Article ID: | iaor20041180 |
Country: | United States |
Volume: | 21 |
Issue: | 3 |
Start Page Number: | 513 |
End Page Number: | 528 |
Publication Date: | Aug 1996 |
Journal: | Mathematics of Operations Research |
Authors: | Robinson S.M. |
Sample-path optimization is a method for optimizing limit functions occurring in stochastic modeling problems, such as steady-state functions in discrete-event dynamic systems. It is closely related to retrospective optimization techniques and to M-estimation. The method has been computationally tested elsewhere on problems arising in production and in project planning, with apparent success. In this paper we provide a mathematical justification for sample-path optimization by showing that under certain assumptions – which hold for the problems just mentioned – the method will almost surely find a point that is, in a specified sense, sufficiently close to the set of optimizers of the limit function.