Descriptive Statistics

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1 Lampiran STATISTIK DESKRIPTIF MODEL REGRESI Descriptive Statistics IR Valid N (listwise) N Minimum Maximum Mean Std. Dev iation 30,02222,98000, , ,050 6,5334,354584, , ,38392, , , ,80646,343554, ,0968,52082,000209, ,03650,0380, , ,05750,08750,063467, ,05620, ,004559, STATISTIK DESKRIPTIF MODEL REGRESI 2 Descriptive Statistics IR DA Valid N (listwise) N Minimum Maximum Mean Std. Dev iation 30,0667,87034,302806, ,050 6,5334, , , ,2480 2, , , ,65452,294576, ,0968,52082,022400, ,03720,850,054533, ,05750,09000, , ,05620, ,005622, ,00324,8369,509629,

2 Lampiran 2 UJI ASUMSI KLASIK MODEL REGRESI UJI NORMALITAS One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Most Extreme Dif f erences Kolmogorov-Smirnov Z Asy mp. Sig. (2-tailed) Mean Std. Dev iation Absolute Positive Negativ e a. Test distribution is Normal. b. Calculated f rom data. Unstandardiz ed 30, , ,094,094 -,094,56,952 UJI HETEROKEDASTISITAS a. Dependent Variable: ABSRES,07,7,49,679,09,03,277,484,52 -,007,00 -,43 -,693,496 -,002,00 -,05 -,253,802 -,024,40 -,033 -,7,866-3,999,986 -,606-2,04,056 4,238 3,345,329,267,28 2,378,477,329,60,22 UJI AUTOKORELASI Summary b Adjusted Std. Error of Durbin- R R Square R Square the Estimate Watson,765 a,585,453, ,404 a. Predictors:,,,,,,, b. Dependent Variable: IR 38

3 UJI RUNTEST Test Value(a) -,0282 Cases < Test Value 5 Cases >= Test Value 5 Total Cases 30 Number of Runs 8 Z,557 Asymp. Sig. (2-tailed),577 a Median UJI MULTIKOLONIERITAS a. Dependent Variable: IR Collinearity Statistics Tolerance VIF,405,372,088,288,095,029,479 3,342,003,92,086 -,060,022 -,442-2,793,0,754,326 -,049,02 -,35-2,289,032,803,245 -,708,305 -,346-2,32,030,849,78-3,446 4,327 -,78-3,07,005,354 2,827 0,85 7,288,296,484,52,474 2,08 6,79 3,29,328 2,088,049,767,304 39

4 Lampiran 3 UJI HIPOTESIS MODEL REGRESI Summary Adjusted Std. Error of R R Square R Square the Estimate,765 a,585,453, a. Predictors:,,,,,,, Regression Total ANOVA b Sum of Squares df Mean Square F Sig.,07 7,58 4,426,003 a,786 22,036, a. Predictors:,,,,,,, b. Dependent Variable: IR a. Dependent Variable: IR,405,372,088,288,095,029,479 3,342,003 -,060,022 -,442-2,793,0 -,049,02 -,35-2,289,032 -,708,305 -,346-2,32,030-3,446 4,327 -,78-3,07,005 0,85 7,288,296,484,52 6,79 3,29,328 2,088,049 40

5 Lampiran 4 UJI ASUMSI KLASIK MODEL REGRESI 2 UJI NORMALITAS One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Most Extreme Dif f erences Kolmogorov-Smirnov Z Asy mp. Sig. (2-tailed) a. Test distribution is Normal. b. Calculated f rom data. Mean Std. Dev iation Absolute Positive Negativ e Unstandardiz ed 30, , ,47,47 -,0,807,533 UJI HETEROKEDASTISITAS DA a. Dependent Variable: ABSRES,296,30,954,35,000,026,002,0,99,08,04,269,357,89,004,039,09,092,928 -,423,292 -,30 -,445,63 -,53 3,086 -,06 -,050,96 -,6 6,430 -,008 -,025,980 3,584 2,705,260,325,99 -,279,93 -,284 -,444,64 UJI AUTOKORELASI Summary b Adjusted Std. Error of Durbin- R R Square R Square the Estimate Watson,673 a,452,244, ,86 a. Predictors:, DA,,,,,,, b. Dependent Variable: IR 4

6 UJI RUNTEST Test Value(a) -,077 Cases < Test Value 5 Cases >= Test Value 5 Total Cases 30 Number of Runs 9 Z,929 Asymp. Sig. (2-tailed),353 a Median UJI MULTIKOLONIERITAS DA a. Dependent Variable: IR Collinearity Statistics Tolerance VIF -,553,67 -,895,38,096,053,32,829,082,895,8,055,027,355 2,023,056,845,84,07,077,039,27,830,79,264 -,72,583 -,054 -,294,77,765,308 5,82 6,47,265,947,354,332 3,0 5,203 2,808,3,406,689,338 2,960 -,382 5,387 -,02 -,07,944,863,59 -,26,385 -,098 -,562,580,856,68 42

7 Lampiran 5 UJI HIPOTESIS MODEL REGRESI 2 Summary Adjusted Std. Error of R R Square R Square the Estimate,902 a,84,66, a. Predictors:,.DA,,,,,,.DA,,.DA,,.DA,.DA,.DA,.DA, DA Regression Total ANOVA b Sum of Squares df Mean Square F Sig. 3,622 5,24 4,097,006 a,825 4,059 4, a. Predictors:,.DA,,,,,,.DA,,.DA,,.DA,.DA,.DA,.DA, DA b. Dependent Variable: IR DA.DA.DA.DA.DA.DA.DA.DA a. Dependent Variable: IR 4,835,372 3,523,003 -,25,084 -,83-2,990,00 -,53,063 -,997-2,45,028 -,4,095 -,333 -,486,60-2,844,07 -,90-2,795,04 5,058 9,03,23,560,584-60,359 22,566 -,309-2,675,08 0,878 9,272,35,73,260-48,233,39-2,885-4,330,00 7,236,585 4,22 4,565,000 3,265,80 2,642 4,033,00,00,685,00,002,998 7,694 5,745,950 3,080,008 20,928 04,679 5,55,929, ,249 63,689 0,024 2,82,047-64,724 60,897 -,45-2,705,07 43

8 Lampiran 6 UJI ASUMSI KLASIK MANAJEMEN LABA UJI NORMALITAS One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Most Extreme Dif f erences Kolmogorov-Smirnov Z Asy mp. Sig. (2-tailed) a. Test distribution is Normal. b. Calculated f rom data. Mean Std. Dev iation Absolute Positive Negativ e Unstandardiz ed 42, , ,33,33 -,20,86,449 UJI HETEROKESDASTISITAS a a2 a. Dependent Variable: ABSRES,45,029 4,936,000,033,037,38,875,387,000,000 -,59 -,005,32 UJI AUTOKORELASI Summary b Adjusted Std. Error of Durbin- R R Square R Square the Estimate Watson,84 a,034 -,06, ,073 a. Predictors:, a2, a b. Dependent Variable: Y UJI MULTIKOLONIERTIAS a a2 a. Dependent Variable: Y Collinearity Statistics Tolerance VIF,02,04,54,60,042,052,27,800,428,990,00,000,000 -,47 -,930,358,990,00 44

9 Lampiran 7 UJI REGRESI MANAJEMEN LABA Summary Adjusted Std. Error of R R Square R Square the Estimate,84 a,034 -,06, a. Predictors:, a2, a Regression Total a. Predictors:, a2, a b. Dependent Variable: Y ANOVA b Sum of Squares df Mean Square F Sig.,074 2,037,685,50 a 2,2 39,054 2,86 4 a a2 a. Dependent Variable: Y,02,04,54,60,042,052,27,800,428,000,000 -,47 -,930,358 45

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