Lampiran. Lampiran 1 Data Penelitian TAHUN Y X1 X2 X3 X4_AS X4_JPG X4_INDH 1995

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1 Lampiran Lampiran 1 Data Penelitian TAHUN Y X1 X2 X3 X4_AS X4_JPG X4_INDH ,107,163 3,102,431 3,443,555 2,713,611 2,606,216 2,437,764 2,294,796 2,891,996 5,022,203 4,563,075 5,523,901 7,820,899 9,261,977 6,460,117 6,327,254 9,147,778 11,838,269 10,393,936 9,598,008 9,361,

2 Lampiran 2 Data penelitian Tahun LOG_Y LOG_X1 LOG_X2 LOG_X3 LOG_X4_AS LOG_X4_JPG LOG_X4_INDH Sumber : data diolah 68

3 Lampirn 3 Hasil Regresi Linier Berganda Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:22 Variable Coefficient Std. Error tstatistic Prob. C LOG_X LOG_X LOG_X LOG_X4_AS LOG_X4_INDH LOG_X4_JPG Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic)

4 LOG_X1 1 LOG_X2 LOG_X3 LOG_X4_AS LOG_X4_INDH LOG_X4_JPG Lampiran 4 Uji Multikolinieritas LOG_X1 LOG_X2 LOG_X3 LOG_X4_AS LOG_X4_INDH LOG_X4_JPG Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:44 Variable Coefficient Std. Error tstatistic Prob. C LOG_X Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic)

5 Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:44 Variable Coefficient Std. Error tstatistic Prob. C LOG_X Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic) Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:45 Variable Coefficient Std. Error tstatistic Prob. C LOG_X Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic)

6 Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:45 Variable Coefficient Std. Error tstatistic Prob. C LOG_X4_AS Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic) Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:46 Variable Coefficient Std. Error tstatistic Prob. C LOG_X4_INDH Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic)

7 Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:46 Variable Coefficient Std. Error tstatistic Prob. C LOG_X4_JPG Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic) Lampiran 5 Uji heterokedastisitas Heteroskedasticity Test: White Fstatistic Prob. F(6,13) Obs*Rsquared Prob. ChiSquare(6) Scaled explained SS Prob. ChiSquare(6) Test Equation: Dependent Variable: RESID^2 Date: 03/29/16 Time: 11:40 Variable Coefficient Std. Error tstatistic Prob. C LOG_X1^ LOG_X2^ LOG_X3^ LOG_X4_AS^ LOG_X4_INDH^ LOG_X4_JPG^ Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic)

8 Lampiran 6 Uji Normalitas Series: Residuals Sample Observations 20 Mean 1.13e15 Median 2.24e05 Maximum Minimum Std. Dev Skewness Kurtosis JarqueBera Probability

9 Lampiran 7 Uji Autokorelasi BreuschGodfrey Serial Correlation LM Test: Fstatistic Prob. F(2,11) Obs*Rsquared Prob. ChiSquare(2) Test Equation: Dependent Variable: RESID Date: 03/29/16 Time: 11:53 Presample missing value lagged residuals set to zero. Variable Coefficient Std. Error tstatistic Prob. C LOG_X LOG_X LOG_X LOG_X4_AS LOG_X4_INDH LOG_X4_JPG RESID(1) RESID(2) Rsquared Mean dependent var 1.13E15 Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic)

10 Lampiran 8 Uji Linieritas Ramsey RESET Test Equation: UNTITLED Specification: LOG_Y C LOG_X1 LOG_X2 LOG_X3 LOG_X4_AS LOG_X4_INDH LOG_X4_JPG Omitted Variables: Squares of fitted values Value df Probability tstatistic Fstatistic (1, 12) Likelihood ratio Ftest summary: Sum of Sq. df Mean Squares Test SSR Restricted SSR Unrestricted SSR Unrestricted SSR LR test summary: Value df Restricted LogL Unrestricted LogL Unrestricted Test Equation: Dependent Variable: LOG_Y Date: 03/29/16 Time: 11:54 Variable Coefficient Std. Error tstatistic Prob. C LOG_X LOG_X LOG_X LOG_X4_AS LOG_X4_INDH LOG_X4_JPG FITTED^ Rsquared Mean dependent var Adjusted Rsquared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood HannanQuinn criter Fstatistic DurbinWatson stat Prob(Fstatistic)

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