Instruction to Statistical Pattern Recognition

Author: Fukunaga   Keinosuke  

Publisher: Elsevier Science‎

Publication year: 1972

E-ISBN: 9780323162784

P-ISBN(Paperback): 9780122698507

P-ISBN(Hardback):  9780122698507

Subject: C934 Decision Theory

Language: ENG

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Description

Introduction to Statistical Pattern Recognition introduces the reader to statistical pattern recognition, with emphasis on statistical decision and estimation. Pattern recognition problems are discussed in terms of the eigenvalues and eigenvectors.
Comprised of 11 chapters, this book opens with an overview of the formulation of pattern recognition problems. The next chapter is devoted to linear algebra, with particular reference to the properties of random variables and vectors. Hypothesis testing and parameter estimation are then discussed, along with error probability estimation and linear classifiers. The following chapters focus on successive approaches where the classifier is adaptively adjusted each time one sample is observed; feature selection and linear mapping for one distribution and multidistributions; and problems of nonlinear mapping. The final chapter describes a clustering algorithm and considers criteria for both parametric and nonparametric clustering.
This monograph will serve as a text for the introductory courses of pattern recognition as well as a reference book for practitioners in the fields of mathematics and statistics.

Chapter

Front Cover

pp.:  1 – 4

Copyright Page

pp.:  5 – 8

Table of Contents

pp.:  8 – 12

Preface

pp.:  12 – 14

Acknowledgments

pp.:  14 – 16

Chapter 1. INTRODUCTION

pp.:  16 – 25

Chapter 2. RANDOM VECTORS AND THEIR PROPERTIES

pp.:  25 – 65

Chapter 3. HYPOTHESIS TESTING

pp.:  65 – 104

Chapter 4. LINEAR CLASSIFIERS

pp.:  104 – 137

Chapter 5. PARAMETER ESTIMATION

pp.:  137 – 180

Chapter 6. ESTIMATION OF DENSITY FUNCTIONS

pp.:  180 – 211

Chapter 7. SUCCESSIVE PARAMETER ESTIMATION

pp.:  211 – 240

Chapter 8. FEATURE SELECTION AND LINEAR MAPPING FOR ONE DISTRIBUTION

pp.:  240 – 273

Chapter 9. FEATURE SELECTION AND LINEAR MAPPING FOR MULTI DISTRIBUTIONS

pp.:  273 – 303

Chapter 10. NONLINEAR MAPPING

pp.:  303 – 338

Chapter 11. CLUSTERING

pp.:  338 – 370

REFERENCES

pp.:  370 – 378

INDEX

pp.:  378 – 385

ELECTRICAL SCIENCE

pp.:  385 – 387

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