DocumentCode
3060013
Title
Convergence of parameter sensitivity estimates in a stochastic experiment
Author
Xi-Ren Cao
Author_Institution
Harvard University, Cambridge, MA
fYear
1984
fDate
12-14 Dec. 1984
Firstpage
965
Lastpage
970
Abstract
To reduce the error in estimating the gradient (parameter sensitivity) of an unknown function is of great importance in stochastic optimization problems. Three kinds of parameter sensitivity estimates using the Monte Carlo method are discussed in this paper. The estimates depend on the number of replications, N, and the change in parameter, ??v. The convergence properties as N???? and ??v??0 for these estimates are obtained. The result explains many theoretical and practical issues in the study of discrete event dynamic systems, as well as continuous dynamic systems, by the Monte Carlo method. It is proved that an estimate based on averaging the gradients calculated along each sample path by a perturbation of the path is much better than the other estimates if the output functions are uniformly differentiable with probability one (w.p.1). It is also concluded that in computer simulations one should always choose the same seed for both v and v+??v in estimating the parameter sensitivity. Combining the results in this paper with existing stochastic approximation algorithms may yield algorithms with faster convergence.
Keywords
Approximation algorithms; Computational modeling; Computer simulation; Convergence; Error correction; Parameter estimation; Random variables; Stochastic processes; System performance; Zinc;
fLanguage
English
Publisher
ieee
Conference_Titel
Decision and Control, 1984. The 23rd IEEE Conference on
Conference_Location
Las Vegas, Nevada, USA
Type
conf
DOI
10.1109/CDC.1984.272158
Filename
4048034
Link To Document