Perpustakaan Unika LAMPIRAN

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1 LAMPIRAN

2 LAMPIRAN DATA VARIABEL PENELITIAN No Kode Tahun ROA DER LOG_ASSET AGE OPAD KULAD OUTSIDER EXTRA OPERA AUDIT DELAY ADES AISA AMFG AQUA AUTO BATI BRAM BRNA BRPT BTON BUDI CLPI CTBN DAVO DLTA DSUC DVLA DYNA ERTX ETWA FASW FMII FPNI GDYR GGRM

3 26 GJTL HDTX HEXA HMSP IKAI IMAS INDF INDR INKP INTP JECC JKSW JPRS KBLM KDSI KICI KKGI KLBF KONI LAPD LMSH LPIN LTLS MDRN MERK MLIA MRAT MYRX PICO

4 55 PRAS PTSP PYFA RDTX RICY SCCO SIMM SIPD SMAR SMGR SPMA SQBI SSTM STTP SUGI SULI TBLA TBMS TCID TFCO TIRA TKIM TOTO TRST TSPC TURI UNIC UNTR ADES

5 84 AISA AMFG AQUA AUTO BATI BRAM BRNA BRPT BTON BUDI CLPI CTBN DAVO DLTA DSUC DVLA DYNA ERTX ETWA FASW FMII FPNI GDYR GGRM GJTL HDTX HEXA HMSP IKAI

6 3 IMAS INDF INDR INKP INTP JECC JKSW JPRS KBLM KDSI KICI KKGI KLBF KONI LAPD LMSH LPIN LTLS MDRN MERK MLIA MRAT MYRX PICO PRAS PTSP PYFA RDTX RICY

7 42 SCCO SIMM SIPD SMAR SMGR SPMA SQBI SSTM STTP SUGI SULI TBLA TBMS TCID TFCO TIRA TKIM TOTO TRST TSPC TURI UNIC UNTR ADES AISA AMFG AQUA AUTO BATI

8 7 BRAM BRNA BRPT BTON BUDI CLPI CTBN DAVO DLTA DSUC DVLA DYNA ERTX ETWA FASW FMII FPNI GDYR GGRM GJTL HDTX HEXA HMSP IKAI IMAS INDF INDR INKP INTP

9 200 JECC JKSW JPRS KBLM KDSI KICI KKGI KLBF KONI LAPD LMSH LPIN LTLS MDRN MERK MLIA MRAT MYRX PICO PRAS PTSP PYFA RDTX RICY SCCO SIMM SIPD SMAR SMGR

10 229 SPMA SQBI SSTM STTP SUGI SULI TBLA TBMS TCID TFCO TIRA TKIM TOTO TRST TSPC TURI UNIC UNTR

11 LAMPIRAN 2 ANALISIS DESKRIPTIF Descriptive Statistics ROA DER LOG_ASET AGE OUTSIDER DELAY Valid N (listwise) N Minimum Maximum Mean Std. Deviation 245 -,26,90,058, ,35 827,93 5, , ,7 3,7,9025, ,00 7,00 9,9388 3, ,0 4,66,4274 2, ,36 20, Valid 0 Total OPAD Cumulative Frequency Percent Valid Percent Percent ,9 95,9 95,9 0 4, 4, 00, ,0 00,0 Valid 0 Total KULAD Cumulative Frequency Percent Valid Percent Percent 45 59,2 59,2 59, ,8 40,8 00, ,0 00,0 Valid,00,00 Total EXTRA Cumulative Frequency Percent Valid Percent Percent 28 89,0 89,0 89,0 27,0,0 00, ,0 00,0

12 Valid 0 Total OPERA Cumulative Frequency Percent Valid Percent Percent 66 26,9 26,9 26, , 73, 00, ,0 00,0

13 LAMPIRAN 3 UJI NORMALITAS One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Most Extreme Differences Kolmogorov-Smirnov Z Asymp. Sig. (2-tailed) Mean Std. Deviation Absolute Positive Negative a. Test distribution is Normal. b. Calculated from data. Unstandardiz ed Residual 246, , ,02,02 -,077,606,02 Case Number Casewise Diagnostics a Std. Residual DELAY 3, , a. Dependent Variable: DELAY NPar Tests One-Sample Kolmogorov-Smirnov Test N Normal Parameters a,b Most Extreme Differences Kolmogorov-Smirnov Z Asymp. Sig. (2-tailed) Mean Std. Deviation Absolute Positive Negative a. Test distribution is Normal. b. Calculated from data. Unstandardiz ed Residual 245, , ,086,084 -,086,339,055

14 Histogram 80 Dependent Variable: DELAY Frequency ,50 5,00 4,50 4,00 3,50 3,00 2,50 2,00,50,00,50 0,00 -,50 -,00 -,50-2,00-2,50 Std. Dev =,98 Mean = 0,00 N = 246,00 Regression Standardized Residual

15 Histogram 40 Dependent Variable: DELAY Frequency 0 0 3,75 3,25 2,75 2,25,75,25,75,25 -,25 -,75 -,25 -,75-2,25-2,75 Std. Dev =,98 Mean = 0,00 N = 245,00 Regression Standardized Residual

16 LAMPIRAN 4 ANALISIS REGRESI LINEAR BERGANDA Descriptive Statistics DELAY ROA DER LOG_ASET AGE OPAD KULAD OUTSIDER EXTRA OPERA Mean Std. Deviation N 75,36 20, ,058, , , ,9025, ,9388 3, ,04,98 245,4, ,4274 2, ,02, ,73, Pearson Correlation Sig. (-tailed) N DELAY ROA DER LOG_ASET AGE OPAD KULAD OUTSIDER EXTRA OPERA DELAY ROA DER LOG_ASET AGE OPAD KULAD OUTSIDER EXTRA OPERA DELAY ROA DER LOG_ASET AGE OPAD KULAD OUTSIDER EXTRA OPERA Correlations DELAY ROA DER LOG_ASET AGE OPAD KULAD OUTSIDER EXTRA OPERA,000 -,64,045,027 -,088,25 -,27,00,99 -,043 -,64,000 -,06,7,067 -,409,086 -,009 -,0 -,08,045 -,06,000 -,094,04 -,004 -,032 -,00 -,09,052,027,7 -,094,000,409,034,8,090,067,39 -,088,067,04,409,000 -,029 -,028,02,083,289,25 -,409 -,004,034 -,029,000 -,045 -,06,9 -,04 -,27,086 -,032,8 -,028 -,045,000 -,060 -,07,092,00 -,009 -,00,090,02 -,06 -,060,000 -,02,05,99 -,0 -,09,067,083,9 -,07 -,02,000 -,05 -,043 -,08,052,39,289 -,04,092,05 -,05,000.,005,242,335,085,025,023,436,00,254,005.,399,004,48,000,09,447,432,387,242,399.,072,42,472,3,439,383,208,335,004,072.,000,299,002,08,48,000,085,48,42,000.,328,334,424,098,000,025,000,472,299,328.,240,403,00,42,023,09,3,002,334,240.,73,048,075,436,447,439,08,424,403,73.,424,22,00,432,383,48,098,00,048,424.,25,254,387,208,000,000,42,075,22,

17 Model Variables Entered/Removed b Variables Variables Entered Removed Method OPERA, OPAD, DER, OUTSIDER, KULAD,. Enter EXTRA, AGE, ROA, LOG_ASET a a. All requested variables entered. b. Dependent Variable: DELAY Model Model Summary b Adjusted Std. Error of Durbin-W R R Square R Square the Estimate atson,36 a,00,066 9,697,935 a. Predictors: (Constant), OPERA, OPAD, DER, OUTSIDER, KULAD, EXTRA, AGE, ROA, LOG_ASET b. Dependent Variable: DELAY Model Regression Residual Total ANOVA b Sum of Squares df Mean Square F Sig. 034, ,08 2,903,003 a 969, , a. Predictors: (Constant), OPERA, OPAD, DER, OUTSIDER, KULAD, EXTRA, AGE, ROA, LOG_ASET b. Dependent Variable: DELAY Model (Constant) ROA DER LOG_ASET AGE OPAD KULAD OUTSIDER EXTRA OPERA Unstandardized Coefficients a. Dependent Variable: DELAY Standardized Coefficients Coefficients a Correlations t Sig. Zero-order Partial Part Collinearity Statistics B Std. Error Beta Tolerance VIF 35,45 24,440,449,49-20,622 8,898 -,62-2,38,02 -,64 -,49 -,43,785,274,022,023,059,938,349,045,06,058,982,09 4,43 2,207,38,877,062,027,22,6,706,47 -,756,366 -,44-2,063,040 -,088 -,33 -,28,784,276,930 7,85,009,29,897,25,008,008,783,277-4,870 2,656 -,8 -,834,068 -,27 -,9 -,3,929,076 -,032,480 -,004 -,067,946,00 -,004 -,004,982,09 2,053 4,58,86 2,899,004,99,86,79,934,07 -,393 3,085 -,030 -,452,652 -,043 -,029 -,028,845,83

18 LAMPIRAN 5 UJI HETEROSKEDASTISITAS Model Variables Entered/Removed b Variables Variables Entered Removed Method OPERA, OPAD, DER, OUTSIDER, KULAD, EXTRA, AGE, ROA, LOG_ASET a. Enter a. All requested variables entered. b. Dependent Variable: ABS_RES Model Model Summary Adjusted Std. Error of R R Square R Square the Estimate,23 a,045,009 2,89808 a. Predictors: (Constant), OPERA, OPAD, DER, OUTSIDER, KULAD, EXTRA, AGE, ROA, LOG_ASET Model Regression Residual Total ANOVA b Sum of Squares df Mean Square F Sig. 852, ,799,237,273 a 39094, , , a. Predictors: (Constant), OPERA, OPAD, DER, OUTSIDER, KULAD, EXTRA, AGE, ROA, LOG_ASET b. Dependent Variable: ABS_RES

19 Model (Constant) ROA DER LOG_ASET AGE OPAD KULAD OUTSIDER EXTRA OPERA Unstandardized Coefficients a. Dependent Variable: ABS_RES Coefficients a Standardized Coefficients B Std. Error Beta t Sig. -7,026 6,004 -,439,66 7,236 5,827,089,242,26 -,008,05 -,032 -,505,64 2,25,445,2,47,43 -,254,240 -,076 -,060,290 6,408 4,705,098,362,75,474,739,056,848,397 -,338,34 -,069 -,076,283-2,256 2,723 -,055 -,828,408-2,69 2,020 -,092 -,332,84

20 Scatterplot Dependent Variable: DELAY 4 Regression Studentized Residual Regression Standardized Predicted Value

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