This book provides a concise point of reference for the most commonly
used regression methods. It begins with linear and nonlinear regression
for normally distributed data, logistic regression for binomially
distributed data, and Poisson regression and negative-binomial
regression for count data. It then progresses to these regression models
that work with longitudinal and multi-level data structures. The volume
is designed to guide the transition from classical to more advanced
regression modeling, as well as to contribute to the rapid development
of statistics and data science. With data and computing programs
available to facilitate readers' learning experience, Statistical
Regression Modeling promotes the applications of R in linear,
nonlinear, longitudinal and multi-level regression. All included
datasets, as well as the associated R program in packages nlme and
lme4 for multi-level regression, are detailed in Appendix A. This book
will be valuable in graduate courses on applied regression, as well as
for practitioners and researchers in the fields of data science,
statistical analytics, public health, and related fields.