Amazon cover image
Image from Amazon.com

Handbook of structural equation modeling

Contributor(s): Hoyle, Rick HMaterial type: TextTextPublication details: New York Guilford Press 2015 Description: xi, 740 pISBN: 9781462516797Subject(s): Structural equation modelingDDC classification: 519.5 Summary: The first comprehensive structural equation modeling (SEM) handbook, this accessible volume offers broad and deep coverage of both the mechanics of SEM and specific SEM strategies and applications. The editor, contributors, and editorial advisory board are leading methodologists who have organized the book to move from simpler material to more statistically complex modeling approaches. Sections cover the foundations of SEM; statistical underpinnings, from assumptions to model modifications; steps in implementation, from data preparation through writing the SEM report; and basic and advanced applications, including new and emerging topics in SEM, such as intensive longitudinal assessments, dyadic data, brain imaging, and genotyping. Each chapter provides conceptually oriented descriptions, fully explicated analyses, and engaging examples that reveal modeling possibilities for use with readers' data. Many of the chapters also include access to data and syntax files at the companion website, allowing readers to try their hands at reproducing the authors' results.
List(s) this item appears in: Operation & quantitative Techniques | HR & OB
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Copy number Status Date due Barcode
Book Book Indian Institute of Management LRC
General Stacks
Operations Management & Quantitative Techniques 519.5 HOY (Browse shelf(Opens below)) 1 Available 002420

Table of content

I. Background
1. Introduction and Overview, Rick H. Hoyle

2. Key Advances in the History of Structural Equation Modeling, Ross L. Matsueda

3. Graphical Representation of Structural Equation Models Using Path Diagrams, Moon-ho Ringo Ho, Stephen Stark, and Olexander Chernyshenko

4. Latent Variables in Structural Equation Modeling, Kenneth A. Bollen and Rick H. Hoyle

5. The Causal Foundations of Structural Equation Modeling, Judea Pearl

6. Simulation Methods in Structural Equation Modeling, Deborah L. Bandalos and Phillip Gagné

II. Fundamentals

7. Assumptions in Structural Equation Modeling, Rex B. Kline

8. Model Specification in Structural Equation Modeling, Rick H. Hoyle

9. Identification: A Nontechnical Discussion of a Technical Issue, David A. Kenny and Stephanie Milan

10. Estimation in Structural Equation Modeling, Pui-Wa Lei and Qiong Wu

11. Power Analysis for Tests of Structural Equation Models, Taehun Lee, Li Cai, and Robert C. MacCallum

12. Categorical Data in the Structural Equation Modeling Framework, Michael C. Edwards, R. J. Wirth, Carrie R. Houts, and Nuo Xi

13. Model Fit and Model Selection in Structural Equation Modeling, Stephen G. West, Aaron B. Taylor, and Wei Wu

14. Model Modification in Structural Equation Modeling, Chih-Ping Chou and Jimi Huh

15. Equivalent Models: Concepts, Problems, Alternatives, Larry J. Williams

III. Implementation

16. Preparing Data for Structural Equation Modeling: Doing Your Homework, Patrick S. Malone and Jill B. Lubansky

17. Structural Equation Modeling with Missing Data, John W. Graham and Donna L. Coffman

18. Bootstrapping Standard Errors and Data–Model Fit Statistics in Structural Equation Modeling, Gregory R. Hancock and Min Liu

19. Choosing Structural Equation Modeling Computer Software: Snapshots of LISREL, EQS, Amos, and Mplus, Barbara M. Byrne

20. Structural Equation Modeling in R with the sem and OpenMx Packages, John Fox, Jarrett E. Byrnes, Steven Boker, and Michael C. Neale

21. The Structural Equation Modeling Research Report, Anne Boomsma, Rick H. Hoyle, and A. T. Panter

IV. Basic Applications

22. Confirmatory Factor Analysis, Timothy A. Brown and Michael T. Moore

23. Investigating Measurement Invariance Using Confirmatory Factor Analysis, Roger E. Millsap and Margarita Olivera-Aguilar

24. A Flexible Structural Equation Modeling Approach for Analyzing Means, Samuel B. Green and Marilyn S. Thompson

25. Mediation/Indirect Effects in Structural Equation Modeling, JeeWon Cheong and David P. MacKinnon

26. Structural Equation Models of Latent Interaction, Herbert W. Marsh, Zhonglin Wen, Benjamin Nagengast, and Kit-Tai Hau

27. Autoregressive Longitudinal Models, Jeremy C. Biesanz

28. Scale Construction and Development Using Structural Equation Modeling, Tenko Raykov

V. Advanced Applications

29. Measurement Models for Ordered-Categorical Indicators, James A. Bovaird and Natalie A. Koziol

30. Multilevel Structural Equation Modeling, Sophia Rabe-Hesketh, Anders Skrondal, and Xiaohui Zheng

31. An Overview of Growth Mixture Modeling: A Simple Nonlinear Application in OpenMx, Mariya P. Shiyko, Nilam Ram, and Kevin J. Grimm

32. Latent Curve Modeling of Longitudinal Growth Data, John J. McArdle

33. Dynamic Factor Models for Longitudinally Intensive Data: Description and Estimation via Parallel Factor Models of Cholesky Decomposition, Phillip Wood

34. Latent Trait–State Models, David A. Cole

35. Longitudinal Structural Models for Assessing Dynamics in Dyadic Interactions, Emilio Ferrer and Hairong Song

36. Structural Equation Modeling in Genetics, Sanja Franic, Conor V. Dolan, Denny Borsboom, and Dorret I. Boomsma

37. Structural Equation Models of Imaging Data, Anthony R. McIntosh and Andrea B. Protzner

38. Bayesian Structural Equation Modeling, David Kaplan and Sarah Depaoli

39. Spatial Structural Equation Modeling, Melanie M. Wall

40. Automated Structural Equation Modeling Strategies, George A. Marcoulides and Marsha Ing

The first comprehensive structural equation modeling (SEM) handbook, this accessible volume offers broad and deep coverage of both the mechanics of SEM and specific SEM strategies and applications. The editor, contributors, and editorial advisory board are leading methodologists who have organized the book to move from simpler material to more statistically complex modeling approaches. Sections cover the foundations of SEM; statistical underpinnings, from assumptions to model modifications; steps in implementation, from data preparation through writing the SEM report; and basic and advanced applications, including new and emerging topics in SEM, such as intensive longitudinal assessments, dyadic data, brain imaging, and genotyping. Each chapter provides conceptually oriented descriptions, fully explicated analyses, and engaging examples that reveal modeling possibilities for use with readers' data. Many of the chapters also include access to data and syntax files at the companion website, allowing readers to try their hands at reproducing the authors' results.

There are no comments on this title.

to post a comment.

©2019-2020 Learning Resource Centre, Indian Institute of Management Bodhgaya

Powered by Koha