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Multilevel and Longitudinal Modeling With Ibm Spss

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Multilevel and Longitudinal Modeling with IBM SPSS, Third Edition, demonstrates how to use the multilevel and longitudinal modeling techniques available in IBM SPSS Versions 25-27. Annotated screenshots with all relevant output provide readers with a step-by-step understanding of each technique as they are shown how to navigate the program. Throughout, diagnostic tools, data management issues, and related graphics are introduced. SPSS commands show the flow of the menu structure and how to facilitate model building, while annotated syntax is also available for those who prefer this approach. Extended examples illustrating the logic of model development and evaluation are included throughout the book, demonstrating the context and rationale of the research questions and the steps around which the analyses are structured.

The book opens with the conceptual and methodological issues associated with multilevel and longitudinal modeling, followed by a discussion of SPSS data management techniques that facilitate working with multilevel, longitudinal, or cross-classified data sets. The next few chapters introduce the basics of multilevel modeling, developing a multilevel model, extensions of the basic two-level model (e.g., three-level models, models for binary and ordinal outcomes), and troubleshooting techniques for everyday-use programming and modeling problems along with potential solutions. Models for investigating individual and organizational change are next developed, followed by models with multivariate outcomes and, finally, models with cross-classified and multiple membership data structures. The book concludes with thoughts about ways to expand on the various multilevel and longitudinal modeling techniques introduced and issues (e.g., missing data, sample weights) to keep in mind in conducting multilevel analyses.

Key features of the third edition:


  • Thoroughly updated throughout to reflect IBM SPSS Versions 26-27.


  • Introduction to fixed-effects regression for examining change over time where random-effects modeling may not be an optimal choice.


  • Additional treatment of key topics specifically aligned with multilevel modeling (e.g., models with binary and ordinal outcomes).


  • Expanded coverage of models with cross-classified and multiple membership data structures.


  • Added discussion on model checking for improvement (e.g., examining residuals, locating outliers).


  • Further discussion of alternatives for dealing with missing data and the use of sample weights within multilevel data structures.


Supported by online data sets, the book's practical approach makes it an essential text for graduate-level courses on multilevel, longitudinal, latent variable modeling, multivariate statistics, or advanced quantitative techniques taught in departments of business, education, health, psychology, and sociology. The book will also prove appealing to researchers in these fields. The book is designed to provide an excellent supplement to Heck and Thomas's An Introduction to Multilevel Modeling Techniques, Fourth Edition; however, it can also be used with any multilevel or longitudinal modeling book or as a stand-alone text.

About the author










Ronald H. Heck is professor in the College of Education at the University of Hawai¿i at M¿noa. His research interests include school effects on student learning, educational policy, and research methods.
Scott L. Thomas is John P. "Jack" Ellbogen Dean in the College of Education at the University of Wyoming. His research interests include higher education policy and finance, sociology of education, and research methods.
Lynn N. Tabata was a graduate faculty member and research consultant at the University of Hawai'i at M¿noa. Her research interests included broadening educational access to higher education, faculty participation in distance education, and the application of technological innovations in higher education.


Summary

This text demonstrates how to use the multilevel- and longitudinal-modeling techniques available in IBM SPSS (Version 26).

Product details

Authors Ronald H. (University of Hawaii Heck, Ronald H. Heck, Scott L. Thomas, Lynn N. Tabata, Heck Ronald H., Thomas Scott L., Tabata Lynn N.
Publisher Taylor & Francis Ltd.
 
Content Book
Product form Paperback / Softback
Publication date 12.04.2022
Subject Non-fiction book > Psychology, esoterics, spirituality, anthroposophy > Psychology: general, reference works
 
EAN 9780367424619
ISBN 978-0-367-42461-9
Pages 484
 
Series Quantitative Methodology Series
Subjects EDUCATION / General, Education, SOCIAL SCIENCE / Research, mi, COMPUTERS / Mathematical & Statistical Software, PSYCHOLOGY / Research & Methodology, SOCIAL SCIENCE / Statistics, Linear, Data, Mixed, Social research & statistics, Psychological methodology, Mathematical & statistical software, Social research and statistics, Random, Mathematical and statistical software, missing data, Data Set, Linear Mixed Models, random slope, Slopes, intercepts, Dialog Box, IBM SPSS, repeated measures statistics, hierarchical data analysis, Random Intercept, Imputed Data Sets, Math achievement, Cross-level Interaction, longitudinal data techniques, fixed effects modelling, multivariate quantitative methods, advanced hierarchical regression modelling, binary outcome models, cross-classified models, Cumulative GPA, Cross-classified Data Structures, Continue Button, Linear Mixed Models Dialog Box, SPSS Mix, Single Level Analyses, Covariates Box, Compute Variable Dialog Box, Freshman Student Athletes, Repeated Dialog Box, Build Term Box, Piecewise Growth Model, Arrow Button
 

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