Description
Extending the Linear Model with R (2nd Ed.)
Generalized Linear, Mixed Effects and Nonparametric Regression Models, Second Edition
Chapman & Hall/CRC Texts in Statistical Science Series
Author: Faraway Julian J.
Language: EnglishSubjects for Extending the Linear Model with R:
Keywords
Kenward Roger Approximation; Single Term Deletions; binary and binomial responses; Half Normal Plot; generalized linear models; Null Deviance; hypothesis testing; Qq Plot; Bayesian analysis of mixed effect models; Residual Deviance; generalized linear mixed models; Gaussian Linear Model; R code; INLA; extensions to the linear regression model; Partial Residual Plot; mixed effect models; neural networks in statistics; Dispersion Parameter; data analysis; LRT; GLM diagnostics; Dev Df Deviance; nonparametric regression models; Complementary Log Log; Posterior Distributions; Posterior Density; Ab Ilit; Box Cox Method; Linear Predictor; Εi Jk; Pearson Residuals; Min 1Q Median 3Q Max; Mass Package; Mars Approach; Negative Binomial
· 15.6x23.4 cm · Hardback
Description
/li>Contents
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Start Analyzing a Wide Range of Problems
Since the publication of the bestselling, highly recommended first edition, R has considerably expanded both in popularity and in the number of packages available. Extending the Linear Model with R: Generalized Linear, Mixed Effects and Nonparametric Regression Models, Second Edition takes advantage of the greater functionality now available in R and substantially revises and adds several topics.
New to the Second Edition
- Expanded coverage of binary and binomial responses, including proportion responses, quasibinomial and beta regression, and applied considerations regarding these models
- New sections on Poisson models with dispersion, zero inflated count models, linear discriminant analysis, and sandwich and robust estimation for generalized linear models (GLMs)
- Revised chapters on random effects and repeated measures that reflect changes in the lme4 package and show how to perform hypothesis testing for the models using other methods
- New chapter on the Bayesian analysis of mixed effect models that illustrates the use of STAN and presents the approximation method of INLA
- Revised chapter on generalized linear mixed models to reflect the much richer choice of fitting software now available
- Updated coverage of splines and confidence bands in the chapter on nonparametric regression
- New material on random forests for regression and classification
- Revamped R code throughout, particularly the many plots using the ggplot2 package
- Revised and expanded exercises with solutions now included
Demonstrates the Interplay of Theory and Practice
This textbook continues to cover a range of techniques that grow from the linear regression model. It presents three extensions to the linear framework: GLMs, mixed effect models, and nonparametric regression models. The book explains data analysis using real examples and includes all the R commands necessary to reproduce the analyses.
Introduction. Binary Response. Binomial and Proportion Responses. Variations on Logistic Regression. Count Regression. Contingency Tables. Multinomial Data. Generalized Linear Models. Other GLMS. Random Effects. Repeated Measures and Longitudinal Data. Bayesian Mixed Effect Models. Mixed Effect Models for Nonnormal Responses. Nonparametric Regression. Additive Models. Trees. Neural Networks. Appendices. Bibliography. Index.
Julian J. Faraway is a professor of statistics in the Department of Mathematical Sciences at the University of Bath. His research focuses on the analysis of functional and shape data with particular application to the modeling of human motion. He earned a PhD in statistics from the University of California, Berkeley.