LAMPIRAN. Nama Perusahaan Responden sebagai sampel
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1 LAMPIRAN Nama Perusahaan Responden sebagai sampel NO NAMA PERUSAHAAN 1 CV ANUGERAH PERDANA 2 PT APAC INTI 3 PT ARMADA FINANCE 4 PT CHAROEN POKPHAN INDONESIA 5 PT GUMAYA GRAHA MULIA 6 PT KONIMEX 7 PT LIBRA PERMANA 8 PT SOLOBARU GRIYAJAYA 9 PT SUMBER BINTANG REJEKI 10 PT PONDOK SOLO PERMAI 11 KAP WARTONO & REKAN 12 KAP HANANTA BUDIANTO & REKAN CAB. SEMARANG 13 KAP SUGENG PAMUDJI 14 KAP BAYUDI WATU & REKAN 15 KAP RACHMAD WAHYUDI Pengumpulan dan Scoring Data NO P-SCORE UMUR JENIS KELAMIN (GENDER) MASA KERJA (PENGALAMAN) PENDIDIKAN AI AE AI AE AI AE AI AE AI AE W 2 W D3 2 S W 2 W S1 1 S P 1 P S1 1 S W 2 P S1 1 S P 1 P S1 1 S P 1 P S1 1 S W 2 W S1 1 S P 1 P S1 1 S W 2 P S1 1 S1 1
2 NO P-SCORE UMUR JENIS KELAMIN (GENDER) MASA KERJA (PENGALAMAN) PENDIDIKAN AI AE AI AE AI AE AI AE AI AE W 2 P D3 2 S W 2 W S1 1 S P 1 W S1 1 S W 2 W S1 1 S P 1 P S2 1 S P 1 W D1 2 S P 1 P D1 2 S W 2 P S1 1 S W 2 P D3 2 S W 2 P S1 1 S P 1 P S1 1 S W 2 W S1 1 S P 1 P S1 1 S P 1 W S2 1 S P 1 W S1 1 S P 1 W S1 1 S W 2 W S1 1 S P 1 P S1 1 S P 1 P S1 1 S P 1 W S1 1 S P 1 W S1 1 S P 1 W S1 1 S P 1 P S2 1 S W 2 P S1 1 S P 1 P S1 1 S P 1 P S1 1 S P 1 W S1 1 S P 1 W S1 1 S W 2 P S1 1 S W 2 P S1 1 S W 2 P S1 1 S W 2 P S1 1 S W 2 W S1 1 S2 1
3 NO P-SCORE UMUR JENIS KELAMIN (GENDER) MASA KERJA (PENGALAMAN) PENDIDIKAN AI AE AI AE AI AE AI AE AI AE P 1 P S1 1 S W 2 W S1 1 S P 1 W S1 1 S P 1 W S1 1 S P 1 P S1 1 S P 1 W D3 2 S P 1 W D3 2 S P 1 P S1 1 S1 1 *AI = Auditor Internal AE = Auditor Eskternal P = Pria W = Wanita Perhitungan P-Score AI dan AE P-Score AI AE Case 1 Score Paling penting Total Score Case 2 Score Paling penting Total Score Case 3 Score Paling penting Total Score Total P- SCORE
4 Hasil Uji Normalitas 1. Tabel Case Processing Summary P-Score AI dan AE Cases Valid Missing Total GROUP N Percent N Percent N Percent P-SCORE AI % 0.0% % AE % 0.0% % 2. Tabel Tests of Normality P-Score AI dan AE Kolmogorov-Smirnov a Shapiro-Wilk GROUP Statistic df Sig. Statistic Df Sig. P-SCORE AI * AE a. Lilliefors Significance Correction
5 3. Tabel Descriptive P-Score AI dan AE GROUP Statistic Std. Error PSCORE AI % Confidence Interval for Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum Maximum Range Interquartile Range 6.00 Skewness Kurtosis AE % Confidence Interval for Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum Maximum Range Interquartile Range Skewness Kurtosis Hasil Uji Hipotesis 4. Tabel Group Statistics P-Score AI dan AE GROUP N Std. Deviation Std. Error P-SCORE AI AE
6 5. Tabel Independent Samples Test P-Score AI dan AE P-SCORE Equal variances Equal variances not Levene's Test for Equality of Variances F Sig. t df Sig. (2- tailed) t-test for Equality of s 95% Confidence Interval of the Std. Error Lower Upper Tabel Group Statistics untuk Jenis Kelamin GENDER N Std. Deviation Std. Error P-SCORE PRIA WANITA Tabel Independent Samples Test untuk Jenis Kelamin Levene's Test for Equality of Variances t-test for Equality of s 95% Confidence Interval of the P-SCORE Equal variances Equal variances not F Sig. t df Sig. (2- tailed) Std. Error Lower Upper
7 8. Tabel Histrogram untuk Jenis Kelamin
8 9. Tabel Between- Subjects Factors untuk Umur Value Label N GROUP 1.00 AI AE 50 UMUR 1.00 TAHAP PEMELIHARAAN TAHAP STABILITAS TAHAP TRIAL TAHAP EKSPLORASI Tabel Tests of Between- Subjects Factors untuk Umur Dependent Variable:PSCORE Source Type III Sum of Squares df Square F Sig. Corrected Model a Intercept GROUP UMUR GROUP * UMUR Error Total Corrected Total a. R Squared =,291 (Adjusted R Squared =,246) 11. Tabel Between- Subjects Factors untuk Masa Kerja Value Label N GROUP 1.00 AI AE 50 UMUR 1.00 TAHAP PEMELIHARAAN TAHAP PERKEMBANGAN TAHAP LANJUTAN 34
9 12. Tabel Tests of Between- Subjects Effects untuk Masa Kerja Dependent Variable:PSCORE Source Type III Sum of Squares df Square F Sig. Corrected Model a Intercept GROUP MASA_KERJA GROUP * MASA_KERJA Error Total Corrected Total a. R Squared =,371 (Adjusted R Squared =,337) 13. Tabel Group Statistics untuk Tingkat Pendidikan PENDIDIKAN N Std. Deviation Std. Error P-SCORE SARJANA DIPLOMA Tabel Independent Samples Test untuk Tingkat Pendidikan P-SCORE Equal variances Equal variances not Levene's Test for Equality of Variances F Sig. t df Sig. (2- tailed) t-test for Equality of s Std. Error 95% Confidence Interval of the Lower Upper
10 15. Tabel Histogram untuk Tingkat Pendidikan
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