This course is designed as an applied introduction to the use of the AMOS software for estimating basic structural equation models.
Mr Philip Holmes-Smith (OAM) is the Director of School Research, Evaluation and Measurements Services (SREAMS), an independent educational research consultancy business. His research, evaluation and measurement interests lie in the areas of teacher effectiveness and school improvement, accountability models and benchmarking, improving the quality of teaching, using student performance data to inform teaching, and large-scale achievement testing programs. He is an experienced teacher of social science research methods and is a regular instructor at the ACSPRI programs. He also regularly teaches Structural Equation Modeling (SEM) and Multi-Level Analysis (MLA) at various universities around Australia.
Structural Equation Modeling (SEM) is used widely by researchers in a diverse array of fields to find and test complex relationships amongst observed (measured) variables and latent (unobserved) variables and amongst the latent variables themselves. SEM subsumes other analytical techniques (such as factor analysis, regression analysis and path analysis) into one omnibus approach to modeling relationships amongst observed and latent variables. This course is designed to introduce participants to a range of basic structural equation models and the use of the AMOS software to estimate the model parameters.
Detailed notes with worked examples and references will be provided as a basis for both the lecture and hands-on computing aspect of the course.
The target audience for this course is post graduate students, academic staff and other researchers needing to learn how to run basic structural equation models using the AMOS software.
Day 1
Introduction, revision and the fundamentals of SEM. Topics include a revision of factor analysis and regression analysis and their relevance to SEM. Participants will be introduced to the AMOS program including how to draw AMOS diagrams, how to run models and how to review output. We will also cover the fundamentals of SEM. Topics include: the advantages of SEM over conventional analytical techniques, the fundamentals underlying SEM and an overview of the eight basic steps to SEM.
Day 2
The eight steps of SEM. Today, the eight steps of SEM are covered in detail, namely: Step 1 - model conceptualisation, Step 2 & 3- path diagram construction and model specification using the AMOS graphical interface, Step 4 - model identification, Step 5 - parameter estimation, Step 6 - assessing model fit, Step 7 - model re-specification, and Step 8 - model cross-validation. Participants will continue to learn the AMOS graphical interface and how to review AMOS output.
Day 3
Basic SEM models. This part of the course looks at the three basic types of structural equation models, namely: (i) causal models for directly observed variables (regression and path analysis); (ii) one-factor congeneric measurement models, confirmatory factor analysis (CFA) and second order CFA; and (iii) full structural equation models with latent variables (including models with mediating variables).
Day 4
Part A - Problems in SEM. This part of the course deals with problem data and difficult models including topics such as the treatment of missing data, treatment of non-continuous variables, treatment of outliers; treatment of non-normal data and small samples, constraining parameters, non-positive definite matrices, negative error variances, unidentified and inadmissible models and recognising equivalent models.
Part B - Introduction to advanced SEM models. This part of the course gives a very basic overview of the topics covered in an advanced SEM course including the testing of model and parameter invariance across groups (multi-group analysis); analysis of interactions; non-linear modeling; mean structure analysis; latent growth-curve modeling; and multi-level SEM.
Day 5
Personal Research. Finally, the course provides an opportunity for participants to work on their own research problems with the instructor’s assistance. Therefore, participants are encouraged to bring a data set and/or research problem with them.
This course may run in a computer lab, or you may be advised to bring your own laptop with specified software.
We will let you know in advance.
You are encouraged to bring a data set and/or research problem with you.
You must have completed an introductory course in statistics (or have equivalent experience). Familiarity with multiple regression and factor analysis is highly desirable, as is experience with a statistical data analysis package such as SPSS, SAS or Stata. However, it is assumed that participants have had little or no experience with AMOS. While not a pre-requisite, participants with no previous exposure to structural equation modeling are strongly encouraged to first complete the course Fundamentals of Structural Equation Modeling.
The instructor's bound, book length course notes will serve as the course text.
Other references include:
- Arbuckle, J. L. (2016). AMOS 24 User’s Guide. Crawfordville, FL: Amos Development Corporation.
- Byrne, Barbara M. (2016). Structural Equation Modeling with AMOS: Basic Concepts, Applications, and Programming. (3rd Ed.) New York: Routledge Academic.
- Kline, Rex B. (2016). Principles and Practice of Structural Equation Modeling (4th Ed.). New York: Guilford Press.
Q: Do I have to have any prerequisites to do this course?
A: Yes, see recommended background section for details.
Perfectly paced, no question felt too stupid, brillant, knowledgeable & patient instructor (Phil) (Summer 2018)
We focused AMOS use on topics directly relevant to model use and fit etc. So, when I get back to read the notes, they will have ”practical memory” and not just notes.(Winter 2017)
I now feel confident in returning to work and running basic SEMs, where before the course I was apprehensive about even looking at a SEM diagram. (Spring 2016)
I learned about AMOS. SEM makes much sense to me now. Now I know why and how of everything. (Spring 2016)
Hands on approach, wel paced, relevant topics emphasised. (Winter 2016)
I acquired the applied skills I needed to do my data analysis for my PHD research. (Winter 2015)
It helped show how another teach instructs; it also consolidated my knowledge in the area which will support my own teaching. (Summer 2015)
The instructor's bound, book length course notes will serve as the course texts.