Bounding separable recourse functions with limited distribution information

Bounding separable recourse functions with limited distribution information

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Article ID: iaor19912127
Country: Switzerland
Volume: 30
Start Page Number: 277
End Page Number: 298
Publication Date: Mar 1991
Journal: Annals of Operations Research
Authors: ,
Abstract:

The recourse function in a stochastic program with recourse can be approximated by separable functions of the original random variables or linear transformations of them. The resulting bound then involves summing simple integrals. These integrals may themselves be difficult to compute or may require more information about the random variables than is available. In this paper, the authors show that a special class of functions has an easily computable bound that achieves the best upper bound when only first and second moment constraints are available.

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