On the Convergence of Decomposition Methods for Multistage Stochastic Convex Programs
february, 2015
Publication type:
Paper in peer-reviewed journals
Journal:
Mathematics of Operations Research, vol. 40 (1)
Publisher:
INFORMS
External link:
HAL:
Abstract:
We prove the almost-sure convergence of a class of sampling-based nested decomposition algorithms for multistage stochastic convex programs in which the stage costs are general convex functions of the decisions , and uncertainty is modelled by a scenario tree. As special cases, our results imply the almost-sure convergence of SDDP, CUPPS and DOASA when applied to problems with general convex cost functions.
BibTeX:
@article{Gir-Lec-Phi-2015, author={Pierre Girardeau and Vincent Leclère and A. B. Philpott }, title={On the Convergence of Decomposition Methods for Multistage Stochastic Convex Programs }, doi={10.1287/moor.2014.0664 }, journal={Mathematics of Operations Research }, year={2015 }, month={2}, volume={40 (1) }, }