Approximations of Stochastic Optimization Problems Subject to Measurability Constraints
january, 2009
Publication type:
Paper in peer-reviewed journals
Journal:
SIAM Journal on Optimization, vol. 19(4), pp. 1719-1734
DOI:
HAL:
Keywords :
Stochastic programming - Measurability constraints - Discretization
Abstract:
Motivated by the numerical resolution of stochastic optimization problems subject to measurability constraints, we focus upon the issue of discretization. There exist indeed two components to be discretized for such problems, namely, the random variable modelling uncertainties (noise) and the $\sigma$-field modelling the knowledge (information) according to which decisions are taken. There is no reason to bind these two discretizations, which are a priori unrelated. In this setting, we present conditions under which the discretized problems converge to the original one. The focus is put on the convergence notions ensuring the quality of the approximation; we illustrate their importance by means of a counterexample based on the Monte Carlo approximation.
Copyright © 2009 Society for Industrial and Applied Mathematics
BibTeX:
@article{Car-Cha-DeL-2009, author={Pierre Carpentier and Jean-Philippe Chancelier and Michel De Lara }, title={Approximations of Stochastic Optimization Problems Subject to Measurability Constraints }, doi={10.1137/070692376 }, journal={SIAM Journal on Optimization }, year={2009 }, month={1}, volume={19(4) }, pages={1719--1734}, }