A simulation-based approach to two-stage stochastic programming with recourse

A simulation-based approach to two-stage stochastic programming with recourse

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Article ID: iaor19992652
Country: Netherlands
Volume: 81
Issue: 3
Start Page Number: 301
End Page Number: 325
Publication Date: May 1998
Journal: Mathematical Programming
Authors: ,
Keywords: programming: nonlinear
Abstract:

In this paper we consider stochastic programming problems where the objective function is given as an expected value function. We discuss Monte Carlo simulation based approaches to a numerical solution of such problems. In particular, we discuss in detail and present numerical results for two-stage stochastic programming with recourse where the random data have a continuous (multivariate normal) distribution. We think that the novelty of the numerical approach developed in this paper is twofold. First, various variance reduction techniques are applied in order to enhance the rate of convergence. Successful application of those techniques is what makes the whole approach numerically feasible. Second, a statistical inference is developed and applied to estimation of the error, validation of optimality of a calculated solution and statistically based stopping criteria for an iterative algorithm.

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