2nd Edition

Generalized Linear Models with Random Effects Unified Analysis via H-likelihood, Second Edition

    466 Pages 69 B/W Illustrations
    by Chapman & Hall

    466 Pages 69 B/W Illustrations
    by Chapman & Hall

    466 Pages 69 B/W Illustrations
    by Chapman & Hall

    This is the second edition of a monograph on generalized linear models with random effects that extends the classic work of McCullagh and Nelder. It has been thoroughly updated, with around 80 pages added, including new material on the extended likelihood approach that strengthens the theoretical basis of the methodology, new developments in variable selection and multiple testing, and new examples and applications. It includes an R package for all the methods and examples that supplement the book.

    Preface to the first edition



    Preface



    Introduction



    Classical likelihood theory



    Generlized linear models



    Quasi-likelihood



    Extended likelihood inferences



    Normal linear mixed models



    Hierarchical GLMS



    HGLMs with structured dispersion



    Correlated randoms effects for HGLMs



    Smoothing



    Double HGLMs



    Variable Selection and Sparsity Models



    Multivariate and Missing Data Analysis



    Multiple testing



    References



    Data index



    Author index



    Subject index

    Biography

    Youngjo Lee is Professor at Seoul National University, South Korea.

    "Generalized Linear Models with Random Effects is a comprehensive book on likelihood methods in generalized linear models (GLMs) including linear models with normally distributed errors. … The book is suitable for those with graduate training in mathematical statistics. The level of mathematical detail is similar to that of McCullagh and Nelder (1989), with the focus shifted towards likelihood methods. All chapters contain examples with a fair amount of detail. The book is very broad and offers a comprehensive overview of likelihood methods."
    —Christiana Drake, in ISCB News, December 2018

    Praise for the first edition:

    "… This book provides a comprehensive summary of [the authors' past work]. However, it is much more than that, and even statisticians who do not agree with their approach to inference will find much here of interest. … some instructors might find this to be a useful text for a course on generalized linear models. … there are many ideas that will be useful for students to mull over …"
    A. Agresti (University of Florida), Short Book Reviews

    "The book is well written and replete with examples and discussions. With over 500 references, the authors have amassed an enormous amount of information in a single source."
    James W. Hardin, University of South Carolina, in Journal of the American Statistical Association, June 2009, Vol. 104, No. 486

    "The book’s material is valuable . . . There are numerous examples and applications, illustrated on the accompanying Genstat CD."
    Hassan S. Bakouch, Tanta University, in Journal of Applied Statistics, September 2007, Vol. 34, No. 7