Description

Book Synopsis

Growth models are among the core methods for analyzing how and when people change. Discussing both structural equation and multilevel modeling approaches, this book leads readers step by step through applying each model to longitudinal data to answer particular research questions. It demonstrates cutting-edge ways to describe linear and nonlinear change patterns, examine within-person and between-person differences in change, study change in latent variables, identify leading and lagging indicators of change, evaluate co-occurring patterns of change across multiple variables, and more. User-friendly features include real data examples, code (for Mplus or NLMIXED in SAS, and OpenMx or nlme in R), discussion of the output, and interpretation of each model's results.

User-Friendly Features
*Real, worked-through longitudinal data examples serving as illustrations in each chapter.
*Script boxes that provide code for fitting the models to example data and facilitate applic

Trade Review

"This is by far the most comprehensive, up-to-date, and ready-to-use book on growth modeling that I have ever seen. The authors have proven records in effectively teaching classes and workshops on longitudinal data analysis. This is a 'must have' for anyone who wants to develop or apply growth models. The SAS, Mplus, and OpenMx example scripts and instructions are long-needed complements to those programs' respective manuals. Coverage includes the most recent developments in growth modeling, and each chapter essentially can stand by itself, providing enough information for researchers to apply the respective models in their studies to answer more complex and interesting empirical questions. The book can be used in a range of classes either as a main text or a supplement. I will definitely recommend it to students in my Structural Equation Modeling class when I teach structural growth curve modeling."--Zhiyong Johnny Zhang, PhD, Department of Psychology, University of Notre Dame

"The implementation details are superb and the level of technical detail quite stunning. It will be so helpful for longitudinal researchers to have this compendium of growth models, complete with sample code from both SEM and multilevel modeling frameworks. It is wonderful to see the item response theory and SEM frameworks so nicely integrated. The authors have hit the trifecta--pulling together multilevel modeling, SEM, and item response theory. There is truly no other book on the market that covers latent growth modeling so completely and comprehensively."--D. Betsy McCoach, PhD, Measurement, Evaluation, and Assessment Program, Neag School of Education, University of Connecticut

"This is the most thorough work on this subject that I know of; the coverage of nonlinear models is among the best I have seen. The book is written at a level suitable for an advanced graduate student learning this material or an applied researcher seeking a reference on the subject. It introduces the basics, discusses the relevant model theory/specification, and presents programming code for several packages. The authors do an exceptional job of explaining the computer code and providing insight into convergence issues and how to remedy them. It is good to have this all in one place (along with the respective output) for comparative purposes."--Daniel A. Powers, PhD, Department of Sociology, University of Texas at Austin

"This well-written book starts with clear statements about what research questions can be answered using growth models. Usefully, the authors include both multilevel modeling and SEM approaches, and analyze the example data within each framework using one proprietary program and one freely available R package. Viewing the detailed code and the results of each analysis gives the reader a chance to understand the strengths and weaknesses of each approach. Later chapters address such developments as nonlinear growth models and growth models for noncontinuous outcomes. Code for each variation is given, which expand the researcher's capacity to fit these complex models."--Yasuo Miyazaki, PhD, Associate Professor of Educational Research and Evaluation Program, Virginia Tech

"The importance that researchers and practitioners are placing on longitudinal designs and analyses signals a prominent shift toward methods that enable a better understanding of the developmental processes thought to underlie many human traits and behaviors. This book provides the essential background on latent growth models and covers several interesting methodological extensions, including models for nonlinear change, growth mixture models, and longitudinal models for assessing change in latent variables. Practical examples are woven throughout the text, accompanied by extensive annotated code in SAS, Mplus, and R, which makes both basic and more complex models accessible. This is a wonderful resource for anyone serious about longitudinal data analysis."--Jeffrey R. Harring, PhD, Department of Human Development and Quantitative Methodology, University of Maryland

"I highly recommend this book. It is a tour de force in model building with latent growth curves. The authors' use of three programming languages (Mplus, SAS, and R) is great, and they work with computer programs in an unusually careful way. The book will be of value to anyone dealing with longitudinal data."--John J. McArdle, PhD, Department of Psychology, University of Southern California -An accessible resource that provides a thorough introduction to frequently used longitudinal models….An invaluable resource for students and scholars….This book would be excellent reading material for students in various disciplines, such as psychology and education, that provide either introductory or advanced longitudinal graduate courses.--Psychometrika, 03/01/2019



Table of Contents

I. Introduction and Organization
1. Overview, Goals of Longitudinal Research, and Historical Developments
Overview
Five Rationales for Longitudinal Research
Historical Development of Growth Models
Modeling Frameworks and Programs
2. Practical Preliminaries: Things to Do before Fitting Growth Models
Data Structures
Longitudinal Plots
Data Screening
Longitudinal Measurement
Time Metrics
Change Hypotheses
Incomplete Data
Moving Forward
II. The Linear Growth Model and Its Extensions
3. Linear Growth Models
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
4. Continuous Time Metrics
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
5. Linear Growth Models with Time-Invariant Covariates
Multilevel Model Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
6. Multiple-Group Growth Modeling
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
7. Growth Mixture Modeling
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Model Fit, Model Comparison, and Class Enumeration
Important Considerations
Moving Forward
8. Multivariate Growth Models and Dynamic Predictors
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
III. Nonlinearity in Growth Modeling
9. Introduction to Nonlinearity
Organization for Nonlinear Change Models
Moving Forward
10. Growth Models with Nonlinearity in Time
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
11. Growth Models with Nonlinearity in Parameters
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
12. Growth Models with Nonlinearity in Random Coefficients
Multilevel Modeling Framework
Multilevel Modeling Implementation
Structural Equation Modeling Framework
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
IV. Modeling Change with Latent Entities
13. Modeling Change with Ordinal Outcomes
Dichotomous Outcomes
Polytomous Outcomes
Illustration
Multilevel Modeling Implementation
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
14. Modeling Change with Latent Variables Measured by Continuous Indicators
Common-Factor Model
Factorial Invariance over Time
Second-Order Growth Model
Illustration
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
15. Modeling Change with Latent Variables Measured by Ordinal Indicators
Item Response Modeling
Second-Order Growth Model
Illustration
Important Considerations
Moving Forward
V. Latent Change Scores as a Framework for Studying Change
16. Introduction to Latent Change Score Modeling
General Model Specification
Models of Change
Illustration
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
17. Multivariate Latent Change Score Models
Autoregressive Cross-Lag Model
Multivariate Growth Model
Multivariate Latent Change Score Model
Illustration
Structural Equation Modeling Implementation
Important Considerations
Moving Forward
18. Rate-of-Change Estimates in Nonlinear Growth Models
Growth Rate Models
Latent Change Score Models
Illustration
Multilevel Modeling Implementation
Structural Equation Modeling Implementation
Important Considerations
Appendix A. A Brief Introduction to Multilevel Modeling
Illustrative Example
Multilevel Modeling and Longitudinal Data
Appendix B. A Brief Introduction to Structural Equation Modeling
Illustrative Example
Structural Equation Modeling and Longitudinal Data
References
Author Index
Subject Index
About the Authors

Growth Modeling

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    RRP £70.99 – you save £3.55 (5%)

    Order before 4pm tomorrow for delivery by Mon 29 Jun 2026.

    A Hardback by Kevin J. Grimm, Nilam Ram, Ryne Estabrook

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      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Growth Modeling by Kevin J. Grimm

      Publisher: Guilford Publications
      Publication Date: 02/11/2016
      ISBN13: 9781462526062, 978-1462526062
      ISBN10: 1462526063

      Description

      Book Synopsis

      Growth models are among the core methods for analyzing how and when people change. Discussing both structural equation and multilevel modeling approaches, this book leads readers step by step through applying each model to longitudinal data to answer particular research questions. It demonstrates cutting-edge ways to describe linear and nonlinear change patterns, examine within-person and between-person differences in change, study change in latent variables, identify leading and lagging indicators of change, evaluate co-occurring patterns of change across multiple variables, and more. User-friendly features include real data examples, code (for Mplus or NLMIXED in SAS, and OpenMx or nlme in R), discussion of the output, and interpretation of each model's results.

      User-Friendly Features
      *Real, worked-through longitudinal data examples serving as illustrations in each chapter.
      *Script boxes that provide code for fitting the models to example data and facilitate applic

      Trade Review

      "This is by far the most comprehensive, up-to-date, and ready-to-use book on growth modeling that I have ever seen. The authors have proven records in effectively teaching classes and workshops on longitudinal data analysis. This is a 'must have' for anyone who wants to develop or apply growth models. The SAS, Mplus, and OpenMx example scripts and instructions are long-needed complements to those programs' respective manuals. Coverage includes the most recent developments in growth modeling, and each chapter essentially can stand by itself, providing enough information for researchers to apply the respective models in their studies to answer more complex and interesting empirical questions. The book can be used in a range of classes either as a main text or a supplement. I will definitely recommend it to students in my Structural Equation Modeling class when I teach structural growth curve modeling."--Zhiyong Johnny Zhang, PhD, Department of Psychology, University of Notre Dame

      "The implementation details are superb and the level of technical detail quite stunning. It will be so helpful for longitudinal researchers to have this compendium of growth models, complete with sample code from both SEM and multilevel modeling frameworks. It is wonderful to see the item response theory and SEM frameworks so nicely integrated. The authors have hit the trifecta--pulling together multilevel modeling, SEM, and item response theory. There is truly no other book on the market that covers latent growth modeling so completely and comprehensively."--D. Betsy McCoach, PhD, Measurement, Evaluation, and Assessment Program, Neag School of Education, University of Connecticut

      "This is the most thorough work on this subject that I know of; the coverage of nonlinear models is among the best I have seen. The book is written at a level suitable for an advanced graduate student learning this material or an applied researcher seeking a reference on the subject. It introduces the basics, discusses the relevant model theory/specification, and presents programming code for several packages. The authors do an exceptional job of explaining the computer code and providing insight into convergence issues and how to remedy them. It is good to have this all in one place (along with the respective output) for comparative purposes."--Daniel A. Powers, PhD, Department of Sociology, University of Texas at Austin

      "This well-written book starts with clear statements about what research questions can be answered using growth models. Usefully, the authors include both multilevel modeling and SEM approaches, and analyze the example data within each framework using one proprietary program and one freely available R package. Viewing the detailed code and the results of each analysis gives the reader a chance to understand the strengths and weaknesses of each approach. Later chapters address such developments as nonlinear growth models and growth models for noncontinuous outcomes. Code for each variation is given, which expand the researcher's capacity to fit these complex models."--Yasuo Miyazaki, PhD, Associate Professor of Educational Research and Evaluation Program, Virginia Tech

      "The importance that researchers and practitioners are placing on longitudinal designs and analyses signals a prominent shift toward methods that enable a better understanding of the developmental processes thought to underlie many human traits and behaviors. This book provides the essential background on latent growth models and covers several interesting methodological extensions, including models for nonlinear change, growth mixture models, and longitudinal models for assessing change in latent variables. Practical examples are woven throughout the text, accompanied by extensive annotated code in SAS, Mplus, and R, which makes both basic and more complex models accessible. This is a wonderful resource for anyone serious about longitudinal data analysis."--Jeffrey R. Harring, PhD, Department of Human Development and Quantitative Methodology, University of Maryland

      "I highly recommend this book. It is a tour de force in model building with latent growth curves. The authors' use of three programming languages (Mplus, SAS, and R) is great, and they work with computer programs in an unusually careful way. The book will be of value to anyone dealing with longitudinal data."--John J. McArdle, PhD, Department of Psychology, University of Southern California -An accessible resource that provides a thorough introduction to frequently used longitudinal models….An invaluable resource for students and scholars….This book would be excellent reading material for students in various disciplines, such as psychology and education, that provide either introductory or advanced longitudinal graduate courses.--Psychometrika, 03/01/2019



      Table of Contents

      I. Introduction and Organization
      1. Overview, Goals of Longitudinal Research, and Historical Developments
      Overview
      Five Rationales for Longitudinal Research
      Historical Development of Growth Models
      Modeling Frameworks and Programs
      2. Practical Preliminaries: Things to Do before Fitting Growth Models
      Data Structures
      Longitudinal Plots
      Data Screening
      Longitudinal Measurement
      Time Metrics
      Change Hypotheses
      Incomplete Data
      Moving Forward
      II. The Linear Growth Model and Its Extensions
      3. Linear Growth Models
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      4. Continuous Time Metrics
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      5. Linear Growth Models with Time-Invariant Covariates
      Multilevel Model Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      6. Multiple-Group Growth Modeling
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      7. Growth Mixture Modeling
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Model Fit, Model Comparison, and Class Enumeration
      Important Considerations
      Moving Forward
      8. Multivariate Growth Models and Dynamic Predictors
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      III. Nonlinearity in Growth Modeling
      9. Introduction to Nonlinearity
      Organization for Nonlinear Change Models
      Moving Forward
      10. Growth Models with Nonlinearity in Time
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      11. Growth Models with Nonlinearity in Parameters
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      12. Growth Models with Nonlinearity in Random Coefficients
      Multilevel Modeling Framework
      Multilevel Modeling Implementation
      Structural Equation Modeling Framework
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      IV. Modeling Change with Latent Entities
      13. Modeling Change with Ordinal Outcomes
      Dichotomous Outcomes
      Polytomous Outcomes
      Illustration
      Multilevel Modeling Implementation
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      14. Modeling Change with Latent Variables Measured by Continuous Indicators
      Common-Factor Model
      Factorial Invariance over Time
      Second-Order Growth Model
      Illustration
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      15. Modeling Change with Latent Variables Measured by Ordinal Indicators
      Item Response Modeling
      Second-Order Growth Model
      Illustration
      Important Considerations
      Moving Forward
      V. Latent Change Scores as a Framework for Studying Change
      16. Introduction to Latent Change Score Modeling
      General Model Specification
      Models of Change
      Illustration
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      17. Multivariate Latent Change Score Models
      Autoregressive Cross-Lag Model
      Multivariate Growth Model
      Multivariate Latent Change Score Model
      Illustration
      Structural Equation Modeling Implementation
      Important Considerations
      Moving Forward
      18. Rate-of-Change Estimates in Nonlinear Growth Models
      Growth Rate Models
      Latent Change Score Models
      Illustration
      Multilevel Modeling Implementation
      Structural Equation Modeling Implementation
      Important Considerations
      Appendix A. A Brief Introduction to Multilevel Modeling
      Illustrative Example
      Multilevel Modeling and Longitudinal Data
      Appendix B. A Brief Introduction to Structural Equation Modeling
      Illustrative Example
      Structural Equation Modeling and Longitudinal Data
      References
      Author Index
      Subject Index
      About the Authors

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