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Regression Models for Categorical, Count, and Related Variables
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Social science and behavioral science students and researchers are often confronted with data that are categorical, count a phenomenon, or have been collected over time. Sociologists examining the ...
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16 August 2016

Social science and behavioral science students and researchers are often confronted with data that are categorical, count a phenomenon, or have been collected over time. Sociologists examining the likelihood of interracial marriage, political scientists studying voting behavior, criminologists counting the number of offenses people commit, health scientists studying the number of suicides across neighborhoods, and psychologists modeling mental health treatment success are all interested in outcomes that are not continuous. Instead, they must measure and analyze these events and phenomena in a discrete manner.
This book provides an introduction and overview of several statistical models designed for these types of outcomes—all presented with the assumption that the reader has only a good working knowledge of elementary algebra and has taken introductory statistics and linear regression analysis.
Numerous examples from the social sciences demonstrate the practical applications of these models. The chapters address logistic and probit models, including those designed for ordinal and nominal variables, regular and zero-inflated Poisson and negative binomial models, event history models, models for longitudinal data, multilevel models, and data reduction techniques such as principal components and factor analysis.
Each chapter discusses how to utilize the models and test their assumptions with the statistical software Stata, and also includes exercise sets so readers can practice using these techniques. Appendices show how to estimate the models in SAS, SPSS, and R; provide a review of regression assumptions using simulations; and discuss missing data.
A companion website includes downloadable versions of all the data sets used in the book.
This book provides an introduction and overview of several statistical models designed for these types of outcomes—all presented with the assumption that the reader has only a good working knowledge of elementary algebra and has taken introductory statistics and linear regression analysis.
Numerous examples from the social sciences demonstrate the practical applications of these models. The chapters address logistic and probit models, including those designed for ordinal and nominal variables, regular and zero-inflated Poisson and negative binomial models, event history models, models for longitudinal data, multilevel models, and data reduction techniques such as principal components and factor analysis.
Each chapter discusses how to utilize the models and test their assumptions with the statistical software Stata, and also includes exercise sets so readers can practice using these techniques. Appendices show how to estimate the models in SAS, SPSS, and R; provide a review of regression assumptions using simulations; and discuss missing data.
A companion website includes downloadable versions of all the data sets used in the book.
Price: $65.00
Pages: 432
Publisher: University of California Press
Imprint: University of California Press
Publication Date:
16 August 2016
ISBN: 9780520965492
Format: eBook
Preface
Acknowledgments
1. Review of Linear Regression Models
2. Categorical Data and Generalized Linear Models
3. Logistic and Probit Regression Models
4. Ordered Logistic and Probit Regression Models
5. Multinomial Logistic and Probit Regression Models
6. Poisson and Negative Binomial Regression Models
7. Event History Models
8. Regression Models for Longitudinal Data
9. Multilevel Regression Models
10. Principal Components and Factor Analysis
Appendix A: SAS, SPSS, and R Code for Examples in Chapters
Section 1: SAS Code
Section 2: SPSS Syntax
Section 3: R Code
Appendix B: Using Simulations to Examine Assumptions of OLS Regression
Appendix C: Working with Missing Data
References
Index
Acknowledgments
1. Review of Linear Regression Models
2. Categorical Data and Generalized Linear Models
3. Logistic and Probit Regression Models
4. Ordered Logistic and Probit Regression Models
5. Multinomial Logistic and Probit Regression Models
6. Poisson and Negative Binomial Regression Models
7. Event History Models
8. Regression Models for Longitudinal Data
9. Multilevel Regression Models
10. Principal Components and Factor Analysis
Appendix A: SAS, SPSS, and R Code for Examples in Chapters
Section 1: SAS Code
Section 2: SPSS Syntax
Section 3: R Code
Appendix B: Using Simulations to Examine Assumptions of OLS Regression
Appendix C: Working with Missing Data
References
Index