
Categorical Data Analysis with Structural Equation Models
applications in mplus and lavaan
$243.18
- Hardcover
368 pages
- Release Date
9 September 2025
Summary
Unlock the Power of Categorical Data: A Structural Equation Modeling Approach
Multivariate categorical outcomes, such as Likert scale responses and disease diagnoses, require specialized structural equation modeling (SEM) software to be analyzed properly. Providing needed skills for applied researchers and graduate students, this book leads readers from regression analysis with categorical outcomes to complex SEMs with latent variables for categorical indicators.
Book Details
ISBN-13: | 9781462558315 |
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ISBN-10: | 1462558313 |
Author: | Kevin J. Grimm |
Publisher: | Guilford Publications |
Imprint: | Guilford Press |
Format: | Hardcover |
Number of Pages: | 368 |
Release Date: | 9 September 2025 |
Weight: | 0g |
Dimensions: | 254mm x 178mm |
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What They're Saying
Critics Review
“Grimm once again shows his knack for taking complex statistical models and ideas and expressing them in understandable terms. Categorical data come in many forms: binary, ordinal, and count variables, among others. Grimm explains modeling options for each type of analytic model, from regression models to more advanced models. Example scripts for Mplus and lavaan provide readers with clear roadmaps for conducting analyses and understanding results. This book is a ‘must read’ for anyone interested in learning about categorical data analysis in the social sciences using state-of-the-art methods.”–Keith F. Widaman, PhD, Distinguished Professor Emeritus of Education and Distinguished Professor of the Graduate Division, University of California, Riverside “This book fills an important gap in texts on SEM. Grimm provides rigorous, in-depth coverage of regression, path models, SEM, growth models, and mixture models, combined with practical instruction on programming in Mplus and lavaan. This book is a valuable resource for researchers modeling categorical, count, and time-to-event data, frequently encountered in social science research. As a course text, this book will provide the next level of knowledge to students who have learned the basics of SEM, and it will equip them with the expertise and skills necessary to implement these sophisticated models.”–Paul Sacco, PhD, School of Social Work, University of Maryland, Baltimore “This book offers comprehensive coverage of key topics in SEM with categorical data. Chapters include practical data analysis examples using two widely adopted SEM software packages–Mplus and R (with the lavaan package)–accompanied by clear interpretations of the results. I highly recommend this book to researchers seeking to deepen their understanding of categorical data analysis in applied contexts. It also serves as an excellent text for graduate-level courses on categorical data analysis and advanced SEM.”–Myeongsun Yoon, PhD, Department of Educational Psychology, Texas A&M University “I particularly enjoy the lavaan and Mplus code that accompanies the book, which is more detailed than in other books I have come across. The book is well written and provides excellent syntax examples. I would use it to teach categorical SEM in my graduate SEM course.”–Jam Khojasteh, PhD, Research, Evaluation, Measurement, and Statistics Program, Oklahoma State University-
About The Author
Kevin J. Grimm
Kevin J. Grimm, PhD, is Professor of Psychology at Arizona State University. His research interests include multivariate methods for the analysis of change, multiple group and latent class models for understanding divergent developmental processes, categorical data analysis, machine learning techniques for psychological data, and cognitive/achievement development. Dr. Grimm teaches graduate quantitative courses, including Longitudinal Growth Modeling, Machine Learning in Psychology, Structural Equation Modeling, Advanced Categorical Data Analysis, and Intermediate Statistics. He has also taught workshops sponsored by the American Psychological Association’s Advanced Training Institute, Statistical Horizons, Instats, Stats Camp, and various departments and schools across the country.
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