DocumentCode
3049756
Title
Asymptotic behavior of stochastic approximation and large deviations
Author
Kushner, H.J.
Author_Institution
Brown University, Providence, Rhode Island
fYear
1983
fDate
- Dec. 1983
Firstpage
75
Lastpage
81
Abstract
The theory of large deviations is applied to the study of the asymptotic properties of the stochastic approximation algorithms (1.1) and (1.2). The method provides a useful alternative to the currently used technique of obtaining rate of convergence results by studying the sequence {(Xn-??)/??an} (for (1.1)), where ?? is a ´stable´ point of the algorithm. Let G be a bounded neighborhood of ??, which is in the domain of attraction of ?? for the ´limit ODE´. The process xn(??) is defined as a ´natural interpolation´ of {Xj,j??n} with xn(0) = Xn, and interpolation intervals {aj,j??n}. Define ??G n = min{t:xn(t)??G}. Then it is shown (among other things) that Px{??G n ?? T} ~ exp-nqV, where q depends on {an,cn}, and V depends on the b(??) cov ??n, and G. Such estimates imply that the asymptotic behavior is much better than suggested by the ´local linearization methods´, and they yield much new insight into the asymptotic behavior. The technique is applicable to related problems in the asymptotic analysis of recursive algorithms, and requires weaker conditions on the dynamics than do the ´linearization methods´. The necessary basic background is provided and the optimal control problems associated with getting the V above are derived.
Keywords
Stochastic processes;
fLanguage
English
Publisher
ieee
Conference_Titel
Decision and Control, 1983. The 22nd IEEE Conference on
Conference_Location
San Antonio, TX, USA
Type
conf
DOI
10.1109/CDC.1983.269799
Filename
4047509
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