학술논문

Stochastic optimization is (almost) as easy as deterministic optimization
Document Type
Conference
Source
45th Annual IEEE Symposium on Foundations of Computer Science Foundations of computer science Foundations of Computer Science, 2004. Proceedings. 45th Annual IEEE Symposium on. :228-237 2004
Subject
Computing and Processing
Stochastic processes
Probability distribution
Uncertainty
Approximation algorithms
Constraint optimization
Cost function
Design optimization
Transportation
Logistics
Instruments
Language
ISSN
0272-5428
Abstract
Stochastic optimization problems attempt to model uncertainty in the data by assuming that (part of) the input is specified in terms of a probability distribution. We consider the well-studied paradigm of 2-stage models with recourse: first, given only distributional information about (some of) the data one commits on initial actions, and then once the actual data is realized (according to the distribution), further (recourse) actions can be taken. We give the first approximation algorithms for 2-stage discrete stochastic optimization problems with recourse for which the underlying random data is given by a "black box" and no restrictions are placed on the costs in the two stages, based on an FPRAS for the LP relaxation of the stochastic problem (which has exponentially many variables and constraints). Among the range of applications we consider are stochastic versions of the set cover, vertex cover, facility location, multicut (on trees), and multicommodity flow problems.