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Adaptive Learning of Polynomial Networks
Genetic Programming, Backpropagation and Bayesian Methods
Buch von Hitoshi Iba (u. a.)
Sprache: Englisch

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Beschreibung
This book provides theoretical and practical knowledge for develop­ ment of algorithms that infer linear and nonlinear models. It offers a methodology for inductive learning of polynomial neural network mod­ els from data. The design of such tools contributes to better statistical data modelling when addressing tasks from various areas like system identification, chaotic time-series prediction, financial forecasting and data mining. The main claim is that the model identification process involves several equally important steps: finding the model structure, estimating the model weight parameters, and tuning these weights with respect to the adopted assumptions about the underlying data distrib­ ution. When the learning process is organized according to these steps, performed together one after the other or separately, one may expect to discover models that generalize well (that is, predict well). The book off'ers statisticians a shift in focus from the standard f- ear models toward highly nonlinear models that can be found by con­ temporary learning approaches. Speciafists in statistical learning will read about alternative probabilistic search algorithms that discover the model architecture, and neural network training techniques that identify accurate polynomial weights. They wfil be pleased to find out that the discovered models can be easily interpreted, and these models assume statistical diagnosis by standard statistical means. Covering the three fields of: evolutionary computation, neural net­ works and Bayesian inference, orients the book to a large audience of researchers and practitioners.
This book provides theoretical and practical knowledge for develop­ ment of algorithms that infer linear and nonlinear models. It offers a methodology for inductive learning of polynomial neural network mod­ els from data. The design of such tools contributes to better statistical data modelling when addressing tasks from various areas like system identification, chaotic time-series prediction, financial forecasting and data mining. The main claim is that the model identification process involves several equally important steps: finding the model structure, estimating the model weight parameters, and tuning these weights with respect to the adopted assumptions about the underlying data distrib­ ution. When the learning process is organized according to these steps, performed together one after the other or separately, one may expect to discover models that generalize well (that is, predict well). The book off'ers statisticians a shift in focus from the standard f- ear models toward highly nonlinear models that can be found by con­ temporary learning approaches. Speciafists in statistical learning will read about alternative probabilistic search algorithms that discover the model architecture, and neural network training techniques that identify accurate polynomial weights. They wfil be pleased to find out that the discovered models can be easily interpreted, and these models assume statistical diagnosis by standard statistical means. Covering the three fields of: evolutionary computation, neural net­ works and Bayesian inference, orients the book to a large audience of researchers and practitioners.
Zusammenfassung

This book delivers theoretical and practical knowledge for developing algorithms that infer linear and non-linear multivariate models, providing a methodology for inductive learning of polynomial neural network models (PNN) from data. The text emphasizes an organized identification process by which to discover models that generalize and predict well. The investigations detailed here demonstrate that PNN models evolved by genetic programming and improved by backpropagation are successful when solving real-world tasks. Here is an essential reference for researchers and practitioners in the fields of evolutionary computation, artificial neural networks and Bayesian inference, as well for advanced-level students of genetic programming.

Inhaltsverzeichnis
Inductive Genetic Programming.- Tree-Like PNN Representations.- Fitness Functions and Landscapes.- Search Navigation.- Backpropagation Techniques.- Temporal Backpropagation.- Bayesian Inference Techniques.- Statistical Model Diagnostics.- Time Series Modelling.- Conclusions.
Details
Erscheinungsjahr: 2006
Genre: Importe, Technik allg.
Rubrik: Naturwissenschaften & Technik
Medium: Buch
Reihe: Genetic and Evolutionary Computation
Inhalt: xiv
316 S.
62 s/w Illustr.
ISBN-13: 9780387312392
ISBN-10: 0387312390
Sprache: Englisch
Herstellernummer: 11547471
Ausstattung / Beilage: HC runder Rücken kaschiert
Einband: Gebunden
Autor: Iba, Hitoshi
Nikolaev, Nikolay
Hersteller: Springer US
Taylor & Francis
Genetic and Evolutionary Computation
Verantwortliche Person für die EU: Springer Verlag GmbH, Tiergartenstr. 17, D-69121 Heidelberg, juergen.hartmann@springer.com
Maße: 241 x 160 x 23 mm
Von/Mit: Hitoshi Iba (u. a.)
Erscheinungsdatum: 03.05.2006
Gewicht: 0,664 kg
Artikel-ID: 102238227
Zusammenfassung

This book delivers theoretical and practical knowledge for developing algorithms that infer linear and non-linear multivariate models, providing a methodology for inductive learning of polynomial neural network models (PNN) from data. The text emphasizes an organized identification process by which to discover models that generalize and predict well. The investigations detailed here demonstrate that PNN models evolved by genetic programming and improved by backpropagation are successful when solving real-world tasks. Here is an essential reference for researchers and practitioners in the fields of evolutionary computation, artificial neural networks and Bayesian inference, as well for advanced-level students of genetic programming.

Inhaltsverzeichnis
Inductive Genetic Programming.- Tree-Like PNN Representations.- Fitness Functions and Landscapes.- Search Navigation.- Backpropagation Techniques.- Temporal Backpropagation.- Bayesian Inference Techniques.- Statistical Model Diagnostics.- Time Series Modelling.- Conclusions.
Details
Erscheinungsjahr: 2006
Genre: Importe, Technik allg.
Rubrik: Naturwissenschaften & Technik
Medium: Buch
Reihe: Genetic and Evolutionary Computation
Inhalt: xiv
316 S.
62 s/w Illustr.
ISBN-13: 9780387312392
ISBN-10: 0387312390
Sprache: Englisch
Herstellernummer: 11547471
Ausstattung / Beilage: HC runder Rücken kaschiert
Einband: Gebunden
Autor: Iba, Hitoshi
Nikolaev, Nikolay
Hersteller: Springer US
Taylor & Francis
Genetic and Evolutionary Computation
Verantwortliche Person für die EU: Springer Verlag GmbH, Tiergartenstr. 17, D-69121 Heidelberg, juergen.hartmann@springer.com
Maße: 241 x 160 x 23 mm
Von/Mit: Hitoshi Iba (u. a.)
Erscheinungsdatum: 03.05.2006
Gewicht: 0,664 kg
Artikel-ID: 102238227
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