Richly Parameterized Linear Models

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A01=James S. Hodges
advanced regression analysis
analyzing richly parameterized models using Bayesian and non-Bayesian methods
Author_James S. Hodges
Bayesian inference methods
Category=PBT
Category=PBTB
Category=PS
covariance structure analysis
design
Design Matrix Columns
difficulties in using mixed linear models
Dynamic Linear Models
effect
effects
eq_bestseller
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eq_isMigrated=2
eq_nobargain
eq_non-fiction
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Fixed Effects Design Matrix
formulation
Free Terms
Gaussian Markov Random Fields
generalized
Generalized Linear Models
hierarchical models
ICAR Model
Informative Cluster Size
likelihood
Linear Model Theory
Marginal Posterior
matrix
Maximum Restricted Likelihood Estimate
MCMC Routine
mixed
Mixed Linear Model
mixed linear model covariance matrices
Mixed Linear Model Form
Mixed Terms
Mystery Component
Ordinary Linear Models
Penalized Spline
Precision Matrix
random
Random Effects Design Matrix
restricted
richly parameterized models expressed as mixed linear models
SAS's Mixed Procedure
SAS’s Mixed Procedure
Spatial Confounding
Spatial Random Effect
spatial statistics
Spline Fit
statistical modeling techniques
Surface Temperature Data
theory of richly parameterized models
theory-based understanding of models with random effects
unifying models with random effects
Using mixed linear models to analyze data
variance estimation in mixed models

Product details

  • ISBN 9780367533731
  • Weight: 408g
  • Dimensions: 156 x 234mm
  • Publication Date: 30 Jun 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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A First Step toward a Unified Theory of Richly Parameterized Linear Models

Using mixed linear models to analyze data often leads to results that are mysterious, inconvenient, or wrong. Further compounding the problem, statisticians lack a cohesive resource to acquire a systematic, theory-based understanding of models with random effects.

Richly Parameterized Linear Models: Additive, Time Series, and Spatial Models Using Random Effects takes a first step in developing a full theory of richly parameterized models, which would allow statisticians to better understand their analysis results. The author examines what is known and unknown about mixed linear models and identifies research opportunities.

The first two parts of the book cover an existing syntax for unifying models with random effects. The text explains how richly parameterized models can be expressed as mixed linear models and analyzed using conventional and Bayesian methods.

In the last two parts, the author discusses oddities that can arise when analyzing data using these models. He presents ways to detect problems and, when possible, shows how to mitigate or avoid them. The book adapts ideas from linear model theory and then goes beyond that theory by examining the information in the data about the mixed linear model’s covariance matrices.

Each chapter ends with two sets of exercises. Conventional problems encourage readers to practice with the algebraic methods and open questions motivate readers to research further. Supporting materials, including datasets for most of the examples analyzed, are available on the author’s website.

James S. Hodges

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