
Principles of Neural Model Identification, Selection and Adequacy
With Applications to Financial Econometrics
Springer (Publisher)
Published on 28. May 1999
Book
Paperback/Softback
IX, 190 pages
978-1-85233-139-9 (ISBN)
Description
Neural networks have had considerable success in a variety of disciplines including engineering, control, and financial modelling. However a major weakness is the lack of established procedures for testing mis-specified models and the statistical significance of the various parameters which have been estimated. This is particularly important in the majority of financial applications where the data generating processes are dominantly stochastic and only partially deterministic. Based on the latest, most significant developments in estimation theory, model selection and the theory of mis-specified models, this volume develops neural networks into an advanced financial econometrics tool for non-parametric modelling. It provides the theoretical framework required, and displays the efficient use of neural networks for modelling complex financial phenomena. Unlike most other books in this area, this one treats neural networks as statistical devices for non-linear, non-parametric regression analysis.
More details
Series
Edition
Softcover reprint of the original 1st ed. 1999
Language
English
Place of publication
London
United Kingdom
Target group
Professional and scholarly
Research
Illustrations
34 s/w Abbildungen
IX, 190 p. 34 illus.
Dimensions
Height: 235 mm
Width: 155 mm
Thickness: 12 mm
Weight
318 gr
ISBN-13
978-1-85233-139-9 (9781852331399)
DOI
10.1007/978-1-4471-0559-6
Schweitzer Classification
Other editions
Additional editions

Achilleas Zapranis | Apostolos-Paul N. Refenes
Principles of Neural Model Identification, Selection and Adequacy
With Applications to Financial Econometrics
E-Book
12/2012
Springer
€96.29
Available for download
Content
1 Introduction.- 2 Neural Model Identification.- 3 Review of Current Practice in Neural Model Identification.- 4 Neural Model Selection: the Minimum Prediction Risk Principle.- 5 Variable Significance Testing: a Statistical Approach.- 6 Model Adequacy Testing.- 7 Neural Networks in Tactical Asset Allocation: a Case Study.- 8 Conclusions.- Appendices.- A Computation of Network Derivatives.- B Generating Random Normal Deviates.- References.