
Statistics and Neural Networks
Advances at the Interface
Oxford University Press
Published on 10. February 2000
Book
Hardback
280 pages
978-0-19-852422-9 (ISBN)
Description
Recent years have seen a growing awareness of the interface between statistical research and recent advances in neural computing and artifical neural networks. This book covers various aspects of current work in the area, drawing together contributions from authors who are leading researchers in the two fields. Their contributions show a strong awareness of the common ground and of the advantages to be gained by taking the wider perspective. Topics covered include: nonlinear approaches to discriminant analysis; information-theoretic neural networks for unsupervised learning; Radial Basis Function networks; techniques for optimizing predictions; approaches to the analysis of latent structure, including probabalistic principal component analysis, density networks and the use of multiple latent variables; and a substantial chapter outlining techniques and their application in industrial case-studies. This research interface is currently extremely active and this volume gives an authoritative overview of the area, its current status and directions for future research.
Reviews / Votes
This nicely written book is recommended to all wishing to gain knowledge of the current status and trends in the area. * EMS * This impressive book ... a valuable source book for comprehensivve reviews of current developments in an exciting interface area between statistics and computer science. * Statistician *More details
Language
English
Place of publication
Oxford
United Kingdom
Target group
Professional and scholarly
Illustrations
5 halftones, numerous line figures
Dimensions
Height: 240 mm
Width: 161 mm
Thickness: 20 mm
Weight
593 gr
ISBN-13
978-0-19-852422-9 (9780198524229)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Persons
Author
Department of StatisticsDepartment of Statistics, University of Glasgow
Department of StatisticsDepartment of Statistics, University of Glasgow
Content
Flexible discriminant and mixture models ; Neural networks for unsupervised learning based on information theory ; Radial basis function networks and statistics ; Robust prediction in many-parameter models ; Density networks ; Latent variable models and data visualisation ; Analysis of latent structure models with multidimensional latent variables ; Artificial neural networks and multivariate statistics