LAMPIRAN 1 : DATA HASIL PENELITIAN

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1 LAMPIRAN 1 : DATA HASIL PENELITIAN SKPD SDM KOMUNIKASI SARANA KOMITMEN MOTIVASI RATA , , , , , , , , , , , , , , , , , , , , , , , , , , ,5

2 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

3 KINERJASKPD11 Pearson Correlation.805 ** SKORTOTAL Pearson Correlation 1 Sig. (2-tailed) Reliability Statistics Cronbach's Alpha N of Items *. 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 ** Sig. (2-tailed) SDM2 Pearson Correlation ** Sig. (2-tailed) * ** SDM3 Pearson Correlation Sig. (2-tailed) * SDM4 Pearson Correlation * Sig. (2-tailed) SKORTOTAL Pearson Correlation ** **.562 ** **. Correlation is significant at the 0.01 level (2-tailed). *. Correlation is significant at the 0.05 level (2-tailed). * 1

4 Reliability Statistics Cronbach's Alpha N of Items 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 **

5 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 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

6 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)

7 Reliability Statistics Cronbach's Alpha N of Items 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 **

8 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 Uji Validitas dan Reliabilitas Motivasi Kerja Correlations SKORTOTAL MOTIVASI1 Pearson Correlation.359 * Sig. (2-tailed).048 MOTIVASI2 Pearson Correlation.359 * Sig. (2-tailed).048

9 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 **

10 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

11 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 a. Lilliefors Significance Correction *. This is a lower bound of the true significance.

12 2. Uji Multikolinieritas dengan Uji VIF Collinearity Model Statistics Tolerance VIF 1 (Constant) SDM KOMUNIKASI SARANA KOMITMEN MOTIVASI a. Dependent Variable: SKPD 3. Uji Heteroskedastisitas dengan Grafik Plot

13 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 SDM KOMUNIKASI SARANA KOMITME MOTIVASI Valid N (listwise) 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 Model Summary b Adjusted R Square Std. Error of the Estimate Durbin-Watson a. Predictors: (Constant), MOTIVASI, SARANA, SDM, KOMITMEN, KOMUNIKASI b. Dependent Variable: SKPD

14 ANOVA Model Sum of Squares df Mean Square F Sig. 1 Regression a Residual Total 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) SDM KOMUNIKASI SARANA KOMITMEN MOTIVASI 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 a. Dependent Variable: SKPD Residuals Statistics a Minimum Maximum Mean Std. Deviation N Predicted Value Residual Std. Predicted Value Std. Residual a. Dependent Variable: SKPD

15 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 a Residual Total a. Predictors: (Constant), SKPD b. Dependent Variable: AbsRes_1 Coefficientsa Model Unstandardized Coefficients B Std. Error Beta Standardized Coefficients t Sig. 1 (Constant) SKPD a. Dependent Variable: AbsRes_1

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