Introduction to Structural Equation Modeling (paid version for the professional)
Beschrijving
Course goals
In this course, you will learn how to translate a social scientific theory involving structural relations among unobservable hypothetical constructs into an appropriate statistical model, how to estimate such a model from real data, how to interpret the results of such analyses, and how to use these findings to evaluate your original theory. After completing the course, you will be able to do the following:
- Translate a verbal theory into a statistical model
- Define a path model to represent the hypothesized causal relations among several observed variables
- Define a factor analytic model to represent unobserved hypothetical constructs by estimating latent factors from observed indicator variables
- Define a structural equation model to represent the hypothesized causal relations among several latent factors
- Explain the benefits of using SEM to combine latent variables and path models
- Use the R statistical programming language to estimate path models, factor analytic models, and structural equation models from real data
- Interpret the results from the models you've estimated, and use your findings to answer meaningful research questions
Relation between Assessment and Objective: Your grade for the course will be based on a “research portfolio” wherein you will document statistical analyses that you conduct using the methods covered in the course. Your research portfolio will demonstrate the extent to which you have mastered the learning goals outlined above. In addition to the summative assessment provided by the research portfolio, weekly practical exercises will provide continuous formative assessment of the learning goals.
Content
This course will systematically build up the fundamental principles of SEM and the basic techniques of SEM-based analyses. We will start by considering what we really mean by a "statistical model", and we'll explore the process of translating a social scientific theory into a formal statistical model. We will then combine these new statistical modeling concepts with your prior knowledge of linear regression to motivate our discussion of path analysis. From there, we'll consider how factor analysis allows us to rigorously define, estimate, and evaluate theoretical measurement models of the hypothetical constructs we wish to analyze. Finally, we will conclude by combining all of these components into a fully realized SEM.
Throughout the course, you will apply your new knowledge to real data analyses via weekly practical exercises and two summative assignments. All analyses will be conducted in the R statistical programming language. R is a freely available, open-source statistical software package that is available to anyone. No prior knowledge of R or programming is required.
Assumed Prior Knowledge: Basic theoretical understanding of statistical testing (e.g., t-test, ANOVA), linear regression, and correlation. Participants should have some experience working with a statistical software program (e.g., R, JASP, SAS, STATA, SPSS) to conduct statistical tests and linear regression analyses.
Note: Students who cannot comply with the entrance requirements mentioned below will be asked to provide further information on their eligibility. The course coordinator will decide if the student's prior experience is sufficient to follow the course.
Reviews0 reviews
Heb jij dit vak gevolgd?
Deel je ervaring met toekomstige studenten. Inloggen met je Universiteit Utrecht mailadres duurt één minuut.
Schrijf een review