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Structural Equation Modeling. Mgmt 291 Lecture 3 – CFA and Hybrid Models Oct. 12, 2009. Measurement is Everything. Nothing can be done with wrong or unreliable measurements. “Measurement is Everything”.
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Structural Equation Modeling Mgmt 291 Lecture 3 – CFA and Hybrid Models Oct. 12, 2009
Measurement is Everything • Nothing can be done with wrong or unreliable measurements. • “Measurement is Everything”. • In research presentation or paper submission, measurement is the part being challenged the most.
Latent Variables are everywhere in research • “The true power of SEM comes from latent variable modelling “ • “Variables in psychology and other social science are rarely (never?) measured directly” • the effects of the variable are measured • Intelligence, self-esteem, depression • Reaction time, diagnostic skill • Democracy, Socio-Economical Status • Legitimacy, Management Skill • (soul, angels, … - hypothetical construct)
Beyond Validity and Reliability:Between concept and indicators • Validity: Measures what it intends to measure. • Reliability: Consistency • Precision • repeatability
Latent Variable Latent Vars and Observed Indicators Indicator1 Indicator3 • What to be studied is: L1 L2 X1.1 X2.1 X3.1 X4.1 X5.1 X1.2 X2.2 X3.2 X4.2 X5.2 E 1.1 E 2.1 E 3.1 E 4.1 E 5.1 E 1.2 E 2.2 E 3.2 E 4.2 E 5.2 Latent vs. Observed
Exploratory Factor Analysis SPSS For Data Reduction Factor analysis GIGO
Confirmative Factor Analysis • 1) Equations & Diagrams: model representation • 2) Identification & Estimation • 3) Errors and Evaluation: assumptions & fit indexes • 4) Explanation
1) Equations & Diagrams: model representation • X 1.1 = Ø1 L1 + e 1.1 • X 2.1 = Ø2 L1 + e 2.1 • X 3.1 = Ø3 L1 + e 3.1 • X 4.1 = Ø4 L1 + e 4.1 • Loadings - Ø1 … • X ~ similar to endogenous variables • L ~ similar to exogenous variables
More on Equations X = L+ e Error Measured True Score Relationship between Measured <–> true score Observed <–> latent variable Indicator <–> construct or factor Unique factor
Diagram representation e1 Research Presentation Assignment Report Knowing SEM e2 X 1.1 ~ X 5.1 load on L 1 Classroom Participation e3 Co-vary L1 L2 X1.1 X2.1 X3.1 X4.1 X5.1 X1.2 X2.2 X3.2 X4.2 X5.2 E4.1 E5.1 E1.2 E2.2 E3.2 E4.2 E5.2 E1.1 E2.1 E3.1
Types of Measurement Models • Uni-dimensional (each indicator loads only on one factor, error terms independent from each other) • Multi-dimensional • Single-factor • Multifactors L1 L2 X1.1 X2.1 X3.1 X4.1 X2.2 X3.2 X4.2
Non-recursive Type Income Education Occupation ? Socio-economical Status
2) Identification and Estimation • Parameters <= Observations • Scale for every factor • Single factor & >= 3 indicators • 2 or more factors & 2 or more indicators per factor • Less than 2 indicators for one or more factors --- ??? Not an issue As recursive In literature, 3 indicators or 2 with 2 correlated factors or sample size > 200
a) How to scale the latent variable • 1) fix variances as a constant • 2) fix one loading as 1
b) How to count • # parameters = # loadings + vars & co-vas of factors + vars & co-vas of errors • # obs = v(v+1)/2 ~ number of observed variables
Examples E1 E2 E1 E2 E3 X2 X1 X1 X2 X3 1.0 1.0 A A E2 E3 E1 E4 X1 X2 X3 X4 1.0 1.0 A B 4, 6, 9
Identification of EFA GIGO ?
Estimation Methods • ML – most often used • Generalized least squared • Un-weighted least squared
3) Errors and Evaluation: Assumptions • Multivariate normality
Fit Indices • All the fit indices for path analysis applied to CFA • Chi squared / df < 3 • GFI (Goodness Fit Index), AGFI close to 1 • SRMR (Standardized Root Mean Squared Residual) close to 0
4) Explanation: Factor loadings • Un-standardized coefficients • (similar to regression coefficients) • Standardized coefficients
R 2 • Proportion of explained variances • (1 – measurement error variance / observed variances) • 1-R 2 ~ proportion of unique variances
Example: The Model Representation Hand Movements Number Recall Word Order Gestalt Closure Spatial Memo Matrix Analogies Photo Series Triangles 1 1 Sequential Simultaneous
Example: Results • R2 • Chi Square • Chi-square = 38.13 • Df = 19 ~ 2-factor model • For one factor • 104.90 (df=20)
Example: Diagram to Rep Results 3.50 (.39) 3.44 (.47) 5.13 (.56) 10.05 (.65) 2.01 (.34) 2.92 (.34) 5.45 (.75) 8.71 (.75) Hand Movements Number Recall Word Order Gestalt Closure Spatial Memo Matrix Analogies Photo Series Triangles 1.21 (.66) 1.45 (.73) 2.03 (.59) 1.39 (.81) 1.0 (.50) 1.15 (.81) 1.0 (.50) 1.73 (.78) Sequential Simultaneous Standardized coefficients inside parenthesis
Example: Explanation 2.01 (.34) 8.71 (.75) • Standardized & Un-standardized coefficients & variances • (8.71 / 3.4 2 = 8.71 / 11.56 = .75) • .5 2 = 1 - .75 Hand Movements Number Recall 1.0 (.50) 1.15 (.81) Sequential
Hybrid Models– Combination of Measurement and Structure Models
1) Equations and Diagram: Model representation of Hybrid Model • 6 Types of Terms • Observed Exogenous - X • Observed Endogenous - Y • Latent Exogenous - K • Latent Endogenous - E • Error Terms for Exogenous Obs – eY • Error Terms for Endogenous Obs - eX
Diagram representation eE 6, PS 5, PH 3, BE 4, GA E K 1, LY 2, LX Y X 8, TD 7, TE eX eY
More on Diagram representation eE1 eE2 6, PS 5, PH 3, BE 4, GA E1 K E2 2, LX 1, LY Y1 Y2 Y3 Y4 X 8, TD 7, TE eX eY eY eY eY
Model Representation • NY = # observed endogenous • NX = # observed exogenous • NE = # latent endogenous • NK = # latent exogenous
Model representation eE 6, PS 5, PH 3, BE 4, GA E K 1, LY (NY X NE) 2, LX (NX X NK) Y X 8, TD 7, TE (NY X NY) eX eY
2) Identification and Estimation • Number of parameters <(p+q)(p+q+1)/2 • Two-Step Rule - Measurement Model Identification - Structural Model Identification
Estimation Methods • ML again
3) Errors & Model Evaluation • Fit Indexes • Chi-squares
4) Explanation • path coefficients • and loadings
Example: Model e e e e e e Parental Psychopathology Low Family SES Extroversion Reading Arithmetic Spelling Scholastic Achievement Classroom Adjustment Emotional Stability Familial Risk Cognitive Ability Scholastic Motivation Harmony e Memory Verbal Visual- Spatial e e e e e
Example: Identification e e e e e e Parental Psychopathology Low Family SES Extroversion Reading Arithmetic Spelling Scholastic Achievement Classroom Adjustment Emotional Stability Familial Risk Cognitive Ability Scholastic Motivation Harmony e Memory Verbal Visual- Spatial e e e e D e D D Scholastic Achievement Classroom Adjustment Familial Risk Cognitive Ability
Example: Errors & Fix Indexes for Evaluation • Better chi square/df for 3-factor measurement model (cognitive & scholar merger) (2.05 vs. 3.92) • (also GFI and SRMR better) • Good chi square/df for hybrid model • (2.05)
Example: results explanation e e e e e e Parental Psychopathology Low Family SES Extroversion Reading Arithmetic Spelling Scholastic Achievement Classroom Adjustment Emotional Stability Familial Risk Cognitive Ability Scholastic Motivation Harmony e Memory Verbal Visual- Spatial e e e e e