The text includes an overview of regression (Chapter 2); how to examine and summarize the data (Chapter 3), simple (Chapter 4) and multiple (Chapter 5) linear regression; binary, ordinal, and conditional logistic regression, and log-binomial regression (Chapter 6); Cox proportional hazards regression (survival analysis) (Chapter 7); handling data arising from a complex survey design (Chapter 8); and multiple imputation of missing data (Chapter 9). Each chapter closes with a comprehensive set of exercises.
Key Features:
- Comprehensive coverage of the most commonly used regression methods, as well as how to use regression with complex survey data or missing data
- Accessible to those with only a first course in statistics
- Serves as a course textbook, as well as a reference for public health and clinical researchers seeking to learn regression and/or how to use R to do regression analyses
- Includes examples of how to diagnose the fit of a regression model
- Includes examples of how to summarize, visualize, table, and write up the results
- Includes R code to run the examples
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