2nd Edition
Longitudinal Structural Equation Modeling A Comprehensive Introduction
Contents
List of Figures
List of Tables
Preface to the Second Editon
Preface to the First Edition
Acknowledgements
Example Data Sets
Chapter 1. Review of Some Key Latent Variable Principles
Chapter 2. Longitudinal Measurement Invariance
Chapter 3. Structural Models for Comparing Dependent Means and Proportions
Chapter 4. Fundamental Concepts of Stability and Change
Chapter 5. Cross-Lagged Panel Models
Chapter 6. Latent State-Trait Models
Chapter 7. Linear Latent Growth Curve Models
Chapter 8. Nonlinear Latent Growth Curve Models
Chapter 9. Nonlinear Latent Growth Curve Models
Chapter 10. Latent Class and Latent Transition
Chapter 11. Growth Mixture Models
Chapter 12. Intensive Longitudinal Models: Time Series and Dynamic Structural Equation Models
Chapter 13. Survival Analysis Models
Chapter 14. Missing Data and Attrition
Appendix A: Notation
Appendix B: Why Does the Single Occasion Scaling Constraint Approach Work?
Appendix C: A Primer on the Calculus of Change
Glossary
Index
Biography
Jason T. Newsom is professor of psychology at Portland State University, Portland, Oregon, USA.
"This is a "must have" volume on examining change from a SEM perspective. It is thoughtfully put together beginning with a number of basic principles/concepts in the latent variable approach to change (e.g., longitudinal measurement invariance, linear and nonlinear growth). It then moves into a number of intermediate approaches (cross-lagged panel models, latent class, latent transition, and latent growth mixture models). The final chapters provide more advanced topics (time series and dynamic structural equation models, survival analysis, and missing data). The various topics covered are extensive, clearly presented, and well supported with examples and references that readers can use to work through the analyses."
Ronald H. Heck, University of Hawaii
"This book offers a schematic, comprehensive, and well-structured resource for understanding, applying, and teaching most of the techniques related to Longitudinal SEM. The book follows a specific flow based on the difficulties of the topics. It starts with a clear introduction to latent variable modeling, then moves on widely used longitudinal applications (e.g., measurement invariance, cross-lagged panel models), and finally offers chapters on more advanced and recent topics (e.g., LST, Mixture Modeling, and DSEM). The structure of the book also allows the reader to directly access the topics of interest. Both from an applied and teaching perspective, it is difficult to think of a more complete and better structured book on longitudinal SEM."
Enrico Perinelli, University of Trento (Italy)
"I've cited Jason Newsom's first edition of Longitudinal Structural Equation Modeling many times, and his second edition continues the tradition of clear, accessible presentations that cover both the basics of analysis and modeling strategies for longitudinal data and extra details that experts would appreciate. An impressive, authoritative work."
Rex Kline, Concordia University






