LAMPIRAN. NO Kode Perusahaan Nama Perusahaan. 1 ADRO Adaro Energy Tbk. 2 BSSR Baramulti Suksessarana Tbk. 3 GEMS Golden Energy Mines Tbk

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1 110 LAMPIRAN Lampiran 1 Daftar Perusahaan Sub Sektor Batubara NO Kode Perusahaan Nama Perusahaan 1 ADRO Adaro Energy Tbk 2 BSSR Baramulti Suksessarana Tbk 3 GEMS Golden Energy Mines Tbk 4 KKGI Resource Alam Indonesia Tbk 5 MYOH Samindo Resource Tbk 6 ITMG Indo Tambangraya Megah Tbk 7 PTBA Tambang Batubara Bukit Asam Tbk 8 TOBA Toba Bara Sejahtra Tbk

2 111 Lampiran 2 Perhitungan Variabel 2012 ADRO BSSR KKGI GEMS IN ,07465E+12 OUT ,76015E+12 VA ,14497E+11 HC ,35472E+11 CE ,0804E+12 SC ,79024E , , , , MYOH ITMG PTBA TOBA IN 1,7985E OUT 1,62384E VA 1,74665E HC CE 3,07207E SC 1,17799E , , , , ADRO BSSR KKGI GEMS IN ,63166E+12 OUT ,34397E+12 VA ,87692E+11 CE ,36827E+11 HC ,13924E+12 SC ,50865E , , , ,

3 MYOH ITMG PTBA TOBA IN 2,461E OUT 1,97645E VA 4,84546E CE 2,74547E HC 9,56009E SC 2,09999E , , , , ADRO BSSR KKGI GEMS IN OUT VA CE HC SC , , , , MYOH ITMG PTBA TOBA IN OUT VA CE HC SC , , , ,

4 ADRO BSSR KKGI GEMS IN OUT VA CE HC SC , , , , MYOH ITMG PTBA TOBA IN OUT VA CE HC SC , , , , ADRO BSSR KKGI GEMS IN OUT VA CE HC SC , , , ,

5 MYOH ITMG PTBA TOBA IN OUT VA CE HC SC , , , ,

6 115 Lampiran 3 Hasil Olah Data Keseluruhan Periode 2012 Kode VAHU VACA STVA PBV ROA Perusahaan ADRO 3,91 0,13 0,74 1,33 5,73 BSSR 5,64 0,2 0,82 6,4 7,51 KKGI 5,93 0,29 0,83 2,98 22,73 GEMS 2,32 0,1 0,57 4,87 5,2 MYOH 3,07 0,57 0,67 4,91 2,8 ITMG 8,74 0,34 0,89 4,21 28,97 PTBA 5,84 0,31 0,83 4,13 22,86 TOBA 1,73 0,23 0,42 1,68 4,56 Periode 2013 Kode VAHU VACA STVA PBV ROA Perusahaan ADRO 2,76 0,11 0,64 0,95 3,46 BSSR 1,75 0,15 0,43 4,68 2,97 KKGI 4,09 0,25 0,76 1,95 16,25 GEMS 2,1 0,09 0,52 3,07 4,23 MYOH 1,76 0,51 0,43 1,47 9,57 ITMG 4,6 0,25 0,78 2,61 15,45 PTBA 4,09 0,26 0,76 2,99 15,88 TOBA 2,6 0,34 0,61 1,06 11,1 Periode 2014 Kode VAHU VACA STVA PBV ROA Perusahaan ADRO 2,39 0,09 0,58 0,67 2,86 BSSR 1,64 0,14 0,39 3,75 1,52 KKGI 2,83 0,15 0,65 1,03 7,54 GEMS 1,89 0,09 0,47 3,35 3,41 MYOH 3,14 0,31 0,68 1,11 13,21 ITMG 4,77 0,29 0,79 1,33 15,31 PTBA 3,84 0,24 0,74 2,53 12,54 TOBA 3,16 0,29 0,68 0,96 11,82

7 116 Periode 2015 Kode VAHU VACA STVA PBV ROA Perusahaan ADRO 2,16 0,08 0,54 0,5 2,53 BSSR 6,64 0,34 0, ,17 KKGI 2,45 0,12 0,59 0,63 5,76 GEMS 1,17 0,06 0,15 2,85 0,57 MYOH 3,18 0,31 0,69 0,87 15,34 ITMG 2,02 0,14 0,51 0,77 5,36 PTBA 4,38 0,23 0,77 1,75 12,06 TOBA 2,36 0,25 0,58 0,57 9,11 Periode 2016 Kode VAHU VACA STVA PBV ROA Perusahaan ADRO 3,54 0,12 0,72 1,12 5,22 BSSR 4,66 0,23 0,79 2,69 14,9 KKGI 3,23 0,15 0,69 2,12 9,6 GEMS 3,88 0,16 0,74 4,98 9,26 MYOH 2,67 0,26 0,63 1,31 14,44 ITMG 3,98 0,17 0,75 1,73 10,8 PTBA 4,04 0,23 0,75 2,7 10,9 TOBA 1,81 0,2 0,45 1,59 5,58

8 117 Lampiran 4 Hasil Pengujian Dengan Alat Statistik A. Hasil Analisis Deskriptif Descriptive Statistics N Minimum Maximum Mean Std. Deviation Vahu Vaca Stva Pbv Roa Valid N (listwise) 40 B. Data Hasil Uji Normalitas Sebelum Transformasi One-Sample Kolmogorov-Smirnov Test Vahu Vaca Stva pbv Roa N Normal Mean Parameters a,b Std. Deviation Most Extreme Differences Absolute Positive Negative Test Statistic Asymp. Sig. (2-tailed).137 c.200 c,d.124 c.033 c.051 c a. Test distribution is Normal. b. Calculated from data.

9 118 C. Data Hasil Uji Normalitas Setelah Transformasi One-Sample Kolmogorov-Smirnov Test Vahu Vaca Stva roa ln_pbv N Normal Mean Parameters a,b Std. Deviation Most Extreme Differences Absolute Positive Negative Test Statistic Asymp. Sig. (2-tailed).137 c.200 c,d.124 c.051 c.200 c,d a. Test distribution is Normal. b. Calculated from data. c. Lilliefors Significance Correction. d. This is a lower bound of the true significance. D. Data Hasi Uji Multikolonieritas Hasil Uji Multikoliniearitas ROA Collinearity Statistics Tolerance VIF 1 Vahu Vaca Stva a. Dependent Variable: roa

10 119 Hasil Uji Multikoliniearitas PBV Collinearity Statistics Tolerance VIF 1 Vahu Vaca Stva a. Dependent Variable: ln_pbv Hasil Uji Multikoliniearitas PBV Collinearity Statistics Tolerance VIF 1 Roa a. Dependent Variable: ln_pbv E. Data Hasil Uji Autokorelasi Durbin Watson Hasil Uji Autokorelasi ROA Summary b R R Square Adjusted R Square Std. Error of the Estimate Durbin-Watson a a. Predictors: (Constant), stva, vaca, vahu b. Dependent Variable: roa

11 120 Hasil Uji Autokorelasi PBV Summary b R R Square Adjusted R Square Std. Error of the Estimate Durbin-Watson a a. Predictors: (Constant), stva, vaca, vahu b. Dependent Variable: ln_pbv Hasil Uji Autokorelasi PBV Summary b R R Square Adjusted R Square Std. Error of the Estimate Durbin-Watson a a. Predictors: (Constant), roa b. Dependent Variable: ln_pbv F. Hasil Uji Heteroskedastisitas Hasil Uji Heteroskedastisitas ROA

12 121 Hasil Uji Heteroskedastisitas PBV Hasil Uji Heteroskedastisitas PBV

13 122 G. Hasil Uji Hipotesis Hasil Uji F ROA ANOVA a Sum of Squares Df Mean Square F Sig. 1 Regression b Residual Total a. Dependent Variable: roa b. Predictors: (Constant), stva, vaca, vahu Hasil Uji T ROA Standardized Unstandardized Coefficients Coefficients B Std. Error Beta T Sig. 1 (Constant) Vahu Vaca Stva a. Dependent Variable: roa Uji Determinasi ROA Summary R R Square Adjusted R Square Std. Error of the Estimate a a. Predictors: (Constant), stva, vaca, vahu

14 123 Hasil Uji F PBV ANOVA a Sum of Squares Df Mean Square F Sig. 1 Regression b Residual Total a. Dependent Variable: ln_pbv b. Predictors: (Constant), stva, vaca, vahu Hasil Uji T PBV Standardized Unstandardized Coefficients Coefficients B Std. Error Beta T Sig. 1 (Constant) Vahu Vaca Stva a. Dependent Variable: ln_pbv Uji Determinasi PBV Summary R R Square Adjusted R Square Std. Error of the Estimate a a. Predictors: (Constant), stva, vaca, vahu

15 124 Hasil Uji t PBV Standardized Unstandardized Coefficients Coefficients B Std. Error Beta T Sig. 1 (Constant) Roa a. Dependent Variable: ln_pbv Uji Determinasi PBV Summary R R Square Adjusted R Square Std. Error of the Estimate a a. Predictors: (Constant), roa Hasil Uji Analisis Linear Berganda Pertama Standardized Unstandardized Coefficients Coefficients B Std. Error Beta T Sig. 1 (Constant) Vahu Vaca Stva a. Dependent Variable: roa

16 125 Hasil Uji Analisis Linear Berganda Kedua Standardized Unstandardized Coefficients Coefficients B Std. Error Beta T Sig. 1 (Constant) Vahu Vaca Stva a. Dependent Variable: ln_pbv Hasil Uji Analisis Linear Berganda Ketiga Standardized Unstandardized Coefficients Coefficients B Std. Error Beta T Sig. 1 (Constant) Roa a. Dependent Variable: ln_pbv

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