In this paper we present a branch-and-price method to solve special structured multi-stage stochasti...
In this paper, we present a branch-and-price method to solve special structured multistage stochasti...
Dynamic stochastic optimization problems with a large (possibly infinite) number of decision stages ...
We study the uncapacitated lot-sizing problem with uncertain demand and costs. The problem is modele...
We present improved approximation algorithms in stochastic optimization. We prove that the multi-sta...