Applied Ordinal Logistic Regression Using Stata
From Single-Level to Multilevel Modeling
- Xing Liu - Eastern Connecticut State University
October 2015 | 552 pages | SAGE Publications, Inc
The first book to provide a unified framework for both single-level and multilevel modeling of ordinal categorical data, Applied Ordinal Logistic Regression Using Stata helps readers learn how to conduct analyses, interpret the results from Stata output, and present those results in scholarly writing. Using step-by-step instructions, this non-technical, applied book leads students, applied researchers, and practitioners to a deeper understanding of statistical concepts by closely connecting the underlying theories of models with the application of real-world data using statistical software.
An open-access website for the book at https://study.sagepub.com/liu-aolr contains data sets, Stata code, and answers to in-text questions.
Available with Perusall—an eBook that makes it easier to prepare for class
Perusall is an award-winning eBook platform featuring social annotation tools that allow students and instructors to collaboratively mark up and discuss their SAGE textbook. Backed by research and supported by technological innovations developed at Harvard University, this process of learning through collaborative annotation keeps your students engaged and makes teaching easier and more effective. Learn more.
An open-access website for the book at https://study.sagepub.com/liu-aolr contains data sets, Stata code, and answers to in-text questions.
Available with Perusall—an eBook that makes it easier to prepare for class
Perusall is an award-winning eBook platform featuring social annotation tools that allow students and instructors to collaboratively mark up and discuss their SAGE textbook. Backed by research and supported by technological innovations developed at Harvard University, this process of learning through collaborative annotation keeps your students engaged and makes teaching easier and more effective. Learn more.
1. Stata Basics
2. Review of Basic Statistics
3. Logistic Regression for Binary Data
4. Proportional Odds Models for Ordinal Response Variables
5. Partial Proportional Odds Models and Generalized Ordinal Logistic Regression Models
6. Continuation Ratio Models
7. Adjacent Categories Logistic Regression Models
8. Stereotype Logistic Regression Models
9. Ordinal Logistic Regression with Complex Survey Sampling Designs
10. Multilevel Modeling for Continuous and Binary Response Variables
11. Multilevel Modeling for Ordinal Response Variables
12. Beyond Ordinal Logistic Regression Models: Ordinal Probit Regression Models and Multinomial Logistic Regression Models