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LongitudinaL data anaLysis using structuraL Equation ModELs John J. Mcardle John r. nesselroade A M E R I C A N P S Y C H O L O G I C A L A S S O C I AT I O N WA S H I N G T O N, D C Copyright © 2014 by the American Psychological Association Published by To order American Psychological Association APA Order Department 750 First Street, NE P.O. Box 92984 Washington, DC 20002 Washington, DC 20090-2984 www.apa.org Tel: (800) 374-2721; Direct: (202) 336-5510 Fax: (202) 336-5502; TDD/TTY: (202) 336-6123 Online: www.apa.org/pubs/books E-mail: [email protected] In the U.K., Europe, Africa, and the Middle East, copies may be ordered from American Psychological Association 3 Henrietta Street Covent Garden, London WC2E 8LU England Typeset in Goudy by Circle Graphics, Inc., Columbia, MD Printer: United Book Press, Baltimore, MD Cover Designer: Berg Design, Albany, NY Library of Congress Cataloging-in-Publication Data McArdle, John J. Longitudinal data analysis using structural equation models / John J. McArdle and John R. Nesselroade. pages cm Includes bibliographical references and index. ISBN-13: 978-1-4338-1715-1 ISBN-10: 1-4338-1715-2 1. Longitudinal method. 2. Psychology—Research. I. Nesselroade, John R. II. Title. BF76.6.L65M33 2014 150.72'1—dc23 2013046896 British Library Cataloguing-in-Publication Data A CIP record is available from the British Library. Printed in the United States of America First Edition http://dx.doi.org/10.1037/14440-000 13615-00_FM-2ndPgs.indd 4 4/25/14 1:38 PM CONTENTS Preface .......................................................................................................... ix Overview ....................................................................................................... 3 I. Foundations .......................................................................................... 15 Chapter 1. Background and Goals of Longitudinal Research ........... 17 Chapter 2. Basics of Structural Equation Modeling .......................... 27 Chapter 3. Some Technical Details on Structural Equation Modeling .......................................................... 39 Chapter 4. Using the Simplified Reticular Action Model Notation ................................................................... 59 Chapter 5. Benefits and Problems Using Structural Equation Modeling in Longitudinal Research ................................ 67 13615-00_FM-2ndPgs.indd 5 4/25/14 1:38 PM II. Longitudinal SEM for the Direct Identification of Intraindividual Changes................................................................. 73 Chapter 6. Alternative Definitions of Individual Changes ............. 75 Chapter 7. Analyses Based on Latent Curve Models ........................ 93 Chapter 8. Analyses Based on Time-Series Regression Models ......... 109 Chapter 9. Analyses Based on Latent Change Score Models ......... 119 Chapter 10. Analyses Based on Advanced Latent Change Score Models ............................................... 133 III. Longitudinal SEM for Interindividual Differences in Intraindividual Changes ............................................................. 141 Chapter 11. Studying Interindividual Differences in Intraindividual Changes ........................................... 143 Chapter 12. Repeated Measures Analysis of Variance as a Structural Model ..................................................... 151 Chapter 13. Multilevel Structural Equation Modeling Approaches to Group Differences ................................. 159 Chapter 14. Multiple Group Structural Equation Modeling Approaches to Group Differences ................................. 167 Chapter 15. Incomplete Data With Multiple Group Modeling of Changes .................................................... 177 IV. Longitudinal SEM for the Interrelationships in Growth ............. 185 Chapter 16. Considering Common Factors/Latent Variables in Structural Models ...................................... 187 Chapter 17. Considering Factorial Invariance in Longitudinal Structural Equation Modeling ....................................... 207 Chapter 18. Alternative Common Factors With Multiple Longitudinal Observations ............................................ 221 Chapter 19. More Alternative Factorial Solutions for Longitudinal Data .................................................... 231 Chapter 20. Extensions to Longitudinal Categorical Factors ........... 239 13615-00_FM-2ndPgs.indd 6 4/25/14 1:38 PM V. Longitudinal SEM for Causes (Determinants) of Intraindividual Changes............................................................... 253 Chapter 21. Analyses Based on Cross-Lagged Regression and Changes ................................................ 255 Chapter 22. Analyses Based on Cross-Lagged Regression in Changes of Factors .................................................... 271 Chapter 23. Current Models for Multiple Longitudinal Outcome Scores ....................................... 281 Chapter 24. T he Bivariate Latent Change Score Model for Multiple Occasions .................................................. 291 Chapter 25. Plotting Bivariate Latent Change Score Results ............. 301 VI. Longitudinal SEM for Interindividual Differences in Causes (Determinants) of Intraindividual Changes .................................. 305 Chapter 26. Dynamic Processes Over Groups................................... 307 Chapter 27. Dynamic Influences Over Groups ................................. 315 Chapter 28. Applying a Bivariate Change Model With Multiple Groups ................................................... 319 Chapter 29. Notes on the Inclusion of Randomization in Longitudinal Studies ................................................. 323 Chapter 30. The Popular Repeated Measures Analysis of Variance ..... 329 VII. Summary and Discussion .............................................................. 331 Chapter 31. Contemporary Data Analyses Based on Planned Incompleteness .......................................... 333 Chapter 32. Factor Invariance in Longitudinal Research ................. 345 Chapter 33. Variance Components for Longitudinal Factor Models .... 351 Chapter 34. Models for Intensively Repeated Measures ................... 355 Chapter 35. Coda: The Future Is Yours! ........................................... 367 References ................................................................................................. 373 Index ......................................................................................................... 401 About the Authors.................................................................................... 425 13615-00_FM-2ndPgs.indd 7 4/25/14 1:38 PM PREFACE George Orwell wrote a lot of important books. At one point, he also considered the reasons why people write books at all. One conclusion he reached was that this task was typically undertaken to deal with some demon in the author’s life. If this is true, and we have no reason to doubt Orwell so far, then we thought it might be useful to consider the demons that drive us to take on this seemingly thankless task. The best explanation we have come up with involves at least three motives. We have led a workshop on longitudinal data analysis for the past decade, and participants at this workshop have asked many questions. Our first motive in writing this book is to answer these questions in an organized and complete way. Second, the important advances in longitudinal methodology are too often overlooked in favor of simpler but inferior alternatives. That is, cer- tainly researchers have their own ideas about the importance of longitudinal structural equation modeling (LSEM), including concepts of multip le factorial invariance over time (MFIT), but we think these are essential ingredients of useful longitudinal analyses. Also, the use of what we term latent change scores, which we emphasize here, is not the common approach currently being used by many other researchers in the field. Thus, a second motive is to distribute 13615-00_FM-2ndPgs.indd 9 4/25/14 1:38 PM knowledge about MFIT and the latent change score approach. Most of the instruction in this book pertains to using computer programs effectively. A third reason for writing this book is that we are enthusiastic about the possibilities for good uses of the longitudinal methods described here, some described for the first time and most never used in situations where we think they could be most useful. In essence, we write to offer some hope to the next generation of researchers in this area. Our general approach to scientific dis- course is not one of castigation and critique of previous work; rather than attack the useful attempts of others, we have decided to applaud all the prior efforts and simply lay out our basic theory of longitudinal data analysis. We hope our efforts will spawn improved longitudinal research. Our weeklong workshop with the same basic title as this book has been sponsored every year since 2000 by the Science Directorate of the American Psychological Association (APA). This APA workshop is based on an earlier workshop on longitudinal methods started at the Max Planck Institute (MPI) for Human Development in Berlin in 1986 (at the invitation of the late Paul Baltes). This book presents the basic theory of longitudinal data analysis used in the workshop. A forthcoming companion book, titled Applications of Longitudinal Data Analysis Using Structural Equation Models, will present the data examples and computer programs used in the workshop. The current LSEM workshop continues to be sponsored by APA and is now led by Dr. Emilio Ferrer and Dr. Kevin Grimm at the University of California at Davis each summer. And near the end of each new workshop, one of the authors of this book still gives an invited lecture. In this way, the features of our original LSEM workshop live on. We have found that the concepts of “change analysis” are wide rang- ing. We know this book-length treatment will not be definitive, and we just hope it is viewed as another step along the way. These particular steps were developed during a time when both authors were teaching faculty of Human Development at The Pennsylvania State University (PSU) and subsequently colleagues at the Department of Psychology at the University of Virginia (UVa), the dates of this collaboration ranging from about 1985 to 2005. Dur- ing that time, we taught 10 summers of APA-sponsored workshops at UVa (2000–2009), and we learned some valuable lessons about longitudinal research. For example, we learned we needed to separate the basic concepts of “growth and change” in our own approach to data analysis (see McArdle, 2009). We also learned about the importance of adequate measurement models (see McArdle & Nesselroade, 2003). It also became apparent that the more the computer programs changed, the more they stayed the same (to be discussed). Perhaps it is obvious that our collaboration would not have been possible unless we were encouraged to work together, so we thank both PSU and UVa for all the time they allowed us to think about these issues. 13615-00_FM-2ndPgs.indd 10 4/25/14 1:38 PM There are many specific people to thank for our collaboration. At the top of this list we must mention our wives, Carol Prescott and Carolyn Nes- selroade. These two unusual people gave us critical support that helped us produce this book, and they continue to allow us the time to work on these matters. Of course, we have tried to incorporate their ideas into this text as best we can, and about all we can say now is “thanks.” We know this is really not enough. Next in line we thank our wonderful colleagues and graduate students at UVa, including (in alphabetic order) Steven Boker, Sy-Minn Chow, Ryan Estabrook, Emilio Ferrer, Kevin Grimm, Paolo Ghisletta, Fumiaki Hama- gami, Thomas Paskus, Nilam Ram, Lijuan (Peggy) Wang, and Zhiyong (Johnny) Zhang. Many of these students suggested changes in the materials, and we tried to use everything they suggested. In particular, Aki helped us edit the prose you see here and provided most of the figures. Other important students include Ulman Lindenberger (now MPI, Berlin director) and Karl Ulrich Mayr (now full professor, University of Oregon). We make special mention of Drs. Ferrer and Grimm, who have contributed to this material in more ways than one and who, as mentioned earlier, lead the LSEM workshop (now at the University of California at Davis) each summer. There are many others who deserve credit for their comments and questions. All these gradu- ate students are making important contributions on their own right now, and this is especially rewarding for us. As stated earlier, our professional colleagues at UVa were essential to this effort, and the short list of important supporters includes Richard Bell, Mavis Heatherington, Richard McCarty, Dennis Profit, Jerry Clore, and Sandra Scarr. Other colleagues who supported our efforts and made an important difference in our thinking were many well-known scientists—Paul Baltes (PSU, MPI), Ray Cattell (UI, UH), John Horn (DU, USC), Ron John- son (UH), Bill Meredith (UCB), Rod McDonald (OISE, UI), and Bill Rozeboom (UCA). There is simply no way to adequately thank this unique group of scientists for taking the time to confide in us things they had just discovered and what they actually thought about these things. These people are no longer alive, but we hope their research and their thoughts live on here. We also thank many members of the Society of Multivariate Experi- mental Psychology for their continuing support of the development of these ideas. Finally, we thank all the many participants of our APA-sponsored workshops and the APA Science Directorate and APA Books staff for the time and effort they put in toward challenging us to produce a coherent piece about clearing up some basic concepts about longitudinal research. In sum, this book is intended as a tribute to the many contributions and the ideas of many, many others. 13615-00_FM-2ndPgs.indd 11 4/25/14 1:38 PM OVERVIEW Longitudinal data are difficult to collect, but longitudinal research is popular. And this popularity seems to be growing. The reasons why research- ers now appear to be enamored with this approach will be questioned, but there is no doubt the collection of longitudinal data is on the rise. With this comes the subsequent need for good data analysis methods to analyze these special kinds of data. Structural equation modeling (SEM) is a valu- able way to analyze longitudinal data because it is both flexible and useful for answering common research questions. However, the most appropriate SEM strategy to use will depend on the specific question you are trying to answer. Baltes and Nesselroade’s (1979) seminal chapter identifies five basic questions or purposes of longitudinal SEM (LSEM): 77 direct identification of intraindividual changes, 77 direct identification of interindividual differences in intra- individual changes, 13615-01_Overview-3rdPgs.indd 3 4/25/14 1:41 PM 77 examining interrelationships in intraindividual changes, 77 analyses of causes (determinants) of intraindividual changes, and 77 analyses of causes (determinants) of interindividual differences in intraindividual changes. We note that “changes” were referred to as “differences” in Baltes and Nesselroade’s (1979) original text. In this book, we present the most useful strategies and techniques for each of these five purposes. We do not offer all kinds of models, just the selected set of SEM models we have actually put to use. Two important but underused approaches are emphasized: multiple factorial invariance over time (MFIT) and latent change scores. We focus on the big picture approach rather than the algebraic details. We realize that excessive amounts of linear SEM algebra can get in the way of big picture thinking, so we have tried to minimize the required algebra and calculus herein. Thus, we have limited the algebra and calculus to separate exhibits. We think the defining equations can be studied in some depth as our main message is presented. To facilitate student learning, a forthcom- ing companion book will give several fully worked out examples, including computer scripts. The remainder of this overview introduces basic topics that are central to this book. We begin by briefly explaining our approach as developmental methodologists and how this informs the design and timing of our measures. Next, we discuss the purpose of SEM in general and LSEM in particular. Finally, we explain how the rest of this book is organized in relation to Baltes and Nesselroade’s (1979) five purposes of LSEM. OUR APPROACH AS DEVELOPMENTAL METHODOLOGISTS Who are developmental methodologists anyway? And why should any- one listen to them? These are two questions that have been of interest to us for a long time, probably because we fit into this small category of scientists! Methodologists study the many ways researchers evaluate evidence. It is clear that some formal methods are better than others, and the key role of the methodologist is to point this out to others. There is no real need for a methodologist to actually find any facts (i.e., collect empirical data), and this seems to put these people in a special category. One would think this makes the task much easier. But it is also clear that other people seem to find it very hard to listen to a person who does not know all the troubles and nuances of doing “real” research. So, in this book, we will not use computer simulation to prove our points here; we have done so elsewhere, but only to check on 13615-01_Overview-3rdPgs.indd 4 4/25/14 1:41 PM

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