Structural Equation Modeling with Mplus -Basic Concepts, Applications, and Programming
Author: Barbara M. Byrne
Master eBook ISBN10 : 0203807642
Master eBook ISBN13 : 978-0-203-80764-4
No of pages : 430
eBook Price : $48.95
Originally Published : Apr 23, 2012
Modeled after Barbara Byrne's other best-selling structural equation modeling (SEM) books, this practical guide reviews the basic concepts and applications of SEM using Mplus Versions 5 & 6. The author reviews SEM applications based on actual data taken from her own research. Using non-mathematical language, it is written for the novice SEM user. With each application chapter, the author "walks" the reader through all steps involved in testing the SEM model including:
- an explanation of the issues addressed
- illustrated and annotated testing of the hypothesized and post hoc models
- explanation and interpretation of all Mplus input and output files
- important caveats pertinent to the SEM application under study
- a description of the data and reference upon which the model was based
- the corresponding data and syntax files available at http://www.psypress.com/sem-with-mplus/datasets .
The first two chapters introduce the fundamental concepts of SEM and important basics of the Mplus program. The remaining chapters focus on SEM applications and include a variety of SEM models presented within the context of three sections: Single-group analyses, Multiple-group analyses, and other important topics, the latter of which includes the multitrait-multimethod, latent growth curve, and multilevel models.
Intended for researchers, practitioners, and students who use SEM and Mplus, this book is an ideal resource for graduate level courses on SEM taught in psychology, education, business, and other social and health sciences and/or as a supplement for courses on applied statistics, multivariate statistics, intermediate or advanced statistics, and/or research design. Appropriate for those with limited exposure to SEM or Mplus, a prerequisite of basic statistics through regression analysis is recommended.