Standardized Residuals in Mplus
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چکیده
The fit of structural equation models with normally distributed observed and latent variables can be evaluated by examining the normalized and standardized residuals computed in Mplus. These residuals are available for the ML, MLR, and MLF estimators and can be obtained by the residual output command. Suppose that Y is the vector of dependent observed variables and η is the vector of latent variables. The general structural equation model is given by Y = ν + Λη + ε (1)
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