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Handbook of Developmental Research Methods PDF

801 Pages·2011·12.917 MB·English
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H a n d b o o k o f d e v e lo p m e n ta l R es e a R c H m e tH o d s H andbook of d evelopmental R m eseaRcH etHods Edited by BrEtt LaursEn todd d. LittLE noEL a . Card tHe GUIlfoRd pRess new York London © 2012 The Guilford Press A Division of Guilford Publications, Inc. 72 Spring Street, New York, NY 10012 www.guilford.com All rights reserved No part of this book may be reproduced, translated, stored in a retrieval system, or transmitted, in any form or by any means, electronic, mechanical, photocopying, microfilming, recording, or otherwise, without written permission from the Publisher. Printed in the United States of America This book is printed on acid-free paper. Last digit is print number: 9 8 7 6 5 4 3 2 1 Library of Congress Cataloging-in-Publication Data Handbook of developmental research methods / edited by Brett Laursen, Todd D. Little, Noel A. Card. p. cm. Includes bibliographical references and index. ISBN 978-1-60623-609-3 (hardcover) 1. Developmental psychology—Research—Methodology. 2. Developmental psychology—Longitudinal studies. I. Laursen, Brett Paul. II. Little, Todd D. III. Card, Noel A. BF713.H3643 2012 155.072′1—dc23 2011019742 preface M any handbooks claim to be essential. This one truly is. If you study development, it is unlikely that you have been able to keep up with the rapid changes in analytic methodolo- gies. Even if your job title includes “advanced methodologist,” it is unlikely that you have been able to stay abreast of the latest offerings from your colleagues. There are plenty of handbooks on research methods, but none are aimed specifically at developmental scholars. This is a difference with a distinction. To study development is to study change. Each of the chapters in this volume is focused on applying a method- ological tool to the measurement of change. Some tools were specifically designed to mea- sure change. Other tools have been adapted to incorporate the demands of developmental research. Developmental scholars no longer have to make do with figuring out how static approaches can be applied to dynamic data, because the world’s leading developmental methodologists have applied themselves to this task. The results are pleasantly overwhelming. Not long ago, developmental scientists needed only to be conversant in repeated-measures analyses of variance and stepwise regression. There are now dozens of alternatives to these techniques, most of which are more flexible and more powerful. Unlike their predecessors, these new techniques continue to evolve and improve. Powerful new software drives many of these advances. But keeping up with the pace of change in developmental research methods requires more than software upgrades. One must understand the fundamentals at the heart of each method in order to understand how change is measured and represented. Lars Bergman, the wise Swedish methodologist, often reminds us to examine the assumptions of an analytic procedure. One need not be able to conduct complicated analyses in order to understand them. Unfortunately, many statistical packages make the analyses easy and the assumptions opaque to the point that it can sometimes be difficult to exam- ine the assumptions. Each contributor to this handbook was tasked with the challenge of explaining the assumptions of a developmental method in accessible nontechnical language. The reader should come away from each chapter understanding the basic purpose of a procedure and the principles that animate that procedure. If we have been successful, the relevance of each method to your own research should be apparent. v vi Preface The volume is more than a primer, however. Methodologists will be pleased to hear that expositions of assumptions are followed by a careful explication of recent technical advances. This is not an abstract exercise. In most cases, the summary of cutting-edge practices is accompanied by a specific research example that concretizes the procedure. These illustrations should prove useful to readers hoping to apply the technique to their own data. Many authors have helpfully provided scripts and data samples to facilitate the application process. These supplemental materials are available online at www.crmda. ku.edu/Guilford/HDRM. The volume is divided into seven sections. The opening section on measurement and design is followed by a section on approaches to data collection. These chapters are devoted to issues that concern the design and implementation of developmental research. The next three sections concern interindividual longitudinal analysis, intraindividual longitudinal analysis, and analyses that combine the two. These chapters describe cutting-edge analytic practices designed specifically for developmental data. The section that follows addresses the burgeoning topic of nonindependent data with a unique collection of chapters devoted to developmental applications. The volume closes with a section on special topics in data analysis, a heading that encompasses important research methods that tend to be underuti- lized by developmental scholars. All but the last section open with a unique chapter on foun- dational issues written by eminent developmental methodologists. We gave these scholars free rein in defining the material covered, instructing them only to provide an expansive overview of the field. Except for those addressing foundational issues, the chapters in the handbook follow a similar outline: (1) central issues; (2) conceptual principles and statistical assumptions; (3) developmental applications; (4) illustration; and (5) future directions. In keeping with the admonition of our esteemed colleague, let us be specific about our assumptions. We consider change to be central to the study of development. Contemporary students might be amazed to learn that within their lifetimes, cross-sectional data were used to gauge developmental trends and the presence of statistically significant differences in one age group and that the absence of such differences in another was thought to consti- tute a developmental finding of note. This sort of methodology is no longer tenable; develop- ment cannot be measured in the absence of data from multiple time points. The chapters in this volume take as their starting point the assumption that development is synonymous with change and that longitudinal data are a prerequisite for the study of change. Change can be measured at the level of the variable or at the level of the individual. Longitudinal change can be examined between and within individuals using interindividual and intraindividual procedures, respectively. The assumptions of each are quite different. Studies that demonstrate change at the level of the variable assume that the developmental trends illustrated apply equally well to all members of the sample or population. Studies that demonstrate change at the level of the individual assume that the unique developmental patterns shared across subgroups of individuals do not apply to the population as a whole. Some have described these approaches as antithetical, but we prefer to think of them as complementary. Both approaches are well represented in this book. We assume the high standard of best methodological practices. Scholars have long known of biases arising from samples of convenience, statistical nonindependence, demand characteristics, recall load, attrition, and measurement and scaling variance. There was once a good excuse for sweeping these problems aside, namely, the absence of a remedy. This is no longer the case, and those who ignore these biases do so at their own peril. This hand- book contains several chapters that identify and explain sources of bias in developmental Preface vii research. Importantly, each chapter also describes methods for assessing and addressing the challenges that arise in developmental research. Forewarned is forearmed: Many meth- odological problems can be avoided or mitigated with appropriate design strategies. Look for tips on strengthening developmental research with designs that anticipate potential sources of bias. Finally, we assume that research methods are tools designed to aid the scholar in iden- tifying developmental change. Important implications follow from this assumption. Different tools can be selected for the same job. Holes can be made with hammers, and holes can be made with drills. The choice of the appropriate tool depends on the aims of the investigator. Some tools are clearly inappropriate for the task at hand. One cannot install a window with tools designed to dig ditches. Thus research questions must be matched to developmental methods. We strongly believe that an investigator cannot make an informed choice without a working knowledge of how each research method works. Research questions often carry hidden assumptions. Developmental questions are informed by the models and ontogenetic theories of the investigator. Hypotheses usually call for certain types of methodologies. Because the assumptions of methodological tools differ, similar data or even the same data may yield different depictions of change. Put another way, research questions drive the selection of developmental methods, which can foreshadow whether and how developmen- tal changes are described. The chapters in this handbook will help to clarify the unappreci- ated link between research questions, methods, and developmental change by illuminating the assumptions inherent in each. A volume of this magnitude requires enormous effort from many parties. Todd Little and Noel Card are as knowledgeable as they are congenial; I could not ask for better col- laborators. Shalynn Howard cheerfully compiled and organized the chapters. Jeff Friedrich assisted with proofreading. The Center for Research Methods and Data Analysis at the Uni- versity of Kansas (Todd D. Little, Director) graciously agreed to host and maintain the web- site dedicated to the ancillary materials from this volume at wwwcrmda.ku.edu/Guilford/ HDRM. C. Deborah Laughton and Seymour Weingarten of The Guilford Press convinced us of the merits of this project and worked to meet what must have seemed like unreason- able demands. Thanks to our families (Erika, Kirsten, and Erik; Patty; Jeanet, Gabby, and Angie), whose love and forbearance were tested but never found lacking. We are gratified by the cooperation we received from our methodological colleagues; most of those who were invited to participate agreed to do so. Our contributors were, for the most part, a timely and responsive bunch. Their collective wisdom is humbling. Brett Laursen Fort Lauderdale, Florida January 2011 contents paRt I. Measurement and Design Chapter 1. FoundationaL issuEs of design and Measurement 3 in developmental research Scott M. Hofer, Valgeir Thorvaldsson, and Andrea M. Piccinin Chapter 2. Causal inference, identification, and Plausibility 17 E. Michael Foster Chapter 3. accelerated Longitudinal designs 31 Susan C. Duncan and Terry E. Duncan Chapter 4. time-scale- dependent Longitudinal designs 46 Theodore A. Walls, William D. Barta, Robert S. Stawski, Charles E. Collyer, and Scott M. Hofer Chapter 5. Event Frequency Measurement 65 Brett Laursen, Jaap Denissen, and David F. Bjorklund Chapter 6. the impact of scaling and Measurement Methods 82 on individual differences in Growth Susan E. Embretson and John Poggio Chapter 7. investigating Factorial invariance in Longitudinal data 109 Roger E. Millsap and Heining Cham paRt II. approaches to Data Collection Chapter 8. FoundationaL issuEs in Longitudinal data Collection 129 Lea Pulkkinen and Katja Kokko Chapter 9. the use of Large-scale data sets for the study 148 of developmental science Pamela Davis-Kean and Justin Jager Chapter 10. telemetrics and online data Collection: Collecting data 163 at a distance Joshua Wilt, David M. Condon, and William Revelle ix

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