A heuristic algorithm is proposed for a class of stochastic discrete-time continuous-variable dynamic programming problems submitted to non-Gaussian disturbances. Instead of using the expected values of the objective function, the randomness nature of the decision variables is kept along the process, while Pareto fronts weighted by all quantiles of the objective function are determined. Thus, decision makers are able to choose any quantile they wish. This new idea is carried out by using Monte Carlo simulations embedded in an approximate algorithm proposed to deterministic dynamic programming problems. The new method is tested in instances of the classical inventory control problem. The results obtained attest for the efficiency and efficac...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Abstract—We propose a provably optimal approximate dy-namic programming algorithm for a class of mul...
This paper develops a new method for constructing approximate solutions to discrete time, infinite h...
Abstract. The stochastic versions of classical discrete optimal control problems are formulated and ...
In the financial engineering field, many problems can be formulated as stochastic control problems. ...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
This dissertation analysis a monopoly firm model by use of dynamic programming. A general result is ...
Title: Stochastic Dynamic Programming Problems: Theory and Applications Author: Gabriel Lendel Depar...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
Discrete-time stochastic optimal control problems are stated over a finite number of decision stages...
AbstractA finite element method for stochastic dynamic programming is developed. The computational m...
Stochastic Control Theory is concerned with the control of dynamical systems which are random in som...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Abstract—We propose a provably optimal approximate dy-namic programming algorithm for a class of mul...
This paper develops a new method for constructing approximate solutions to discrete time, infinite h...
Abstract. The stochastic versions of classical discrete optimal control problems are formulated and ...
In the financial engineering field, many problems can be formulated as stochastic control problems. ...
Multistage stochastic optimization aims at finding optimal decision strategies in situations where t...
We consider in this paper stochastic programming problems which can be formu-lated as an optimizatio...
This dissertation analysis a monopoly firm model by use of dynamic programming. A general result is ...
Title: Stochastic Dynamic Programming Problems: Theory and Applications Author: Gabriel Lendel Depar...
Several attempt to dampen the curse of dimensionnality problem of the Dynamic Programming approach f...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
Discrete-time stochastic optimal control problems are stated over a finite number of decision stages...
AbstractA finite element method for stochastic dynamic programming is developed. The computational m...
Stochastic Control Theory is concerned with the control of dynamical systems which are random in som...
We propose an alternative approach to stochastic programming based on Monte-Carlo sampling and stoch...
Stochastic optimization problems with an objective function that is additive over a finite number of...
Abstract—We propose a provably optimal approximate dy-namic programming algorithm for a class of mul...