LAMPIRAN 1 : DATA HASIL PENELITIAN

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LAMPIRAN 1 : DATA HASIL PENELITIAN SKPD SDM KOMUNIKASI SARANA KOMITMEN MOTIVASI RATA 43 15 74 42 64 78 52,6666667 47 14 66 40 50 80 49,5 55 15 61 40 56 87 52,3333333 49 12 50 41 58 87 49,5 44 12 49 30 53 85 45,5 42 15 67 40 68 90 53,6666667 41 15 49 30 62 95 48,6666667 37 17 46 37 53 80 45 38 13 54 38 60 80 47,1666667 46 14 40 37 68 62 44,5 38 12 54 38 57 81 46,6666667 52 17 70 47 62 84 55,3333333 47 16 72 22 56 80 48,8333333 46 14 40 37 68 62 44,5 38 12 60 38 57 81 47,6666667 52 17 70 47 62 84 55,3333333 43 10 65 40 64 85 51,1666667 46 15 40 37 50 62 41,6666667 38 14 60 38 68 81 49,8333333 52 17 70 47 57 84 54,5 43 15 67 39 62 80 51 46 15 40 32 68 62 43,8333333 38 14 60 37 68 81 49,6666667 52 18 70 38 57 84 53,1666667 44 12 70 47 62 62 49,5 46 12 68 27 62 81 49,3333333 38 14 40 32 68 84 46 52 15 60 37 57 85 51 46 15 40 38 62 62 43,8333333 38 14 60 47 46 81 47,6666667 52 17 70 34 46 84 50,5

LAMPIRAN 2 : UJI KUALITAS DATA 1. Uji Validitas dan Reliabilitas Kinerja SKPD Correlations SKORTOTAL KINERJASKPD1 Pearson Correlation.564 ** Sig. (2-tailed).001 KINERJASKPD2 Pearson Correlation.805 ** KINERJASKPD3 Pearson Correlation.690 ** KINERJASKPD4 Pearson Correlation.399 * Sig. (2-tailed).026 KINERJASKPD5 Pearson Correlation.570 ** Sig. (2-tailed).001 KINERJASKPD6 Pearson Correlation.344 Sig. (2-tailed).058 KINERJASKPD7 Pearson Correlation.690 ** KINERJASKPD8 Pearson Correlation.344 Sig. (2-tailed).058 KINERJASKPD9 Pearson Correlation.564 ** Sig. (2-tailed).001 KINERJASKPD10 Pearson Correlation.474 ** Sig. (2-tailed).007

KINERJASKPD11 Pearson Correlation.805 ** SKORTOTAL Pearson Correlation 1 Sig. (2-tailed) Reliability Statistics Cronbach's Alpha N of Items.738 12 *. Correlation is significant at the 0.05 level (2-tailed). **. Correlation is significant at the 0.01 level (2-tailed). 2. Uji Validitas dan Reliabilitas Kualitas Sumber Daya Manusia Correlations SKOR TOTAL SDM1 Pearson Correlation 1 -.005.221.196.644 ** Sig. (2-tailed).977.231.290.000 31 31 31 31 SDM2 Pearson Correlation -.005 1 -.091 -.270.521 ** Sig. (2-tailed).977.625.141.003 31 31 31 31 * ** SDM3 Pearson Correlation.221 -.091 1.418.562 Sig. (2-tailed).231.625.019.001 31 31 31 31 * SDM4 Pearson Correlation.196 -.270.418 1.404 * Sig. (2-tailed).290.141.019.024 31 31 31 31 SKORTOTAL Pearson Correlation.644.521 ** **.562 **.404.003.001.024 31 31 31 31 **. Correlation is significant at the 0.01 level (2-tailed). *. Correlation is significant at the 0.05 level (2-tailed). * 1

Reliability Statistics Cronbach's Alpha N of Items.652 5 3. Uji Validitas dan Reliabilitas Komunikasi Correlations SKORTOTAL KOMUNIKASI1 Pearson Correlation.485 ** Sig. (2-tailed).006 KOMUNIKASI2 Pearson Correlation.782 ** KOMUNIKASI3 Pearson Correlation.700 ** KOMUNIKASI4 Pearson Correlation.806 ** KOMUNIKASI5 Pearson Correlation.742 ** KOMUNIKASI6 Pearson Correlation.805 ** KOMUNIKASI7 Pearson Correlation.822 ** KOMUNIKASI8 Pearson Correlation.623 ** KOMUNIKASI9 Pearson Correlation.642 ** KOMUNIKASI10 Pearson Correlation.703 **

KOMUNIKASI11 Pearson Correlation.642 ** KOMUNIKASI12 Pearson Correlation.808 ** KOMUNIKASI13 Pearson Correlation.361 * Sig. (2-tailed).046 KOMUNIKASI14 Pearson Correlation.806 ** KOMUNIKASI15 Pearson Correlation.806 ** KOMUNIKASI16 Pearson Correlation -.039 Sig. (2-tailed).837 KOMUNIKASI17 Pearson Correlation.805 ** SKORTOTAL Pearson Correlation 1 Sig. (2-tailed) **. Correlation is significant at the 0.01 level (2-tailed). *. Correlation is significant at the 0.05 level (2-tailed). Reliability Statistics Cronbach's Alpha N of Items.760 18

4. Uji Validitas dan Reliabilitas Sarana Pendukung Correlations SKORTOTAL SARANA1 Pearson Correlation.573 ** Sig. (2-tailed).001 SARANA2 Pearson Correlation.664 ** SARANA3 Pearson Correlation.664 ** SARANA4 Pearson Correlation.682 ** SARANA5 Pearson Correlation.720 ** SARANA6 Pearson Correlation.594 ** SARANA7 Pearson Correlation.540 ** Sig. (2-tailed).002 SARANA8 Pearson Correlation.594 ** SARANA9 Pearson Correlation.662 ** SARANA10 Pearson Correlation.662 ** SKORTOTAL Pearson Correlation 1 Sig. (2-tailed)

Reliability Statistics Cronbach's Alpha N of Items.752 11 5. Uji Validitas dan Reliabilitas Komitmen Organisasi Correlations SKORTOTAL KOMITMEN1 Pearson Correlation.760 ** KOMITMEN2 Pearson Correlation.411 * Sig. (2-tailed).022 KOMITMEN3 Pearson Correlation.411 * Sig. (2-tailed).022 KOMITMEN4 Pearson Correlation.698 ** KOMITMEN5 Pearson Correlation.760 ** KOMITMEN6 Pearson Correlation.339 Sig. (2-tailed).062 KOMITMEN7 Pearson Correlation.771 ** KOMITMEN8 Pearson Correlation.601 ** KOMITMEN9 Pearson Correlation.771 ** KOMITMEN10 Pearson Correlation.601 **

KOMITMEN11 Pearson Correlation.736 ** KOMITMEN12 Pearson Correlation.698 ** KOMITMEN13 Pearson Correlation.675 ** KOMITMEN14 Pearson Correlation.698 ** KOMITMEN15 Pearson Correlation.675 ** SKORTOTAL Pearson Correlation 1 Sig. (2-tailed) *. Correlation is significant at the 0.05 level (2-tailed). **. Correlation is significant at the 0.01 level (2-tailed). Reliability Statistics Cronbach's Alpha N of Items.652 5 6. Uji Validitas dan Reliabilitas Motivasi Kerja Correlations SKORTOTAL MOTIVASI1 Pearson Correlation.359 * Sig. (2-tailed).048 MOTIVASI2 Pearson Correlation.359 * Sig. (2-tailed).048

MOTIVASI3 Pearson Correlation.377 * Sig. (2-tailed).037 MOTIVASI4 Pearson Correlation.851 ** MOTIVASI5 Pearson Correlation.851 ** MOTIVASI6 Pearson Correlation.847 ** MOTIVASI7 Pearson Correlation.851 ** MOTIVASI8 Pearson Correlation.359 * Sig. (2-tailed).048 MOTIVASI9 Pearson Correlation.851 ** MOTIVASI10 Pearson Correlation.359 * Sig. (2-tailed).048 MOTIVASI11 Pearson Correlation.939 ** MOTIVASI12 Pearson Correlation.868 ** MOTIVASI13 Pearson Correlation.430 * Sig. (2-tailed).016 MOTIVASI14 Pearson Correlation.315 Sig. (2-tailed).084 MOTIVASI15 Pearson Correlation.868 **

MOTIVASI16 Pearson Correlation.430 * Sig. (2-tailed).016 MOTIVASI17 Pearson Correlation.315 Sig. (2-tailed).084 MOTIVASI18 Pearson Correlation.529 ** Sig. (2-tailed).002 MOTIVASI19 Pearson Correlation.948 ** MOTIVASI20 Pearson Correlation.948 ** SKORTOTAL Pearson Correlation 1 Sig. (2-tailed) **. Correlation is significant at the 0.01 level (2-tailed). *. Correlation is significant at the 0.05 level (2-tailed). Reliability Statistics Cronbach's Alpha N of Items.756 21

LAMPIRAN 3 : UJI ASUMSI KLASIK 1. Uji Normalitas dengan Uji One Sample Kolmogorov-Smirnov Tests of Normality Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig. * RATA.084 31.200.977 31.717 a. Lilliefors Significance Correction *. This is a lower bound of the true significance.

2. Uji Multikolinieritas dengan Uji VIF Collinearity Model Statistics Tolerance VIF 1 (Constant) SDM.943 1.061 KOMUNIKASI.678 1.475 SARANA.882 1.134 KOMITMEN.937 1.067 MOTIVASI.747 1.338 a. Dependent Variable: SKPD 3. Uji Heteroskedastisitas dengan Grafik Plot

LAMPIRAN 4 : HASIL PENGOLAHAN DATA DENGAN SPSs 1. Uji Korelasi Descriptive Statistics N Minimum Maximum Mean Std. Deviation Kurtosis Statistic Statistic Statistic Statistic Statistic Statistic Std. Error SKPD 31 3.36 5.00 4.0733.48923-1.078.821 SDM 31 2.50 4.50 3.6048.47773 -.318.821 KOMUNIKASI 31 2.35 4.35 3.4194.68477-1.249.821 SARANA 31 2.20 4.70 3.7871.59033.795.821 KOMITME 3.07 4.53 3.9806.43485 -.466.821 MOTIVASI 31 3.10 4.75 3.9581.45882.187.821 Valid N (listwise) 31 2. Regression : Kualitas SDM, Komunikasi, Sarana Pendukung, Komitmen Organisasi dan Motivasi Kerja Terhadap Kinerja SKPD Variables Entered/Removed b Variables Model Entered 1 MOTIVASI, SARANA, SDM, KOMITMEN, KOMUNIKASI Variables Removed a. All requested variables entered. b. Dependent Variable: SKPD Method. Enter Model R R Square 1 a.532.283 Model Summary b Adjusted R Square Std. Error of the Estimate Durbin-Watson.139 4.992 1.989 a. Predictors: (Constant), MOTIVASI, SARANA, SDM, KOMITMEN, KOMUNIKASI b. Dependent Variable: SKPD

ANOVA Model Sum of Squares df Mean Square F Sig. 1 Regression 245.792 5 49.158 1.972.118 a Residual 623.047 25 24.922 Total 868.839 30 a. Predictors: (Constant), MOTIVASI, SARANA, SDM, KOMITMEN, KOMUNIKASI b. Dependent Variable: SKPD b Coefficients a Model Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics B Std. Error Beta Tolerance VIF 1 (Constant) 33.766 16.136 2.093.047 SDM 1.112.491.395 2.264.032.943 1.061 KOMUNIKASI.123.095.266 1.295.207.678 1.475 SARANA.020.164.022.123.903.882 1.134 KOMITMEN -.097.144 -.118 -.673.507.937 1.067 MOTIVASI -.090.115 -.153 -.783.441.747 1.338 a. Dependent Variable: SKPD Collinearity Diagnostics a Model Di Men sion Eigen value Condition Index (Cons tant) SDM Variance Proportions KOMUNI SARANA KASI KOMIT MEN MOTI VASI 1 1 5.921 1.000.00.00.00.00.00.00 2.031 13.807.01.01.53.00.09.00 3.020 17.166.00.03.00.78.01.08 4.016 19.406.00.71.04.00.16.02 5.010 24.808.00.06.40.09.24.54 6.002 50.118.99.19.02.12.50.36 a. Dependent Variable: SKPD Residuals Statistics a Minimum Maximum Mean Std. Deviation N Predicted Value 39.84 50.08 44.81 2.862 31 Residual -9.742 9.496.000 4.557 31 Std. Predicted Value -1.736 1.843.000 1.000 31 Std. Residual -1.952 1.902.000.913 31 a. Dependent Variable: SKPD

3. Regression : Motivai Kerja memoderasi Kualitas SDM, Komunikasi, Sarana Pendukung, Komitmen Organisasi Terhadap Kinerja SKPD ANOVA b Model Sum of Squares df Mean Square F Sig. 1 Regression.003 1.003.000.992 a Residual 683.493 29 23.569 Total 683.496 30 a. Predictors: (Constant), SKPD b. Dependent Variable: AbsRes_1 Coefficientsa Model Unstandardized Coefficients B Std. Error Beta Standardized Coefficients t Sig. 1 (Constant) 6.312 7.431.849.403 SKPD -.002.165 -.002 -.011.992 a. Dependent Variable: AbsRes_1