Regression ( Kemampuan Individu, Lingkungan kerja dan Motivasi)

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Regression (, Lingkungan kerja dan ) Descriptive Statistics Mean Std. Deviation N 3.87.333 32 3.47.672 32 3.78.585 32 s Pearson Sig. (-tailed) N Kemampuan Lingkungan Individu Kerja.000.432.49.432.000.3.49.3.000..000.000.000..000.000.000. 32 32 32 32 32 32 32 32 32 Variables Entered/Removed b Variables Entered Variables Removed Kemampuan Individu, Lingkungan Kerja a. Enter a. All requested variables entered. b. Dependent Variable: Method Summary b R a.572 Adjusted R Std. Error of R Square Square the Estimate Durbin-Watson.327.320.274.86 a. Predictors: (Constant),, b. Dependent Variable:

Regression Residual Total ANOVA b Sum of Squares df 6.988 2 Mean Square 3.494 F 46.407 Sig..000 a 4.380 29.075 2.368 3 a. Predictors: (Constant),, b. Dependent Variable: Coefficients a (Constant) a. Dependent Variable: Unstandardized Standardized Coefficients Coefficients Collinearity Statistics B Std. Error Beta t Sig. Tolerance VIF 2.489.45 7.96.000.53.03.309 4.950.000.903.07.224.036.394 6.33.000.903.07 Dimension 2 3 a. Dependent Variable: Collinearity Diagnostics a Variance Proportions Kemampuan Lingkungan Eigenvalue Condition Index (Constant) Individu Kerja 2.966.000.00.00.00.022.586.08.96.24.02 6.036.92.04.76 Re siduals Statis tics a Minimum Maximum Mean Std. Deviation N Predicted Value 3.36 4.30 3.87.90 32 Residual -.366.594.000.273 32 Std. Predicted Val ue -2.679 2.269.000.000 32 Std. Residual -4.979 2.64.000.995 32 a. Dependent Variable:

Regression (,,, dan Kepuasan Kerja) Descriptive Statistics Kepuasan Kerja Kemampuan individu Lingkungan kerja Mean Std. Deviation N 3.9.23 32 3.47.672 32 3.78.585 32 3.87.333 32 Variables Entered/Removed b Variables Entered Kemampuan individu, Lingkungan kerja, a. All requested variables entered. a Variables Removed b. Dependent Variable: Kepuasan Kerja. Enter Method Summary b Adjusted R Std. Error of R R Square Square the Estimate Durbin-Watson.84 a.707.702.26 2.026 a. Predictors: (Constant), Kemampuan individu, Lingkungan kerja, b. Dependent Variable: Kepuasan Kerja Regression Residual Total ANOVA b Sum of Squares df 7.248 3 Mean Square 2.46 F 52.66 Sig..000 a 3.008 28.06 0.256 3 a. Predictors: (Constant), Kemampuan individu, Lingkungan kerja, b. Dependent Variable: Kepuasan Kerja

(Constant) Kemampuan individu Lingkungan kerja a. Dependent Variable: Kepuasan Kerja Coefficients a Unstandardized Standardized Coefficients Coefficients Collinearity Statistics B Std. Error Beta t Sig. Tolerance VIF.847.06 7.433.000.8.05.343 7.88.000.800.249.083.08.2 4.632.000.747.338.345.033.499 0.4.000.673.486 Collinearity Diagnostics a Dimension 2 3 4 a. Dependent Variable: Kepuasan Kerja Variance Proportions Kemampuan Lingkungan Eigenvalue Condition Index (Constant) individu kerja 3.96.000.00.00.00.00.023 3.48.03.92..0.03 7.643.8.02.80.03.003 35.069.79.05.08.96 Re siduals Statis tics a Minimum Maximum Mean Std. Deviation N Predicted Value 3.44 4.46 3.9.94 32 Residual -.33 0.45.000.25 32 Std. Predicted Val ue -2.39 2.87.000.000 32 Std. Residual -2.622 3.297.000.992 32 a. Dependent Variable: Kepuasan Kerja

Normal P-P Plot of Regression Standardized Residual Dependent Variable: Kepuasan Kerja Charts.0 0.8 Expected Cum Prob 0.6 0.4 0.2 0.0 0.0 0.2 0.4 0.6 0.8.0 Observed Cum Prob

Kepuasan (Validitas) Item-Total Statistics Scale Mean if Scale Variance if Corrected Item- Squared Multiple Alpha if Item Total Deleted Q 43.5000 5.845.69.58.837 Q2 43.0667 7.995.667.4.88 Q3 43.7333 6.892.473.547.854 Q4 43.0000 7.24.64.486.844 Q5 43.9000 6.645.587.482.845 Q6 43.9000 8.438.383.332.858 Q7 43.9333 6.754.545.6.848 Q8 43.9000 6.62.625.585.842 Q9 44.0000 7.30.622.60.845 Q0 43.9000 6.62.694.624.838 Kepuasan (Reliabilitas) Reliability Statistics Alpha Alpha Based on Standardized Items N of Items.860.856 0

(Validitas) Item-Total Statistics Scale Mean if Scale Variance if Corrected Item- Squared Multiple Alpha if Item Total Deleted Q 26.7667 25.564.650.677.826 Q2 26.8000 25.407.462.420.856 Q3 26.6000 24.938.609.479.83 Q4 26.2000 26.77.686.923.826 Q5 26.333 26.20.735.927.820 Q6 26.4000 27.903.495.446.844 Q7 26.8667 25.085.539.500.842 (Reliabilitas) Reliability Statistics Alpha Alpha Based on Standardized Items N of Items.85.865 7

(Validitas) Item-Total Statistics Scale Mean if Scale Variance if Corrected Item- Squared Multiple Alpha if Item Total Deleted Q 34.667 3.730.470.365.808 Q2 34.2000 30.234.570.552.795 Q3 33.5667 36.875.404.344.83 Q4 33.5000 34.74.66.557.798 Q5 34.6000 33.352.495.476.803 Q6 33.4667 33.223.65.542.793 Q7 33.8000 33.82.550.565.799 Q8 34.2667 3.857.490.457.805 Q9 33.9000 33.955.432.390.809 Q0 34.333 3.844.529.458.799 (Reliabilitas) Reliability Statistics Alpha Alpha Based on Standardized Items N of Items.89.83 0

(Validitas) Item-Total Statistics Scale Mean if Scale Variance if Corrected Item- Squared Multiple Alpha if Item Total Deleted Q 27.000 8.852.447.384.787 Q2 27.0333 9.068.478.472.778 Q3 26.8667 8.602.550.646.764 Q4 26.7667 20.46.523.602.770 Q5 26.4000 20.869.636.595.762 Q6 27.5000 9.362.552.508.764 Q7 26.3333 2.86.44.282.785 Q8 26.4333 20.323.555.562.766 Q9 26.9000 9.62.525.577.742 (Reliabilitas) Reliability Statistics Alpha Alpha Based on Standardized Items N of Items.794.809 9