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Measurement, Regression and Calibration
     

Measurement, Regression and Calibration

by P. J. Brown, Philip J. Brown
 

ISBN-10: 0198522452

ISBN-13: 9780198522454

Pub. Date: 01/28/1994

Publisher: Oxford University Press, USA

With an abundance of helpful examples, this text expertly presents the essentials of measurement, regression, and calibration. The book develops the fundamentals and underlying theories of key techniques in a clear, step-by-step progression, starting with standard least squares prediction of a single variable and moving on to shrinkage techniques for multiple

Overview

With an abundance of helpful examples, this text expertly presents the essentials of measurement, regression, and calibration. The book develops the fundamentals and underlying theories of key techniques in a clear, step-by-step progression, starting with standard least squares prediction of a single variable and moving on to shrinkage techniques for multiple variables. Self-contained chapters discuss methods that have been specifically developed for spectroscopy, likelihood and Bayesian inference (which may be applied to a wide range of multivariate regression problems), and Bayesian approaches to pattern recognition, among other topics. Ideal for instruction as well as for reference, Measurement, Regression, and Calibration will be a valuable addition to the bookshelves of professionals and advanced students in statistics and other pertinent fields.

Product Details

ISBN-13:
9780198522454
Publisher:
Oxford University Press, USA
Publication date:
01/28/1994
Series:
Oxford Statistical Science Series , #12
Pages:
216
Product dimensions:
6.31(w) x 9.50(h) x 0.69(d)

Related Subjects

Table of Contents

Introduction
1. Simple linear regression
2. Multiple regression and calibration
3. Regularized multiple regression
4. Multivariate calibration
5. Regression on curves
6. Non-linearity and selection
7. Pattern recognition
A. Distribution theory
B. Conditional inference
C. Regularization dominance
E. Partial least-squares algorithm
Bibliography
Index

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