Growth Modeling Using Random Coefficient Models: Model Building, Testing, and Illustrations

In this article, the authors illustrate how random coefficient modeling can be used to develop growth models for the analysis of longitudinal data. In contrast to previous discussions of random coefficient models, this article provides step-by-step guidance using a model comparison framework. By approaching the modeling this way, the authors are able to build off a regression foundation and progressively estimate and evaluate more complex models. In the model comparison framework, the article illustrates the value of using likelihood tests to contrast alternative models (rather than the typical reliance on tests of significance involving individual parameters), and it provides code in the open-source language R to allow readers to replicate the results. The article concludes with practical guidelines for estimating growth models.

[1]  Robert E. Ployhart,et al.  Longitudinal data analysis , 2002 .

[2]  Craig J. Russell,et al.  Using Hierarchical Linear Modeling to Examine Dynamic Performance Criteria Over Time , 1997 .

[3]  C. Ramey,et al.  Modeling Intraindividual Changes in Children's Social Skills at Home and at School: A Multivariate Latent Growth Approach to Understanding Between-Settings Differences in Children's Social Skill Development , 2000, Multivariate behavioral research.

[4]  V. Carey,et al.  Mixed-Effects Models in S and S-Plus , 2001 .

[5]  Patricia A. Parmelee,et al.  Physical illness and depression in older adults : a handbook of theory, research, and practice , 2000 .

[6]  Freda Kemp Applied Multiple Regression/Correlation Analysis for the Behavioral Sciences , 2003 .

[7]  John L.P. Thompson,et al.  Missing data , 2004, Amyotrophic lateral sclerosis and other motor neuron disorders : official publication of the World Federation of Neurology, Research Group on Motor Neuron Diseases.

[8]  S. Raudenbush,et al.  Application of Hierarchical Linear Models to Assessing Change , 1987 .

[9]  Adam W. Meade,et al.  We Should Measure Change-and Here’s How , 2002 .

[10]  Richard Gonzalez,et al.  Testing parameters in structural equation modeling: every "one" matters. , 2001, Psychological methods.

[11]  D. Hand,et al.  Practical Longitudinal Data Analysis , 1996 .

[12]  John B. Willett,et al.  Using covariance structure analysis to detect correlates and predictors of individual change over time , 1994 .

[13]  R. Gonzalez,et al.  Testing parameters in structural equation modeling: every "one" matters. , 2001, Psychological methods.

[14]  C O Dotson,et al.  Analysis of Change , 1973, Exercise and sport sciences reviews.

[15]  Robert E. Ployhart,et al.  The Estimation of Reliability in Longitudinal Models , 1998 .

[16]  David A. Hofmann An Overview of the Logic and Rationale of Hierarchical Linear Models , 1997 .

[17]  Robert E. Ployhart,et al.  THE SUBSTANTIVE NATURE OF PERFORMANCE VARIABILITY: PREDICTING INTERINDIVIDUAL DIFFERENCES IN INTRAINDIVIDUAL PERFORMANCE , 1998 .

[18]  N. Schmitt,et al.  Interindividual differences in intraindividual changes in proactivity during organizational entry: a latent growth modeling approach to understanding newcomer adaptation. , 2000, The Journal of applied psychology.

[19]  D. A. Kenny,et al.  Consequences of violating the independence assumption in analysis of variance. , 1986 .

[20]  P C Molenaar,et al.  The temporal factor of change in stressor-strain relationships: a growth curve model on a longitudinal study in east Germany. , 2000, The Journal of applied psychology.

[21]  David A. Hofmann,et al.  Dynamic criteria and the measurement of change. , 1993 .

[22]  Clifford C. Clogg,et al.  Handbook of Statistical Modeling for the Social and Behavioral Sciences. , 1995 .

[23]  D. Hofmann,et al.  The application of hierarchical linear modeling to organizational research. , 2000 .

[24]  Jan de Leeuw,et al.  Introducing Multilevel Modeling , 1998 .

[25]  R. Vandenberg,et al.  A Review and Synthesis of the Measurement Invariance Literature: Suggestions, Practices, and Recommendations for Organizational Research , 2000 .

[26]  R. Abelson Statistics As Principled Argument , 1995 .

[27]  David Chan,et al.  The Conceptualization and Analysis of Change Over Time: An Integrative Approach Incorporating Longitudinal Mean and Covariance Structures Analysis (LMACS) and Multiple Indicator Latent Growth Modeling (MLGM) , 1998 .

[28]  P. Bliese Within-group agreement, non-independence, and reliability: Implications for data aggregation and analysis. , 2000 .

[29]  Jürgen Baumert,et al.  Modeling longitudinal and multilevel data: Practical issues, applied approaches, and specific examples. , 2000 .

[30]  Judith D. Singer,et al.  Using SAS PROC MIXED to Fit Multilevel Models, Hierarchical Models, and Individual Growth Models , 1998 .

[31]  Paul D. Bliese,et al.  Multilevel random coefficient modeling in organizational research: Examples using SAS and S-PLUS. , 2002 .

[32]  Peter M. Bentler,et al.  Comparisons of Two Statistical Approaches to Study Growth Curves: The Multilevel Model and the Latent Curve Analysis. , 1998 .

[33]  Lance,et al.  Latent Growth Models of Individual Change: The Case of Newcomer Adjustment. , 2000, Organizational behavior and human decision processes.