<p><p>This book contains 296 exercises and solutions covering a wide variety of topics in linear model theory, including generalized inverses, estimability, best linear unbiased estimation and prediction, ANOVA, confidence intervals, simultaneous confidence intervals, hypothesis testing, and varianc
Linear Model Theory: With Examples and Exercises
โ Scribed by Dale L. Zimmerman
- Publisher
- Springer International Publishing;Springer
- Year
- 2020
- Tongue
- English
- Leaves
- 513
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This textbook presents a unified and rigorous approach to best linear unbiased estimation and prediction of parameters and random quantities in linear models, as well as other theory upon which much of the statistical methodology associated with linear models is based. The single most unique feature of the book is that each major concept or result is illustrated with one or more concrete examples or special cases. Commonly used methodologies based on the theory are presented in methodological interludes scattered throughout the book, along with a wealth of exercises that will benefit students and instructors alike. Generalized inverses are used throughout, so that the model matrix and various other matrices are not required to have full rank. Considerably more emphasis is given to estimability, partitioned analyses of variance, constrained least squares, effects of model misspecification, and most especially prediction than in many other textbooks on linear models. This book is intended for master and PhD students with a basic grasp of statistical theory, matrix algebra and applied regression analysis, and for instructors of linear models courses. Solutions to the bookโs exercises are available in the companion volume Linear Model Theory - Exercises and Solutions by the same author.
โฆ Table of Contents
Front Matter ....Pages i-xxi
A Brief Introduction (Dale L. Zimmerman)....Pages 1-5
Selected Matrix Algebra Topics and Results (Dale L. Zimmerman)....Pages 7-41
Generalized Inverses and Solutions to Systems of Linear Equations (Dale L. Zimmerman)....Pages 43-56
Moments of a Random Vector and of Linear and Quadratic Forms in a Random Vector (Dale L. Zimmerman)....Pages 57-68
Types of Linear Models (Dale L. Zimmerman)....Pages 69-89
Estimability (Dale L. Zimmerman)....Pages 91-113
Least Squares Estimation for the GaussโMarkov Model (Dale L. Zimmerman)....Pages 115-148
Least Squares Geometry and the Overall ANOVA (Dale L. Zimmerman)....Pages 149-168
Least Squares Estimation and ANOVA for Partitioned Models (Dale L. Zimmerman)....Pages 169-199
Constrained Least Squares Estimation and ANOVA (Dale L. Zimmerman)....Pages 201-237
Best Linear Unbiased Estimation for the Aitken Model (Dale L. Zimmerman)....Pages 239-277
Model Misspecification (Dale L. Zimmerman)....Pages 279-300
Best Linear Unbiased Prediction (Dale L. Zimmerman)....Pages 301-339
Distribution Theory (Dale L. Zimmerman)....Pages 341-385
Inference for Estimable and Predictable Functions (Dale L. Zimmerman)....Pages 387-450
Inference for VarianceโCovariance Parameters (Dale L. Zimmerman)....Pages 451-486
Empirical BLUE and BLUP (Dale L. Zimmerman)....Pages 487-497
Back Matter ....Pages 499-504
โฆ Subjects
Statistics; Statistical Theory and Methods; Linear and Multilinear Algebras, Matrix Theory
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