1. Reliabilitas dan Validitas Tes Lingkungan Kerja

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Lampiran Reliabilitas dan Validitas Tes Item-Total Statistics Lingkungankerja Disiplinkerja Prestasikerja Kepemimpinan Scale Corrected Cronbach's Scale Mean if Variance if Item-Total Alpha if Item Correlation Deleted 86..99.744.78 9.7667 99.564.837.735 9.6 9.4.67.83 96.7333 53.3.53.868. Reliabilitas dan Validitas Tes Lingkungan Kerja Item-Total Statistics Item Item Item3 Item4 Item5 Item6 Item7 Item8 Item9 Item Scale Mean if Scale Variance if Corrected Item-Total Correlation Cronbach's Alpha if Item Deleted 33. 7.47.563.86 33.3 6.56.534.84 33.7333 5.53.549.84 33. 6.77.46.833 3.8667 6.464.67.87 3.8333 5.66.565.8 33.8 7.47.35.84 33.4333 6.875.379.837 33. 5.793.699.8 33.4667 7.76 39..838.. 9

. Reliabilitas dan Validitas Tes Disiplin Kerja Item-Total Statistics Item Item Item3 Item4 Item5 Item6 Item7 Item8 Item9 Scale Mean if Scale Variance if Corrected Item-Total Correlation Cronbach's Alpha if Item Deleted 7.8 7.959.894.93 7.6333 9.344.864.98 7.6.45.83.94 7.3667.757.85.98 7.5333 3.93.673.938 7.5333 4.67.646.94 7.5333 4.67.646.94 7.3333.747.83.99 8..966.797..93. Validitas dan Reliabilitas Test Prestasi Kerja Item-Total Statistics Item Item Item3 Item4 Item5 Item6 Item7 Scale Mean if Scale Variance if Corrected Item-Total Correlation Cronbach's Alpha if Item Deleted 6.5667 5.89.7.93 6.6333 5.68.56.94 6.4667 4.5.77.97 6.3667 5.68.76.98 6.5333 4.947.766.97 6.4667 4.878.864.93 6.4667 4.464.85.9

3. Validitas dan Reliabilitas Tes Kepemimpinan Item-Total Statistics Item Item Item3 Item4 Item5 Item6 Item7 Scale Mean if Scale Variance if Corrected Item-Total Correlation Cronbach's Alpha if Item Deleted 3.5667 7.46.594.89 3.6667 6.9.687.88 3.6 8.455.46.843 3.7 7.459.649.84 3.6667 7.57.73.83 3.4333 8.85.383.85 3.5667 7.8.76.84

Lampiran. Hipotesis Pertama dan Hipotesis Kedua Hipotesis Pertama () Regression Entered/Removed b Model Entered Disiplinker Removed Method ja,. Enter Lingkunga nkerja a a. All requested variables entered. b. Dependent Variable: Prestasikerja Model Summary b Model R R Square Adjusted R Square Std. Error of the Estimate.769 a.59.57 3.38 a. Predictors: (Constant), Disiplinkerja, Lingkungankerja b. Dependent Variable: Prestasikerja ANOVA b Model Sum of Squares df Mean Square F Sig. Regression 553.7 76.635 8.96. a Residual 38.635 39 9.8 Total 935.95 4 a. Predictors: (Constant), Disiplinkerja, Lingkungankerja b. Dependent Variable: Prestasikerja

Model (Constant) Lingkungankerja Disiplinkerja a. Dependent Variable: Prestasikerja Coefficients a Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig. 5.695 3.656.558.7.66..75.364.3.47.9.599 5.45. Residuals Statistics a Minimum Maximum Mean Std. Deviation N Predicted Value 4.3436 4.459 3476 3.67347 4 Residual -7.679 9.7356. 3.549 4 Std. Predicted Value -.553.834.. 4 Std. Residual -.69 3.7..975 4 a. Dependent Variable: Prestasikerja Uji Normalitas Hipotesis Pertama () NPar Tests One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Mean Std. Deviation Most Extreme Absolute Differences Positive Negative Kolmogorov-Smirnov Z Asymp. Sig. (-tailed) a. Test distribution is Normal. b. Calculated from data. Unstandardiz ed Residual 4. 3.54946.75.75 -.75.35.5

Charts Histogram Dependent Variable: Prestasikerja.5 Frequency 7.5 5..5-4 Mean =-.5E-6 Std. Dev. =.975 N =4 Regression Standardized Residual Normal P-P Plot of Regression Standardized Residual Dependent Variable: Prestasikerja. Expected Cum Prob.8.6.4...4.6.8. Observed Cum Prob

Scatterplot Dependent Variable: Prestasikerja 4 Regression Standardized Residual - - - Regression Standardized Predicted Value 3 Uji Multikolinearitas Entered/Removed(b) Model Entered Disiplinkerja, Lingkungan kerja(a) Removed a All requested variables entered. b Dependent Variable: Prestasikerja. Enter Method

Model Lingkungankerja Disiplinkerja Coefficients a a. Dependent Variable: Prestasikerja Collinearity Statistics Tolerance VIF.774.93.774.93 Collinearity Diagnostics a Model Dimension 3 a. Dependent Variable: Prestasikerja Variance Proportions Condition Lingkung Eigenvalue Index (Constant) ankerja Disiplinkerja.97.....8.76.7.6.94.9 7.93.73.94.6 Residuals Statistics a Minimum Maximum Mean Std. Deviation N Predicted Value 4.3436 4.459 3476 3.67347 4 Residual -7.679 9.7356. 3.549 4 Std. Predicted Value -.553.834.. 4 Std. Residual -.69 3.7..975 4 a. Dependent Variable: Prestasikerja Hipotesis Kedua () Entered/Removed b Model Entered Removed Method Kepemimp inan a. Enter a. All requested variables entered. b. Dependent Variable: Disiplinkerja

Model Model Summary b Adjusted Std. Error of R R Square R Square the Estimate.646 a.47.4 4.7988 a. Predictors: (Constant), Kepemimpinan b. Dependent Variable: Disiplinkerja Coefficients Uji-t Secara Parsial(a) Unstandardized Coefficients Standardized Coefficients t Sig. Model B Std. Error Beta B Std. Error (Constant) 9.859 4.3.346.4 Kepemimpinan.88.53.646 5.349. a Dependent Variable: Disiplinkerja Residuals Statistics a Minimum Maximum Mean Std. Deviation N Predicted Value 5.3985 4.574 3. 3.93447 4 Residual -8.357 8.96575. 4.659 4 Std. Predicted Value -.678.688.. 4 Std. Residual -.763.94..988 4 a. Dependent Variable: Disiplinkerja NPar Tests One-Sample Kolmogorov-Smirnov Test Hipotesis Kedua N Normal Parameters a,b Most Extreme Differences Kolmogorov-Smirnov Z Asymp. Sig. (-tailed) Mean Std. Deviation Absolute Positive Negative Unstandardized Residual 4. 4.65897.7.7 -.6.9.7 a. Test distribution is Normal. b. Calculated from data.

Charts Histogram Dependent Variable: Disiplinkerja.5 Frequency 7.5 5..5 - - Mean =3.8E-6 Std. Dev. =.988 N =4 Regression Standardized Residual

Normal P-P Plot of Regression Standardized Residual Dependent Variable: Disiplinkerja. Expected Cum Prob.8.6.4...4.6.8. Observed Cum Prob Scatterplot Dependent Variable: Disiplinkerja Regression Standardized Residual - - - - Regression Standardized Predicted Value 3