Generalized Linear Models With Examples in R

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This textbook presents an introduction to multiple linear regression, providing real-world data sets and practice problems. A practical working knowledge of applied statistical practice is developed through the use of these data sets and numerous case studies. The authors include a set of practice problems both at the end of each chapter and at the end of the book. Each example in the text is cross-referenced with the relevant data set, so that readers can load the data and follow the analysis in their own R sessions. The balance between theory and practice is evident in the list of problems, which vary in difficulty and purpose. This book is designed with teaching and learning in mind, featuring chapter introductions and summaries, exercises, short answers, and simple, clear examples. Focusing on the connections between generalized linear models (GLMs) and linear regression, the book also references advanced topics and tools that have not typically been included in introductions to GLMs to date, such as Tweedie family distributions with power variance functions, saddlepoint approximations, likelihood score tests, modified profile likelihood, and randomized quantile residuals. In addition, the authors introduce the new R code package, GLMsData, created specifically for this book. Generalized Linear Models with Examples in R balances theory with practice, making it ideal for both introductory and graduate-level students who have a basic knowledge of matrix algebra, calculus, and statistics.

Author(s): Peter K. Dunn, Gordon K. Smyth
Series: Springer Texts in Statistics
Publisher: Springer
Year: 2018

Language: English
Pages: 573
Tags: Statistics, Generalized Linear Models, R

Front Matter ....Pages i-xx
Chapter 1: Statistical Models (Peter K. Dunn, Gordon K. Smyth)....Pages 1-30
Chapter 2: Linear Regression Models (Peter K. Dunn, Gordon K. Smyth)....Pages 31-91
Chapter 3: Linear Regression Models: Diagnostics and Model-Building (Peter K. Dunn, Gordon K. Smyth)....Pages 93-164
Chapter 4: Beyond Linear Regression: The Method of Maximum Likelihood (Peter K. Dunn, Gordon K. Smyth)....Pages 165-209
Chapter 5: Generalized Linear Models: Structure (Peter K. Dunn, Gordon K. Smyth)....Pages 211-241
Chapter 6: Generalized Linear Models: Estimation (Peter K. Dunn, Gordon K. Smyth)....Pages 243-263
Chapter 7: Generalized Linear Models: Inference (Peter K. Dunn, Gordon K. Smyth)....Pages 265-296
Chapter 8: Generalized Linear Models: Diagnostics (Peter K. Dunn, Gordon K. Smyth)....Pages 297-331
Chapter 9: Models for Proportions: Binomial GLMs (Peter K. Dunn, Gordon K. Smyth)....Pages 333-369
Chapter 10: Models for Counts: Poisson and Negative Binomial GLMs (Peter K. Dunn, Gordon K. Smyth)....Pages 371-424
Chapter 11: Positive Continuous Data: Gamma and Inverse Gaussian GLMs (Peter K. Dunn, Gordon K. Smyth)....Pages 425-456
Chapter 12: Tweedie GLMs (Peter K. Dunn, Gordon K. Smyth)....Pages 457-490
Chapter 13: Extra Problems (Peter K. Dunn, Gordon K. Smyth)....Pages 491-501
Back Matter ....Pages 503-562