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LAMPIRAN Lampiran 1 Daftar Perusahaan Sampel Penelitian No. Kode Kriteria Perusahaan 1 2 3 4 Sampel 1 ADES 1 2 AISA 2 3 ALTO 4 CEKA 5 DAVO 6 DLTA 3 7 ICBP 4 8 INDF 5 9 MLBI 6 10 MYOR 11 PSDN 7 12 ROTI 8 13 SKBM 14 SKLT 9 15 STTP 16 ULTJ 10 57

Lampiran 2 Data Penelitian TAHUN KODE DALAM PERSEN (%) WCTO CR ROA ADES 24.64 248.37 9.00 AISA 4.82 120.33 6.54 DLTA -2.10 88.18 16.64 ICBP -34.99 51.51 10.60 INDF 4.50 116.31 5.20 2009 MLBI -29.26 65.89 34.00 PSDN 21.00 156.27 12.00 ROTI 12.14 144.15 16.46 SKLT 14.98 189.03 6.50 ULTJ 24.76 211.63 7.33 ADES 13.75 151.14 10.00 AISA 7.63 128.50 3.92 DLTA 3.46 127.45 19.70 ICBP 32.31 259.80 15.50 INDF -16.61 20.36 9.00 2010 MLBI -3.56 94.50 39.00 PSDN 17.46 137.23 11.00 ROTI 21.18 229.91 17.56 SKLT 22.12 187.50 2.40 ULTJ 23.81 200.07 9.24 ADES 16.91 170.88 8.00 AISA 22.69 189.35 4.18 DLTA 0.29 102.11 20.84 ICBP 36.22 277.78 14.30 INDF 22.23 194.22 9.70 2011 MLBI -0.33 99.42 42.00 PSDN 23.58 155.05 11.00 ROTI 5.54 128.35 15.27 SKLT 20.17 169.79 2.80 ULTJ 13.37 147.66 6.27 58

TAHUN KODE DALAM PERSEN (%) WCTO CR ROA ADES 23.87 194.16 21.00 AISA 8.48 126.95 6.56 DLTA -3.33 79.32 27.92 ICBP 35.21 272.00 13.80 INDF 22.61 204.89 8.50 2012 MLBI -22.71 58.05 66.00 PSDN 21.03 160.67 10.00 ROTI 2.02 112.46 12.38 SKLT 14.77 141.55 3.20 ULTJ 24.93 201.82 17.74 ADES 19.96 180.96 13.00 AISA 20.88 175.03 6.91 DLTA -7.60 58.54 30.50 ICBP 31.15 241.06 11.40 INDF 16.64 166.73 5.00 2013 MLBI -0.91 97.75 67.00 PSDN 22.54 167.57 8.00 ROTI 2.40 113.64 8.67 SKLT 9.74 123.39 3.80 ULTJ 33.07 246.23 15.05 59

Lampiran 3 Uji Asumsi Klasik dan Analisis Regresi Linear Berganda REGRESSION /DESCRIPTIVES MEAN STDDEV CORR SIG N /MISSING LISTWISE /STATISTICS COEFF OUTS BCOV R ANOVA COLLIN TOL /CRITERIA=PIN(.05) POUT(.10) /NOORIGIN /DEPENDENT roa /METHOD=ENTER wcto cr /SCATTERPLOT=(*ZPRED,*SRESID) /RESIDUALS DURBIN HISTOGRAM(ZRESID) NORMPROB(ZRESID) /SAVE RESID. Regression Output Created Comments Input Missing Value Handling Notes Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used DataSet0 30-JAN-2015 09:17:44 50 User-defined missing values are treated as missing. Statistics are based on cases with no missing values for any variable used. 60

REGRESSION /DESCRIPTIVES MEAN STDDEV CORR SIG N /MISSING LISTWISE /STATISTICS COEFF OUTS BCOV R ANOVA COLLIN TOL Syntax Resources Variables Created or Modified /CRITERIA=PIN(.05) POUT(.10) /NOORIGIN /DEPENDENT roa /METHOD=ENTER wcto cr /SCATTERPLOT=(*Z PRED,*SRESID) /RESIDUALS DURBIN HISTOGRAM(ZRESI D) NORMPROB(ZRESI D) /SAVE RESID. Processor Time 00:00:04.91 Elapsed Time 00:00:10.10 Memory Required 1644 bytes Additional Memory Required for 904 bytes Residual Plots Unstandardized RES_1 Residual [DataSet0] Descriptive Statistics 61

Mean Std. Deviation roa 15.0476 13.82313 50 wcto 11.9489 15.81248 50 cr 153.710 6 60.16001 50 N Pearson Correlation Sig. (1-tailed) N Correlations roa wcto cr roa 1.000 -.467 -.383 wcto -.467 1.000.918 cr -.383.918 1.000 roa..000.003 wcto.000..000 cr.003.000. roa 50 50 50 wcto 50 50 50 cr 50 50 50 Mode l Variables Entered/Removed a Variables Entered Variables Removed Method 1 cr, wcto b. Enter a. Dependent Variable: roa b. All requested variables entered. Mode l R R Square Model Summary b Adjusted R Square Std. Error of the Estimate Durbin- Watson 1.481 a.232.199 12.37278 2.105 62

a. Predictors: (Constant), cr, wcto b. Dependent Variable: roa ANOVA a Model 1 Sum of Squares df Mean Square F Sig. Regression 2167.839 2 1083.920 7.080.002 b Residual 7195.032 47 153.086 Total 9362.871 49 a. Dependent Variable: roa b. Predictors: (Constant), cr, wcto Coefficients a Model 1 Model 1 Unstandardized Coefficients Standardize d Coefficients B Std. Error Beta t Sig. (Constant) 12.520 8.570 1.461.151 wcto -.640.281 -.732-2.273.028 cr.066.074.288.895.376 Coefficients a (Constant) a. Dependent Variable: roa Collinearity Statistics Tolerance VIF wcto.158 6.337 cr.158 6.337 Coefficient Correlations a Model cr wcto 1 Correlations cr 1.000 -.918 wcto -.918 1.000 Covariances cr.005 -.019 wcto -.019.079 a. Dependent Variable: roa 63

Mode l 1 Collinearity Diagnostics a Dimension Eigenvalue Condition Index Variance Proportions (Constant) wcto cr 1 2.586 1.000.01.01.00 2.401 2.540.04.15.00 3.013 14.356.95.84 1.00 a. Dependent Variable: roa Residuals Statistics a Minimum Maximum Mean Std. Deviation Predicted Value 7.6620 38.3104 15.0476 6.65144 50 Std. Predicted Value -1.110 3.497.000 1.000 50 Standard Error of Predicted Value 1.836 7.171 2.815 1.133 50 Adjusted Predicted Value 6.8110 52.3260 15.1888 7.75846 50 Residual -27.71040 47.42820.00000 12.11765 50 Std. Residual -2.240 3.833.000.979 50 Stud. Residual -2.748 3.908 -.005 1.034 50 Deleted Residual -41.72604 49.29504 -.14125 13.62861 50 Stud. Deleted Residual -2.968 4.706.015 1.132 50 Mahal. Distance.098 15.479 1.960 2.925 50 Cook's Distance.000 1.273.047.193 50 Centered Leverage Value.002.316.040.060 50 a. Dependent Variable: roa N Charts 64

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NPar Tests Output Created Comments Input Missing Value Handling Syntax Resources Notes Active Dataset Filter Weight Split File N of Rows in Working Data File DataSet0 30-JAN-2015 09:18:51 50 User-defined missing Definition of Missing values are treated as missing. Statistics for each test are based on all Cases Used cases with valid data for the variable(s) used in that test. NPAR TESTS /K- S(NORMAL)=RES_1 /MISSING ANALYSIS. Processor Time 00:00:00.00 Elapsed Time 00:00:00.08 Number of Cases Allowed a 196608 a. Based on availability of workspace memory. 68

[DataSet0] One-Sample Kolmogorov-Smirnov Test Unstandardi zed Residual N 50 Mean 0E-7 Normal Parameters a,b Std. 12.1176477 Deviation 9 Absolute.150 Most Extreme Positive.150 Differences Negative -.117 Kolmogorov-Smirnov Z 1.063 Asymp. Sig. (2-tailed).208 a. Test distribution is Normal. b. Calculated from data. 69

Descriptives Output Created Comments Input Missing Value Handling Syntax Notes Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used DataSet0 30-JAN-2015 09:20:25 50 User defined missing values are treated as missing. All non-missing data are used. DESCRIPTIVES VARIABLES=wcto cr roa Resources /STATISTICS=MEAN STDDEV MIN MAX. Processor Time 00:00:00.02 Elapsed Time 00:00:00.02 [DataSet0] Descriptive Statistics N Minimum Maximum Mean Std. Deviation wcto 50-34.99 36.22 11.9489 15.81248 cr 50 20.36 277.78 153.7106 60.16001 roa 50 2.40 67.00 15.0476 13.82313 Valid N (listwise) 50 70