Correlations. Correlations

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1 LAMPIRAN 3 UJI VALIDITAS ketergantun ketergantun ketergantun ketergantun ketergantun gan1 gan2 gan3 gan4 gan5 total1 ketergantungan1 Pearson 1.470(**) (**) Sig. (2-tailed) ketergantungan2 Pearson.470(**) (**) Sig. (2-tailed) ketergantungan3 Pearson (*).684(**).737(**) Sig. (2-tailed) ketergantungan4 Pearson (*) 1.536(**).705(**) Sig. (2-tailed) ketergantungan5 Pearson (**).536(**) 1.804(**) Sig. (2-tailed) total1 Pearson.614(**).606(**).737(**).705(**).804(**) 1 * is significant at the 0.05 level (2-tailed). kepercayaan1 kepercayaan2 kepercayaan3 kepercayaan4 kepercayaan5 total2 kepercayaan1 Pearson 1.541(**).493(**).722(**) (**) Sig. (2-tailed) kepercayaan2 Pearson.541(**) 1.433(*).835(**).585(**).826(**) Sig. (2-tailed) kepercayaan3 Pearson.493(**).433(*) 1.718(**).710(**).806(**) Sig. (2-tailed) kepercayaan4 Pearson.722(**).835(**).718(**) 1.641(**).937(**) kepercayaan5 Pearson (**).710(**).641(**) 1.837(**) Sig. (2-tailed)

2 total2 Pearson.701(**).826(**).806(**).937(**).837(**) 1 * is significant at the 0.05 level (2-tailed). kemudahan1 kemudahan2 kemudahan3 kemudahan4 kemudahan5 total3 kemudahan1 Pearson 1.586(**) (**) Sig. (2-tailed) kemudahan2 Pearson.586(**) 1.660(**).460(*).825(**).900(**) Sig. (2-tailed) kemudahan3 Pearson (**) 1.574(**).781(**).833(**) Sig. (2-tailed) kemudahan4 Pearson (*).574(**) 1.520(**).724(**) Sig. (2-tailed) kemudahan5 Pearson (**).781(**).520(**) 1.875(**) Sig. (2-tailed) total3 Pearson.516(**).900(**).833(**).724(**).875(**) 1 Sig. (2-tailed) * is significant at the 0.05 level (2-tailed). kenyamanan1 kenyamanan2 kenyamanan3 kenyamanan4 kenyamanan5 total4 kenyamanan1 Pearson 1.736(**).878(**).563(**).531(**).880(**) Sig. (2-tailed) kenyamanan2 Pearson.736(**) 1.571(**).686(**).587(**).882(**) Sig. (2-tailed) kenyamanan3 Pearson.878(**).571(**) 1.554(**).731(**).846(**) Sig. (2-tailed) kenyamanan4 Pearson.563(**).686(**).554(**) 1.597(**).822(**) Sig. (2-tailed) kenyamanan5 Pearson.531(**).587(**).731(**).597(**) 1.779(**) Sig. (2-tailed)

3 total4 Pearson.880(**).882(**).846(**).822(**).779(**) 1 keuntungan1 keuntungan2 keuntungan3 keuntungan4 keuntungan5 total5 keuntungan1 Pearson 1.637(**).375(*) (*).522(**) Sig. (2-tailed) keuntungan2 Pearson.637(**) 1.637(**).674(**).637(**).852(**) keuntungan3 Pearson.375(*).637(**) 1.520(**) 1.000(**).901(**) Sig. (2-tailed) keuntungan4 Pearson (**).520(**) 1.520(**).794(**) Sig. (2-tailed) keuntungan5 Pearson.375(*).637(**) 1.000(**).520(**) 1.901(**) Sig. (2-tailed) total5 Pearson.522(**).852(**).901(**).794(**).901(**) 1 Sig. (2-tailed) * is significant at the 0.05 level (2-tailed). LAMPIRAN 4 UJI REABILITAS Statistics Item if Item if Item

4 ketergantungan ketergantungan ketergantungan ketergantungan ketergantungan Statistics Item if Item if Item kepercayaan kepercayaan kepercayaan kepercayaan kepercayaan Statistics Item if Item if Item kemudahan kemudahan kemudahan kemudahan kemudahan

5 Statistics Item if Item if Item kenyamanan kenyamanan kenyamanan kenyamanan kenyamanan Statistics Item if Item if Item keuntungan keuntungan keuntungan keuntungan keuntungan LAMPIRAN 5 HASIL UJI KOEFISIEN DETERMINASI Model Summary(b) Adjusted R Std. Error of Model R R Square Square the Estimate Durbin-Watson 1.818(a) a Predictors: (Constant), keuntungan, kenyamanan, kemudahan, kepercayaan b Dependent Variable: ketergantungan

6 LAMPIRAN 6 HASIL UJI F ANOVA(b) Model Sum of Squares df Mean Square F Sig. 1 Regression (a) Residual Total a Predictors: (Constant), keuntungan, kenyamanan, kemudahan, kepercayaan b Dependent Variable: ketergantungan LAMPIRAN 7 HASIL UJI T Coefficients(a) Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics Model B Std. Error Beta Tolerance VIF B Std. Error 1 (Constant) kepercayaan kemudahan kenyamanan keuntungan a Dependent Variable: ketergantungan

7 LAMPIRAN 8 HASIL UJI HETEROSKEDASITIAS LAMPIRAN 9 HASIL UJI NORMALITAS

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