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1 98 LAMPIRAN 3 STRUCTURAL EQUATION MODEL ONE CONGINERIC Use of this program is subject to the terms specified in the Convention. Universal Copyright 9/2017 DATE: 9/ TIME: 20:22 Website: The following lines were read from file D:\1A BIMBINGAN\2 ONE CONGENERIC\DATAFULL8.LS8: Dag Sörbom L I S R E L 8.80 BY Karl G. Jöreskog & LA PM='DATA.PMM' AC='DATA.ACM' SE / This program is published exclusively by Scientific International, Inc. Software 7383 N. Lincoln Avenue, Suite 100 Lincolnwood, 60712, U.S.A. IL Phone: (800) , (847) , Fax: (847) Copyright by Scientific Software International, Inc., MO NX=2 NY=3 NK=2 NE=3 LX=FU,Fi LY=FU,Fi GA=FU,Fi BE=FU.FI PH=SY,FR TD=SY,Fi PS=DI,FR TE=SY,Fi LK LE FR GA 3 1 GA 1 2 FR BE 1 2 BE 2 3 VA 1 LX 1 1 VA 0 TD 1 1 VA 1 LX 2 2

2 99 VA 0 TD 2 2 VA 1 LY 1 1 VA 0 TE 1 1 VA 1 LY 2 2 VA 0 TE 2 2 VA 1 LY 3 3 VA 0 TE 3 3 PD OU MI EF PI 1.00 PV PQ Variables 5 Variables 3 Variables 2 Variables 3 Number of Input Number of Y - Number of X - Number of ETA - Parameter Specifications BETA Number of K - Variables 2 Number of Observations 200 PI PV PQ GAMMA Covariance Matrix

3 100 PI 0 3 PV 0 0 PQ 4 0 PI PV PHI PQ LAMBDA-X P BETA PI (0.17) 4.70 PV Number of Iterations = 7 (0.07) 8.19 LISREL Estimates (Robust Maximum Likelihood) LAMBDA-Y PQ GAMMA

4 101 PI (0.20) (0.03) (0.02) PV PQ P Note: This matrix is diagonal K Covariance Matrix of ETA and (0.11) (0.04) (0.04) PI 1.01 PV PQ PHI 0.53 (0.04) Squared Multiple Correlations for Structural Equations Squared Multiple Correlations for Reduced Form Reduced Form

5 102 Statistics Goodness of Fit PI (0.09) (0.20) PV PQ Squared Multiple Correlations for Y - Variables Freedom = 5 Degrees of Minimum Fit Function Chi-Square = (P = 0.00) Normal Theory Weighted Least Squares Chi-Square = (P = 0.00) Satorra-Bentler Scaled Chi- Square = 9.11 (P = 0.10) Chi-Square Corrected for Non-Normality = (P = 0.020) Estimated Non-centrality Parameter (NCP) = Percent Confidence Interval for NCP = (0.0 ; 16.71) Squared Multiple Correlations for X - Variables Minimum Function Value = 0.19 Fit Population Discrepancy Function Value (F0) = Percent Confidence Interval for F0 = (0.0 ; 0.084) Root Mean Square Error of Approximation (RMSEA) = Percent Confidence Interval for RMSEA = (0.0 ; 0.13) P-Value for Test of Close Fit (RMSEA < 0.05) = 0.30 Expected Cross- Validation Index (ECVI) = 0.15

6 Percent Confidence Interval for ECVI = (0.13 ; 0.21) Model = 0.15 ECVI for Saturated ECVI Independence Model = 2.26 for (RFI) = Relative Fit Index Critical N (CN) = Chi-Square for Independence Model with 10 Degrees of Freedom = = CAIC = (NFI) = 0.98 Independence AIC Model AIC = Saturated AIC = Independence Model CAIC = Saturated CAIC = Normed Fit Index Non-Normed Index (NNFI) = 0.98 Fit Parsimony Normed Fit Index (PNFI) = 0.49 Comparative Index (CFI) = 0.99 (IFI) = 0.99 Fit Incremental Fit Index Root Mean Square Residual (RMR) = = (GFI) = 0.93 Standardized RMR Goodness of Fit Index Adjusted Goodness of Fit Index (AGFI) = 0.80 Parsimony Goodness of Fit Index (PGFI) = 0.31 Modification Indices and Expected Change No Non-Zero Modification Indices for LAMBDA-Y Modification Indices for LAMBDA-X

7 Expected Change for LAMBDA-X PI PV PQ Expected Change for GAMMA Modification Indices for BETA PI PV PI PV PQ No Non-Zero Modification Indices for PHI PQ Expected Change for BETA No Non-Zero Modification Indices for P PI PV PQ Modification Indices for GAMMA Modification Indices for THETA-EPS PI - - PV PQ

8 105 EPS Expected Change for THETA- PI - - PV Expected Change for THETA- DELTA PQ Modification Indices for THETA-DELTA-EPS Expected Change for THETA- DELTA-EPS Maximum Modification Index is for Element ( 2, 1) of THETA-DELTA Total and Indirect Effects Total Effects of K on ETA PI Modification Indices for THETA-DELTA (0.09) (0.20) PV

9 PQ Indirect Effects of K on ETA PI (0.09) 3.36 PV PQ Total Effects of ETA on ETA PI (0.17) (0.13) PV (0.07) 8.19 PQ Largest Eigenvalue of B*B' (Stability Index) is Indirect Effects of ETA on ETA PI (0.13) 3.76 PV PQ Total Effects of ETA on Y PI (0.17) (0.13) PV (0.07) 8.19 PQ Indirect Effects of ETA on Y

10 107 PI (0.17) (0.13) PV (0.07) 8.19 PQ Total Effects of K on Y PI (0.09) (0.20) PV PQ Seconds Time used: 0.016

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