Freshly Printed - allow 8 days lead
Couldn't load pickup availability
The Coordinate-Free Approach to Linear Models
Treats Model I ANOVA and linear regression models with non-random predictors in a finite-dimensional setting.
Michael J. Wichura (Author)
9780521868426, Cambridge University Press
Hardback, published 23 October 2006
214 pages, 7 tables
25.4 x 17.8 x 1.3 cm, 0.59 kg
'Compelementary subjects are sketched in sequences of insightful exercises to the reader.' Zentralblatt MATH
This book is about the coordinate-free, or geometric, approach to the theory of linear models; more precisely, Model I ANOVA and linear regression models with non-random predictors in a finite-dimensional setting. This approach is more insightful, more elegant, more direct, and simpler than the more common matrix approach to linear regression, analysis of variance, and analysis of covariance models in statistics. The book discusses the intuition behind and optimal properties of various methods of estimating and testing hypotheses about unknown parameters in the models. Topics covered range from linear algebra, such as inner product spaces, orthogonal projections, book orthogonal spaces, Tjur experimental designs, basic distribution theory, the geometric version of the Gauss-Markov theorem, optimal and non-optimal properties of Gauss-Markov, Bayes, and shrinkage estimators under assumption of normality, the optimal properties of F-test, and the analysis of covariance and missing observations.
1. Introduction
2. Topics in linear algebra
3. Random vectors
4. Gauss-Markov estimation
5. Normal theory: estimation
6. Normal theory: testing
7. Analysis of covariance
8. Missing observations.
Subject Areas: Mathematical modelling [PBWH], Probability & statistics [PBT]
