Stochastic Approximation and Its Application

Lieferzeit: Lieferbar innerhalb 14 Tagen

106,99 

Nonconvex Optimization and Its Applications 64

ISBN: 1402008066
ISBN 13: 9781402008061
Autor: Han-Fu Chen
Verlag: Springer Verlag GmbH
Umfang: xv, 360 S.
Erscheinungsdatum: 31.08.2002
Produktform: Gebunden/Hardback
Einband: GEB

Presents the development of stochastic approximation algorithms with expanding truncations based on the TS (trajectory-subsequence) method, a newly developed method for convergence analysis. This work demonstrates the applications of the developed theory to global optimization, blind channel identification, adaptive filtering, and more.

Artikelnummer: 1631991 Kategorie:

Beschreibung

Estimating unknown parameters based on observation data conta- ing information about the parameters is ubiquitous in diverse areas of both theory and application. For example, in system identification the unknown system coefficients are estimated on the basis of input-output data of the control system; in adaptive control systems the adaptive control gain should be defined based on observation data in such a way that the gain asymptotically tends to the optimal one; in blind ch- nel identification the channel coefficients are estimated using the output data obtained at the receiver; in signal processing the optimal weighting matrix is estimated on the basis of observations; in pattern classifi- tion the parameters specifying the partition hyperplane are searched by learning, and more examples may be added to this list. All these parameter estimation problems can be transformed to a root-seeking problem for an unknown function. To see this, let - note the observation at time i. e., the information available about the unknown parameters at time It can be assumed that the parameter under estimation denoted by is a root of some unknown function This is not a restriction, because, for example, may serve as such a function.

Inhaltsverzeichnis

Preface. Acknowledgments. 1. Robbins-Monro Algorithm. 2. Stochastic Approximation Algorithms with Expanding Truncations. 3. Asymptotic Properties of Stochastic Approximation Algorithms. 4. Optimization by Stochastic Approximation. 5. Applications To Signal Processing. 6. Application to Systems and Control. 7. Appendices. References. Index.

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