2nd Edition
Generalized Linear Mixed Models Modern Concepts, Methods and Applications
Preface to the Second Edition
Part 1: Essential Background
1. Modeling Basics
2. Design Matters
3. Setting the Stage
Part 2: Estimation and Inference Theory
4. Pre-GLMM Estimation and Inference Basics
5. GLMM Estimation
6. Inference, Part I
7. Inference, Part II
Part 3: Applications
8. Treatment and Explanatory Variable Structure
9. Multi-Level Models
10. Best Linear Unbiased Prediction
11. Counts
12. Rates and Proportions
13. Zero-inflated and Hurdle Models
14. Multinomial Data
15. Time-to-Event Data
16. Smoothing Splines and Additive Models
17. Correlated Errors, part 1: Repeated Measures
18. Correlated Errors, part 2: Spatial Variability
19. Bayesian Implementation of GLMM
20. Four Bayesian GLMM Examples
21. Precision, Power, Sample Size and Planning
Biography
Walt Stroup is an Emeritus Professor of Statistics. He served on the University of Nebraska statistics faculty for over 40 years, specializing in statistical modeling and statistical design. He is a Fellow of the American Statistical Association, winner of the University of Nebraska Outstanding Teaching and Innovative Curriculum Award and author or co-author of three books on mixed models and their extensions.
Marina Ptukhina (Pa-too-he-nuh), PhD, is an Associate Professor of Statistics at Whitman College. She is interested in statistical modeling, design and analysis of research studies and their applications. Her research includes applications of statistics to economics, biostatistics and statistical education. Ptukhina earned a PhD in Statistics from the University of Nebraska-Lincoln, a Master of Science degree in Mathematics from Texas Tech University and a Specialist degree in Management from The National Technical University "Kharkiv Polytechnic Institute."
Julie Garai, PhD, is a Data Scientist at Loop. She earned her PhD in Statistics from the University of Nebraska-Lincoln and a bachelor’s degree in Mathematics and Spanish from Doane College. Dr Garai actively collaborates with statisticians, psychologists, ecologists, forest scientists, software engineers, and business leaders in academia and industry. In her spare time, she enjoys leisurely walks with her dogs, dance parties with her children and playing the trombone.
"This is an excellent textbook on GLMMs. It provides a unified framework for GLMMs by extending linear models to GLMMs and redefining them with fixed and random effects for Gaussian and non-Gaussian response variables. It will be of great interest to graduate students in statistics and practitioners who have a background in classical linear and generalized linear models and would like to learn about GLMMs. Although this book focuses on SAS as a learning tool, the topics will also be beneficial to non-SAS users. Due to its in-depth coverage, it will be an invaluable resource for those who would like to apply the methodology of GLMMs and conduct analysis in their research."
- Xing Liu, Journal of the American Statistical Association, May 2025






