Linear Model Methodology

Regular price €198.40
A01=Andre I. Khuri
advanced linear statistical methods
algebra
Andre Khuri
Author_Andre I. Khuri
Category=PBT
Confidence Intervals
Confidence Region
covariance
Data Set
Distinct Nonzero Eigenvalues
effects
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Estimable Linear Functions
Estimating Variance Components
experimental design theory
Finals Page
fixed effects
Full Column Rank
full rank
Full Row Rank
Gauss Markov Theorem
Levene's Test Statistic
Levene’s Test Statistic
Linear Functions
Linear Model Methodology
linear models
matrices
matrix
matrix algebra applications
Method Iii
mixed-effects modeling
Model Statement
modeling techniques
multivariate distribution
multivariate normal distribution
Mutually Independent
non-full rank
Noncentrality Parameter
Orthonormal Eigenvectors
Positive Semidefinite
Quadratic Forms
random
response
SAS Statement
Simultaneous Confidence Intervals
statistical inference
statistics
subspace
surface
variance
Variance Components
variance components analysis
Variance Covariance Matrix
vector
Vice Versa

Product details

  • ISBN 9781584884811
  • Weight: 1200g
  • Dimensions: 156 x 234mm
  • Publication Date: 21 Oct 2009
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Given the importance of linear models in statistical theory and experimental research, a good understanding of their fundamental principles and theory is essential. Supported by a large number of examples, Linear Model Methodology provides a strong foundation in the theory of linear models and explores the latest developments in data analysis.

After presenting the historical evolution of certain methods and techniques used in linear models, the book reviews vector spaces and linear transformations and discusses the basic concepts and results of matrix algebra that are relevant to the study of linear models. Although mainly focused on classical linear models, the next several chapters also explore recent techniques for solving well-known problems that pertain to the distribution and independence of quadratic forms, the analysis of estimable linear functions and contrasts, and the general treatment of balanced random and mixed-effects models. The author then covers more contemporary topics in linear models, including the adequacy of Satterthwaite’s approximation, unbalanced fixed- and mixed-effects models, heteroscedastic linear models, response surface models with random effects, and linear multiresponse models. The final chapter introduces generalized linear models, which represent an extension of classical linear models.

Linear models provide the groundwork for analysis of variance, regression analysis, response surface methodology, variance components analysis, and more, making it necessary to understand the theory behind linear modeling. Reflecting advances made in the last thirty years, this book offers a rigorous development of the theory underlying linear models.

André I. Khuri is a Professor Emeritus in the Department of Statistics at the University of Florida in Gainesville.