Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
698217 | Automatica | 2007 | 13 Pages |
Abstract
We consider the problem of using a stochastic approximation algorithm to perform online tracking in a non-stationary environment characterised by abrupt “regime changes”. The primary contribution of this paper is a new approach for adaptive stepsize selection that is suitable for this type of non-stationarity. Our approach is pre-emptive rather than reactive, and is based on a strategy of maximising the rate of adaptation, subject to a constraint on the probability that the iterates fall outside a pre-determined range of acceptable error. The basis for our approach is provided by the theory of weak convergence for stochastic approximation algorithms.
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Authors
Andre Costa, Felisa J. Vázquez-Abad,