SEM: Basics Byrne Chapter 1 Tabachnick SEM - 689.

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Presentation transcript:

SEM: Basics Byrne Chapter 1 Tabachnick SEM - 689

Overview SEM = structural equation modeling – A confirmatory procedure (most days) – Structural: Regression on steroids – Model: you can create a picture of the relationship

Overview Modeling theorized causal relationships – Even if we did not measure them in a causal way Can test lots of relationships at once – Rather than one regression at a time Generally, you have a theory about the relationship before hand – So less descriptive/exploratory than traditional hypothesis testing

Overview You can be more specific about the error terms, rather than just lumping them altogether

Overview Most important (to me anyway): – You can model things you don’t actually have numbers for

Concepts Latent variables – Represented by circles – Abstract phenomena you are trying to model – Aren’t actually represented by a number in the dataset Linked to the measured variables Represented indirectly by those variables

Concepts Manifest or observed variables – Represented by squares – Measured from participants (i.e. questions or subtotals or counts or whatever).

Concepts Exogenous – These are synonymous with independent variables – they are thought to be the cause of something. – In a model, the arrow will be going out of the variable. EXO ENDO

Concepts Important side note: Exogenous variables will not have an error term – Changes in these variables are represented by something else you aren’t modeling (like age, gender, etc.) ALL endogenous variables have to have an error term.

Concepts Endogenous – These are synonymous with dependent variables – they are caused by the exogenous variables. – In a model, the arrow will be going into the variable. EXO ENDO

Concepts Measurement model – The relationship between an exogenous latent variable and measured variables only. – Generally only used when describing CFAs (and all their counterparts)

Concepts Full SEM or fully latent SEM – A measurement model + causal relationships between latent variables

Concepts Very little sense making: – Recursive models – arrows go only in one direction – Nonrecursive models – arrows go backwards to original variables

Concepts Recursive

Concepts Nonrecursive

The New Hyp Testing 1.Theory + Model Building 2.Get the data! 3.Build the model. 4.Run the model. 5.Examine fit statistics. (remember EFA) 6.Rework/replicate.

The New Hyp Testing Examining model fit is based on residuals – Residuals = error for latents – Regression is this: Y (persons score = data) = Model (x variables) + error terms (residuals) – Residuals will be represented by circles Remember you don’t have real numbers for the error. Circles get estimated.

The New Hyp Testing Examining model fit is based on residuals – You want your error/residuals to be low. – Low error implies that the data = model, which means you have a more accurate representation of the relationships you are trying to model.

The Pictures Circles = latents/errors – If they don’t have numbers in the dataset Squares = measured variables – Will have numbers in dataset

The Pictures Single arrows indicate cause (x  y) Double arrows indicate correlation (x y) (ignore the middle of page 9 I don’t even know what…)

Important Side Note Unstandardized estimates – Single arrows = b slope values … essentially is the relationship between those two variables. – Double arrows = covariance, how much they change together

Important Side Note Standardized estimates – Single arrows = beta slope values – you could also think of these as factor loadings (EFA-CFA) – Double arrows = correlation SMCs = squared multiple correlations = R 2

Path Diagrams Byrne describes these as any model; however, I learned that path diagrams were models with ONLY measured variables – Tabachnick will also call it path – Mediation/moderation would be types of path diagrams. Indirect effects

The Pictures Structural Model Measurement model Residual Error Anything with an arrow going into it needs an error bubble! Some people call residuals = disturbances.

The Pictures What you don’t see: – Variances – Means You can turn on the visuals for these (you’ll see it later in the semester) They turn into little numbers next to the circle/square.

Types of Research Questions Adequacy of the model – Model fit, χ 2 and fit indices Testing Theory – Path significance – Does it look like what you think? – Modification Indices

Types of Research Questions Amount of variance (effect size) – Squared multiple correlations R 2 Parameter Estimates – Similar to a b value in regression Group differences – Multiple group models, multiple indicators models (MIMIC)

Types of Research Questions Longitudinal differences – Latent Growth Curves Multilevel modeling – Nested data sets Latent Class Analysis

Limitations Not really causal – Causality depends on the research design, not the analysis Not really exploratory – Some exploratory things can be tested, but need to be clearly justified

Practical Issues Sample size – BIG – Similar to EFA. – More people give you more information – information helps you estimate parameters.

Practical Issues Missing data – EEK! – You should check missing data in normal data screening before starting SEM – You can leave the data as missing in Amos, but will need to tell it to estimate missing data (it’s still a bad idea to estimate more than 5%, you don’t have enough information and it gets sad  )

Practical Issues Outliers: – Check multivariate outliers with Mahalanobis distance – You can get the estimates in Amos, but it’s easier to do fake regression data screening first

Practical Issues Assumptions – Multicollinearity – variables cannot be too correlated Remember that in CFA the indicators will be correlated, so just not.95+ – Linearity Check with a PP Plot

Practical Issues Assumptions – Normality Multivariate normality – check with a residual histogram – Homoscedasticity Check with a residual scatterplot