Springer, 2001. — 659 p. — 2nd ed. — ISBN: 0387984542, 9780387984544
Least squares estimation, when used appropriately, is a powerful research tool. A deeper understanding of the regression concepts is essential for achieving optimal benefits from a least squares analysis. This book builds on the fundamentals of statistical methods and provides appropriate concepts that will allow a scientist to use least squares as an effective research tool.
Applied Regression Analysis is aimed at the scientist who wishes to gain a working knowledge of regression analysis. The basic purpose of this book is to develop an understanding of least squares and related statistical methods without becoming excessively mathematical. It is the outgrowth of more than 30 years of consulting experience with scientists and many years of teaching an applied regression course to graduate students. Applied Regression Analysis serves as an excellent text for a service course on regression for non-statisticians and as a reference for researchers. It also provides a bridge between a two-semester introduction to statistical methods and a thoeretical linear models course.
Applied Regression Analysis emphasizes the concepts and the analysis of data sets. It provides a review of the key concepts in simple linear regression, matrix operations, and multiple regression. Methods and criteria for selecting regression variables and geometric interpretations are discussed. Polynomial, trigonometric, analysis of variance, nonlinear, time series, logistic, random effects, and mixed effects models are also discussed. Detailed case studies and exercises based on real data sets are used to reinforce the concepts. The data sets used in the book are available on the Internet.
Review of Simple Regression
Introduction to Matrices
Multiple Regression in Matrix Notation
Analysis of Variance and Quadratic Forms
Case Study: Five Independent Variables
Geometric Interpretation of Least Squares
Model Development: Variable Selection
Polynomial Regression
Class Variables in Regression
Problem Areas in Least Squares
Regression Diagnostics
Transformation of Variables
Collinearity
Case Study: Collinearity Problems
Models Nonlinear in the Parameters
Case Study: Response Curve Modeling
Analysis of Unbalanced Data
Mixed Effects Models
Case Study: Analysis of Unbalanced Data.