Bridging the gap between theory and practice for modern
statistical model building, Introduction to General and Generalized
Linear Models presents likelihood-based techniques for statistical
modelling using various types of data. Implementations using R are
provided throughout the text, although other software packages are
also discussed. Numerous examples show how the problems are solved
with R.
After describing the necessary likelihood theory, the book
covers both general and generalized linear models using the same
likelihood-based methods. It presents the corresponding/parallel
results for the general linear models first, since they are easier
to understand and often more well known. The authors then explore
random effects and mixed effects in a Gaussian context. They also
introduce non-Gaussian hierarchical models that are members of the
exponential family of distributions. Each chapter contains examples
and guidelines for solving the problems via R.
Providing a flexible framework for data analysis and model
building, this text focuses on the statistical methods and models
that can help predict the expected value of an outcome, dependent,
or response variable. It offers a sound introduction to general and
generalized linear models using the popular and powerful likelihood
techniques. Ancillary materials are available at www.imm.dtu.dk/
hm/GLM
General
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