£128.49

Springer Adaptive Learning of Polynomial Networks: Genetic Programming, Backpropagation and Bayesian Methods (Genetic and Evolutionary Computation)

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£128 today · all-time low £125 (Mar 2026) · usually £128

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Last 91 days • 91 data points

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£129.97 £124.44 £125.64 £126.85 £128.06 £129.27 £130.47 24 February 2026 18 March 2026 10 April 2026 02 May 2026 25 May 2026

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Price distribution over 91 days • 3 price levels

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41 days 24 days · current 26 days 0 10 21 31 41 £125 £128 £130 Days at Price

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Most common price: £125 (41 days, 45.1%)

Price range: £125 - £130

Price levels: 3 different prices over 91 days

Description

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.

Product Specifications

Format
hardcover
Domain
Amazon UK
Release Date
03 May 2006
Listed Since
10 December 2006

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