INTRODUCTION: Introduction. Review of Generalized Linear Models. QUASI-LEAST SQUARES THEORY AND APPLICATIONS: History and Theory of QLS Regression. Mixed Linear Structures and Familial Data. Correlation Structures for Clustered and Longitudinal Data. Analysis of Data with Multiple Sources of Correlation. Correlated Binary Data. Assessing Goodness of Fit and Choice of Correlation Structure for QLS and GEE. Sample Size and Demonstration. Bibliography. Index.
Justine Shults is an associate professor and co-director of the Pediatrics Section in the Division of Biostatistics in the Perelman School of Medicine at the University of Pennsylvania, where she is the principal investigator of the biostatistics training grant in renal and urologic diseases. She is the Statistical Editor of the Journal of the Pediatric Infectious Disease Society and the Statistical Section Editor of Springer Plus. Professor Shults (with N. Rao Chaganty) developed Quasi-Least Squares (QLS) and was funded by the National Science Foundation and the National Institutes of Health to extend QLS and develop user-friendly software for implementing her new methodology. She has authored or co-authored over 100 peer-reviewed publications, including the initial papers on QLS for unbalanced and unequally spaced longitudinal data and on MARK1ML and the choice of working correlation structure for GEE.
Joseph M. Hilbe is a Solar System Ambassador with the Jet Propulsion Laboratory, an adjunct professor of statistics at Arizona State University, and an Emeritus Professor at the University of Hawaii. An elected fellow of the American Statistical Association and an elected member of the International Statistical Institute (ISI), Professor Hilbe is president of the International Astrostatistics Association as well as chair of the ISI Sports Statistics and Astrostatistics committees. He has authored two editions of the bestseller Negative Binomial Regression, Logistic Regression Models, and Astrostatistical Challenges for the New Astronomy. He also co-authored Methods of Statistical Model Estimation (with A. Robinson), Generalized Estimating Equations, Second Edition (with J. Hardin), and R for Stata Users (with R. Muenchen), as well as 17 encyclopedia articles and book chapters in the past five years.
"The book does an excellent job of explaining basic concepts and
techniques in the analysis of longitudinal and correlated data
using QLS and GEE. Well-chosen data examples almost follow all the
technical explanations, providing the readers a flavor on what
problems QLS solves and how to solve those problems using software.
Although the authors mainly use Stata to demonstrate the examples,
they also provide web access to R, SAS, and MATLAB code and
guidelines to replicate those examples, making the book appealing
to a wide audience. The book also successfully incorporates some
recent research work without raising its technical level.
Therefore, the book will serve as a comprehensible guide to
researchers who conduct analysis on correlated data. It would also
be a good textbook for graduate students in statistics or
biostatistics. Finally, I believe it would be a popular desk
reference for methodology-oriented researchers who are interested
in longitudinal studies and related fields."
—Journal of the American Statistical Association, March 2015"This
book deals with the quasi-least squares (QLS) regression,
presenting a computational approach for the estimation of
correlation parameters in the context of the generalized estimating
equations (GEEs). … The book is provided with illustrative examples
for each topic."
—Zentralblatt MATH 1306
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