John Wiley & Sons Geometric Data Analysis Cover Pattern analysis consists essentially of data reduction methods applied to extremely large data sets.. Product #: 978-0-471-23929-1 Regular price: $135.51 $135.51 In Stock

Geometric Data Analysis

An Empirical Approach to Dimensionality Reduction and the Study of Patterns

Kirby, Michael

Cover

1. Edition January 2001
XX, 364 Pages, Hardcover
Handbook/Reference Book

ISBN: 978-0-471-23929-1
John Wiley & Sons

Short Description

Pattern analysis consists essentially of data reduction methods applied to extremely large data sets, a field which has seen rapid advances recently due to the convergence of several trends. One factor is the recent availability of large amounts of computational power at modest prices, which has spread the use of sophisticated data analysis to the desktop. The development of chaos and complexity theory has likewise increased the sophistication of algorithms for finding partial order in noisy and incomplete data sets.

Further versions

mobi

This book addresses the most efficient methods of pattern analysis using wavelet decomposition. Readers will learn to analyze data in order to emphasize the differences between closely related patterns and then categorize them in a way that is useful to system users.

Preface.

Acknowledgments.

INTRODUCTION.

Pattern Analysis as Data Reduction.

Vector Spaces and Linear Transformations.

OPTIMAL ORTHOGONAL PATTERN REPRESENTATIONS.

The Karhunen-Loève Expansion.

Additional Theory, Algorithms and Applications.

TIME, FREQUENCY AND SCALE ANALYSIS.

Fourier Analysis.

Wavelet Expansions.

ADAPTIVE NONLINEAR MAPPINGS.

Radial Basis Functions.

Neural Networks.

Nonlinear Reduction Architectures.

Appendix A Mathemetical Preliminaries.

References.

Index.
"...provides a valuable summary of data reduction." (Technometrics, May 2002)

"...effectively describes and summarizes an emerging new field, namely, scientific data modeling and analysis." (Mathematical Reviews, 2003h)
MICHAEL KIRBY is a professor in the Department of Mathematics at Colorado State University in Fort Collins, Colorado. He has worked in the field of data reduction for well over a decade.