Generalized Linear Mixed Models: Modern Concepts, Methods and
Applications presents an introduction to linear modeling using the
generalized linear mixed model (GLMM) as an overarching conceptual
framework. For readers new to linear models, the book helps them see the
big picture. It shows how linear models fit with the rest of the core
statistics curriculum and points out the major issues that statistical
modelers must consider.
Along with describing common applications of GLMMs, the text introduces
the essential theory and main methodology associated with linear models
that accommodate random model effects and non-Gaussian data. Unlike
traditional linear model textbooks that focus on normally distributed
data, this one adopts a generalized mixed model approach throughout:
data for linear modeling need not be normally distributed and effects
may be fixed or random.
With numerous examples using SAS(R) PROC GLIMMIX, this book is ideal for
graduate students in statistics, statistics professionals seeking to
update their knowledge, and researchers new to the generalized linear
model thought process. It focuses on data-driven processes and provides
context for extending traditional linear model thinking to generalized
linear mixed modeling.
See Professor Stroup discuss the book.