Item-Total Statistics. Corrected Item- Cronbach's Item Deleted. Total

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1 45 Lampiran 3 : Uji Validitas dan Reliabilitas Reliability Case Processing Summary N % Valid Cases Excluded a 0.0 Total a. Listwise deletion based on all variables in the procedure. Reliability Statistics Alpha N of Items Item-Total Statistics Scale Mean if Scale Variance Corrected Item- Item Deleted if Item Deleted Total Alpha if Item Correlation Deleted X X X X X Reliability Case Processing Summary N % Valid Cases Excluded a 0.0 Total a. Listwise deletion based on all variables in the procedure.

2 46 Reliability Statistics Alpha N of Items.73 5 Item-Total Statistics Scale Mean if Scale Variance Corrected Item- Item Deleted if Item Deleted Total Alpha if Item Correlation Deleted X X X X X Reliability Cases Ca se Processing Summary Valid Excluded a Total N % 75 00,0 a. Lis twise deletion based on all variables in the procedure. 0, ,0 Reliability Statistics Alpha N of Items,88 5 Item-Total Statistics Y. Y.2 Y.3 Y.4 Y.5 Scale Mean if Item Deleted Scale Variance if Item Deleted Corrected Item-Total Correlation Alpha if Item Deleted 8,600 7,569,649,770 8,2667 7,333,525,820 7,8533 7,803,604,784 7,5067 8,253,625,780 7,4933 8,8,72,76

3 47 Reliability Cases Ca se Processing Summary Valid Excluded a Total N % 75 00,0 a. Lis twise deletion based on all variables in the procedure. 0, ,0 Reliability Statistics Alpha N of Items,888 5 Item-Total Statistics Y2. Y2.2 Y2.3 Y2.4 Y2.5 Scale Mean if Item Deleted Scale Variance if Item Deleted Corrected Item-Total Correlation Alpha if Item Deleted 8,8000 7,54,788,854 8,9067 7,653,895,84 9,2000 7,486,767,857 8,8667 7,495,764,858 9,4800 6,334,624,92 Reliability Cases Ca se Processing Summary Valid Excluded a Total N % 75 00,0 a. Lis twise deletion based on all variables in the procedure. 0, ,0 Reliability Statistics Alpha N of Items,858 5

4 48 Item-Total Statistics Y2. Y2.2 Y2.3 Y2.4 Y2.5 Scale Mean if Item Deleted Scale Variance if Item Deleted Corrected Item-Total Correlation Alpha if Item Deleted 8,3600 7,477,883,795 8,5333 6,955,696,823 8,7200 7,23,64,837 8,4800 7,253,75,89 8,9733 7,026,547,87 Validity Correlations X. X.2 X.3 X.4 X.5 X Pearson Correlation.434 **.37 **.338 **.29 *.704 ** X. Sig. (2-tailed) Pearson Correlation.434 **.305 **.354 **.37 **.688 ** X.2 Sig. (2-tailed) Pearson Correlation.37 **.305 **.285 *.462 **.693 ** X.3 Sig. (2-tailed) Pearson Correlation.338 **.354 **.285 *.572 **.75 ** X.4 Sig. (2-tailed) Pearson Correlation.29 *.37 **.462 **.572 **.726 ** X.5 Sig. (2-tailed) Pearson Correlation.704 **.688 **.693 **.75 **.726 ** X **. Correlation is significant at the 0.0 level (2-tailed). *. Correlation is significant at the 0.05 level (2-tailed).

5 49 Correlations X2. X2.2 X2.3 X2.4 X2.5 X2 Pearson Correlation.433 **.38 **.34 **.330 **.675 ** X2. Sig. (2-tailed) X2.2 X2.3 X2.4 X2.5 X2 Pearson Correlation.433 **.363 **.44 **.678 **.770 ** Sig. (2-tailed) Pearson Correlation.38 **.363 ** **.667 ** Sig. (2-tailed) Pearson Correlation.34 **.44 ** **.672 ** Sig. (2-tailed) Pearson Correlation.330 **.678 **.349 **.445 **.749 ** Sig. (2-tailed) Pearson Correlation.675 **.770 **.667 **.672 **.749 ** **. Correlation is significant at the 0.0 level (2-tailed).

6 50 Correlations Y. Y.2 Y.3 Y.4 Y.5 Y Pearson Correlation.447 **.495 **.570 **.538 **.79 ** Y. Y.2 Y.3 Y.4 Y.5 Y Pearson Correlation.447 **.449 **.309 **.49 **.738 ** Sig. (2-tailed) Pearson Correlation.495 **.449 **.468 **.504 **.759 ** Pearson Correlation.570 **.309 **.468 **.688 **.755 ** Sig. (2-tailed) Pearson Correlation.538 **.49 **.504 **.688 **.8 ** Pearson Correlation.79 **.738 **.759 **.755 **.8 ** **. Correlation is significant at the 0.0 level (2-tailed).

7 5 Correlations Y2. Y2.2 Y2.3 Y2.4 Y2.5 Y2 Pearson Correlation.899 **.662 **.705 **.54 **.862 ** Y2. Y2.2 Y2.3 Y2.4 Y2.5 Y2 Pearson Correlation.899 **.783 **.823 **.592 **.929 ** Pearson Correlation.662 **.783 **.665 **.587 **.850 ** Pearson Correlation.705 **.823 **.665 **.533 **.848 ** Pearson Correlation.54 **.592 **.587 **.533 **.807 ** Pearson Correlation.862 **.929 **.850 **.848 **.807 ** **. Correlation is significant at the 0.0 level (2-tailed).

8 52 Lampiran 4 : Statisitik Deskriptif Interval Skala Interval Kategori,00 s/d,82 Sangat Buruk,83 s/d 2,66 Buruk 2,67 s/d 3,49 Kurang Baik 3,50 s/d 4,32 Cukup Baik 4,33 s/d 5,6 Baik 5,7 s/d 6,00 Sangat Baik Descriptives Descriptive Statistics N Minimum Maximum Mean Std. Deviation X. 75 2,00 6,00 4,5600,02983 X ,00 6,00 4,9600,95068 X.3 75,00 6,00 4,7733,98053 X ,00 6,00 4,5733,0494 X ,00 6,00 4,5067,93539 X 75,80 6,00 4,6747,70502 X2. 75,00 6,00 4,3600,09840

9 53 X ,00 6,00 4,9733,67730 X2.3 75,00 6,00 3,7600,23944 X ,00 6,00 4,3600,0735 X ,00 6,00 4,833,74785 X2 75,80 6,00 4,4533,6952 Z. 75 2,00 6,00 4,600,9593 Z.2 75,00 6,00 4,0533,05 Z ,00 6,00 4,4667,90544 Z ,00 6,00 4,833,7836 Z ,00 6,00 4,8267,74204 Z 75,80 6,00 4,4640,68352 Y. 75 2,00 6,00 5,033,70698 Y ,00 6,00 4,9067,6892 Y ,00 6,00 4,633,73325 Y ,00 6,00 4,9467,73325 Y.5 75,00 6,00 4,3333,904 Y 75,80 6,00 4,7627,66633 Y ,00 6,00 4,9067,6892 Y2.2 75,00 6,00 4,7333,85950 Y ,00 6,00 4,5467,84299 Y ,00 6,00 4,7867,77622 Y ,00 6,00 4,2933,98328 Y2 75,80 6,00 4,6533,65869 Valid N (listwise) 75

10 54 Lampiran 5 : Regresi Linier Regression Variables Entered/Removed a Variables Variables Method Entered Removed X2, X b. Enter a. Dependent Variable: Y b. All requested variables entered. Summary b R R Square Adjusted R Square Std. Error of the Estimate.746 a a. Predictors: (Constant), X2, X b. Dependent Variable: Y ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total a. Dependent Variable: Y b. Predictors: (Constant), X2, X Coefficients a Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics B Std. Error Beta Tolerance VIF (Constant) X X a. Dependent Variable: Y

11 55 Residuals Statistics a Minimum Maximum Mean Std. Deviation N Predicted Value Std. Predicted Value Standard Error of Predicted Value Adjusted Predicted Value Residual Std. Residual Stud. Residual Deleted Residual Stud. Deleted Residual Mahal. Distance Cook's Distance Centered Leverage Value a. Dependent Variable: Y Regression Variables Entered/Removed a Variables Variables Method Entered Removed Y, X, X2 b. Enter a. Dependent Variable: Y2 b. All requested variables entered. Summary b R R Square Adjusted R Square Std. Error of the Estimate.85 a a. Predictors: (Constant), Z, X, X2 b. Dependent Variable: Y2 ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total a. Dependent Variable: Y2 b. Predictors: (Constant), Y, X, X2

12 56 Coefficientsa Unstandardized Standardized t Sig. Collinearity Statistics Coefficients Coefficients B Std. Error Beta Tolerance VIF (Constant) X X Z a. Dependent Variable: Y2 Residuals Statistics a Minimum Maximum Mean Std. Deviation N Predicted Value Std. Predicted Value Standard Error of Predicted Value Adjusted Predicted Value Residual Std. Residual Stud. Residual Deleted Residual Stud. Deleted Residual Mahal. Distance Cook's Distance Centered Leverage Value a. Dependent Variable: Y2

13 57 Lampiran 6 : Uji Asumsi Klasik NPar Tests One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Most Extreme Differences Kolmogorov-Smirnov Y Asymp. Sig. (2-tailed) Mean Std. Deviation Absolute Positive Negative a. Test distribution is Normal. b. Calculated from data. Unstandardiz ed Residual 75, , ,07,07 -,068,68,839 NPar Tests One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Most Extreme Differences Kolmogorov-Smirnov Y Asymp. Sig. (2-tailed) Mean Std. Deviation Absolute Positive Negative a. Test distribution is Normal. b. Calculated from data. Unstandardiz ed Residual 75, , ,082,082 -,072,73,689 Regression Variables Entered/Removed b Variables Variables Entered Removed Method X2, X a. Enter a. All reques ted variables entered. b. Dependent Variable: ABS_RES

14 58 Summary Adjusted Std. Error of R R Square R Square the Es timate,70 a,029,002, a. Predictors: (Constant), X2, X Regres sion Residual Total a. Predictors: (Constant), X2, X ANOVA b Sum of Squares df Mean Square F Sig.,3 2,065,066,350 a 4,40 72,06 4,54 74 b. Dependent Variable: ABS_RES (Constant) X X2 Unstandardized Coeffic ients a. Dependent Variable: ABS_RES Coefficients a Standardiz ed Coeffic ients B Std. Error Beta t Sig.,27,203,332,87 -,079,06 -,225 -, 287,202,089,063,248,420,60 Regression Variables Entered/Removed b Variables Variables Entered Removed Method Y, X, X2 a. Enter a. All requested variables entered. b. Dependent Variable: ABS_RES2 Summary Adjusted Std. Error of R R Square R Square the Estimate,280 a,079,040, a. Predictors: (Constant), Y, X, X2

15 59 Regression Residual Total ANOVA b Sum of Squares df Mean Square F Sig.,68 3,056 2,07,9 a,975 7,028 2,43 74 a. Predictors: (Constant), Y, X, X2 b. Dependent Variable: ABS_RES2 (Constant) X X2 Y Unstandardized Coefficients a. Dependent Variable: ABS_RES2 Coefficients a Standardized Coefficients B Std. Error Beta t Sig.,588,40 4,22,000 -,03,046 -,056 -,296,768 -,026,048 -,06 -,537,593 -,035,050 -,42 -,707,482

16 60 Lampiran 7 : Uji Beda T-Test Group Statistics Y2 Responden Karyawan Pimpinan Std. Error N Mean Std. Deviation Mean 75 4,7627,66633, ,6533,65869,07606 Y2 Equal variances assumed Equal variances not assumed Levene's Test for Equality of Variances F Sig. Independent Samples Test t df Sig. (2-tailed) t-test for Equality of Means Mean Difference 95% Confidence Interval of the Std. Error Difference Difference Lower Upper,000,987,0 48,34,0933,089 -,0446,3233,0 47,980,34,0933,089 -,0446,3233

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