Linear Model Theory, 1st ed. 2020 With Examples and Exercises
Auteur : Zimmerman Dale L.
![Couverture de l’ouvrage Linear Model Theory](https://images.lavoisier.fr/couvertures/1317752432.jpg)
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 book?s exercises are available in the companion volume Linear Model Theory - Exercises and Solutions by the same author.
Dale L. Zimmerman is a Professor at the Department of Statistics and Actuarial Science, University of Iowa, USA. He received his Ph.D. in Statistics from Iowa State University in 1986. A Fellow of the American Statistical Association, his research interests include spatial statistics, longitudinal data analysis, multivariate analysis, mixed linear models, environmental statistics, and sports statistics. He has authored or co-authored three books and more than 90 articles in peer-reviewed journals. At the University of Iowa he teaches courses on linear models, regression analysis, spatial statistics, and mathematical statistics.
Date de parution : 11-2021
Ouvrage de 504 p.
15.5x23.5 cm
Date de parution : 11-2020
Ouvrage de 504 p.
15.5x23.5 cm
Thèmes de Linear Model Theory :
Mots-clés :
62J05, 62J10, 62F03, 62F10, 62F25, linear models, statistical theory, regression methods, generalized inverse, least squares estimation, ANOVA, best linear unbiased estimation and prediction, variance component estimation, examples and exercises, estimability, matrix algebra, random vectors, model misspecication, mean and error structures, Gauss-Markov model, Aitken model, distribution theory, mixed and random effects models, BLUE and BLUP