Richly parameterized linear models: additive, time series, and spatial models using random effects (Record no. 390538)

MARC details
000 -LEADER
fixed length control field 05686 a2200193 4500
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
fixed length control field 160614b2014 xxu||||| |||| 00| 0 eng d
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
International Standard Book Number 9781439866832
082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 519.536
Item number H6R4
100 ## - MAIN ENTRY--PERSONAL NAME
Personal name Hodges, James S.
9 (RLIN) 333526
245 ## - TITLE STATEMENT
Title Richly parameterized linear models: additive, time series, and spatial models using random effects
Statement of responsibility, etc. Hodges, James S.
260 ## - PUBLICATION, DISTRIBUTION, ETC.
Place of publication, distribution, etc. Boca Raton
Name of publisher, distributor, etc. CRC Press
Date of publication, distribution, etc. 2014
300 ## - PHYSICAL DESCRIPTION
Extent xxxviii, 431 p.
440 ## - SERIES STATEMENT/ADDED ENTRY--TITLE
Title Chapman & Hall/CRC Texts in Statistical Science
9 (RLIN) 268067
504 ## - BIBLIOGRAPHY, ETC. NOTE
Bibliography, etc. note Table of Contents:<br/><br/>1. Mixed Linear Models: Syntax, Theory, and Methods <br/>An Opinionated Survey of Methods for Mixed Linear Models<br/>Mixed linear models in the standard formulation <br/>Conventional analysis of the mixed linear model<br/>Bayesian analysis of the mixed linear model<br/>Conventional and Bayesian approaches compared<br/>A few words about computing <br/><br/>2. Two More Tools: Alternative Formulation, Measures of Complexity <br/>Alternative formulation: The "constraint-case" formulation<br/>Measuring the complexity of a mixed linear model fit<br/><br/>3. Richly Parameterized Models as Mixed Linear Models<br/>Penalized Splines as Mixed Linear Models <br/>Penalized splines: Basis, knots, and penalty <br/>More on basis, knots, and penalty <br/>Mixed linear model representation <br/><br/>4. Additive Models and Models with Interactions <br/>Additive models as mixed linear models <br/>Models with interactions<br/><br/>5. Spatial Models as Mixed Linear Models<br/>Geostatistical models<br/>Models for areal data <br/>Two-dimensional penalized splines<br/><br/>6. Time-Series Models as Mixed Linear Models<br/>Example: Linear growth model <br/>Dynamic linear models in some generality <br/>Example of a multi-component DLM <br/><br/>7. Two Other Syntaxes for Richly Parameterized Models<br/>Schematic comparison of the syntaxes <br/>Gaussian Markov random fields <br/>Likelihood inference for models with unobservables <br/><br/>8. From Linear Models to Richly Parameterized Models: Mean Structure <br/>Adapting Diagnostics from Linear Models <br/>Preliminaries <br/>Added variable plots <br/>Transforming variables <br/>Case influence <br/>Residuals <br/><br/>9. Puzzles from Analyzing Real Datasets <br/>Four puzzles<br/>Overview of the next three chapters<br/><br/>10. A Random Effect Competing with a Fixed Effect <br/>Slovenia data: Spatial confounding<br/>Kids and crowns: Informative cluster size<br/><br/>11. Differential Shrinkage <br/>The simplified model and an overview of the results<br/>Details of derivations<br/>Conclusion: What might cause differential shrinkage?<br/><br/>12. Competition between Random Effects <br/>Collinearity between random effects in three simpler models<br/>Testing hypotheses on the optical-imaging data and DLM models <br/>Discussion<br/><br/>13. Random Effects Old and New <br/>Old-style random effects <br/>New-style random effects<br/>Practical consequences<br/>Conclusion<br/><br/>14. Beyond Linear Models: Variance Structure <br/>Mysterious, Inconvenient, or Wrong Results from Real Datasets <br/>Periodontal data and the ICAR model <br/>Periodontal data and the ICAR with two classes of neighbor pairs <br/>Two very different smooths of the same data <br/>Misleading zero variance estimates <br/>Multiple maxima in posteriors and restricted likelihoods <br/>Overview of the remaining chapters<br/><br/>15. Re-Expressing the Restricted Likelihood: Two-Variance Models <br/>The re-expression <br/>Examples<br/>A tentative collection of tools<br/><br/>16. Exploring the Restricted Likelihood for Two-Variance Models<br/>Which vj tell us about which variance? <br/>Two mysteries explained <br/><br/>17. Extending the Re-Expressed Restricted Likelihood<br/>Restricted likelihoods that can and can’t be re-expressed<br/>Expedients for restricted likelihoods that can’t be re-expressed<br/><br/>18. Zero Variance Estimates <br/>Some observations about zero variance estimates <br/>Some thoughts about tools<br/> <br/>19. Multiple Maxima in the Restricted Likelihood and Posterior <br/>Restricted likelihoods with multiple local maxima <br/>Posteriors with multiple modes<br/><br/><br/><br/>
520 ## - SUMMARY, ETC.
Summary, etc. A First Step toward a Unified Theory of Richly Parameterized Linear Models<br/><br/>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.<br/><br/>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.<br/><br/>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.<br/><br/>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.<br/><br/>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.<br/><br/>(https://www.crcpress.com/Richly-Parameterized-Linear-Models-Additive-Time-Series-and-Spatial-Models/Hodges/p/book/9781439866832)
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Regression analysis - Textbooks
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Linear models (Statistics) - Textbooks
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Source of classification or shelving scheme Dewey Decimal Classification
Koha item type Book
Holdings
Withdrawn status Lost status Source of classification or shelving scheme Damaged status Not for loan Collection code Home library Current library Shelving location Date acquired Source of acquisition Cost, normal purchase price Total Checkouts Total Renewals Full call number Barcode Date last seen Date last checked out Cost, replacement price Price effective from Koha item type
    Dewey Decimal Classification     Non-fiction Ahmedabad Ahmedabad   15/06/2016 13 5185.33 1 3 519.536 H6R4 192274 27/09/2017 16/06/2016 6481.67 15/06/2016 Book

Powered by Koha