Difference between revisions of "SMHS BigDataBigSci SEM"
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− | <mark> PLEASE FIX LAST ARROW *'''Relations: Direct effects''' (→), '''Reciprocal effects''' (↔ or ⇆), and Correlation or covariance ( ARROW ) all have different appearance in SEM models.</mark> | + | <mark> PLEASE FIX LAST ARROW *'''Relations: Direct effects''' (→), '''Reciprocal effects''' (↔ or ⇆), and '''Correlation or covariance''' ( ARROW ) all have different appearance in SEM models.</mark> |
===Model Components=== | ===Model Components=== |
Revision as of 11:41, 16 May 2016
Contents
Model-based Analytics - Structural Equation Modeling (SEM)
SEM allow re-parameterization of random-effects to specify latent variables that may affect measures at different time points using structural equations. SEM show variables having predictive (possibly causal) effects on other variables (denoted by arrows) where coefficients index the strength and direction of predictive relations. SEM does not offer much more than what classical regression methods do, but it does allow simultaneous estimation of multiple equations modeling complementary relations.
SEM is a general multivariate statistical analysis technique that can be used for causal modeling/inference, path analysis, confirmatory factor analysis (CFA), covariance structure modeling, and correlation structure modeling.
SEM Advantages
SEM allows separation of observed and latent variables. Other standard statistical procedures may be viewed as special cases of SEM, where statistical significance less important, than in other techniques, and covariances are the core of structural equation models.
Definitions
X → Y ← D
A → X ← E
Notation
PLEASE FIX LAST ARROW *Relations: Direct effects (→), Reciprocal effects (↔ or ⇆), and Correlation or covariance ( ARROW ) all have different appearance in SEM models.
Model Components
The measurement part of SEM model deals with the latent variables and their indicators. A pure measurement model is a confirmatory factor analysis (CFA) model with unmeasured covariance (bidirectional arrows) between each possible pair of latent variables. There are straight arrows from the latent variables to their respective indicators and straight arrows from the error and disturbance terms to their respective variables, but no direct effects (straight arrows) connecting the latent variables. The measurement model is evaluated using goodness of fit measures (Chi-Square test, BIC, AIC, etc.) Validation of the measurement model is always first.
Then we proceed to the structural model (including a set of exogenous and endogenous variables together with the direct effects (straight arrows) connecting them along with the disturbance and error terms for these variables that reflect the effects of unmeasured variables not in the model).
Notes
Hands-on Example 1 (School Kids Mental Abilities)
Hands-on Example 2 (Parkinson’s Disease data)
See also
- Back to Model-based Analytics
- Next Section: Growth Curve Modeling
- Next Section: Generalized Estimating Equation (GEE) Modeling
- SOCR Home page: http://www.socr.umich.edu
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