\One-Sample Kolmogorov-Smirnov Test Unstandardiz ed Residual N 222 Normal Parameters a,b Mean, Std. Deviation

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1 LAMPIRAN

2 \One-Sample Kolmogorov-Smirnov Test Unstandardiz ed Residual N 222 Normal Parameters a,b Mean, Std. Deviation 1, Most Extreme Differences Absolute,182 Positive,182 Negative -,117 Test Statistic,182 Asymp. Sig. (2-tailed),000 c a. Test distribution is Normal. b. Calculated from data. c. Lilliefors Significance Correction.

3 One-Sample Kolmogorov-Smirnov Test Unstandardiz ed Residual N 222 Normal Parameters a,b Mean, Std. Deviation 1, Most Extreme Differences Absolute,184 Positive,184 Negative -,143 Test Statistic,184 Asymp. Sig. (2-tailed),000 c a. Test distribution is Normal. b. Calculated from data. c. Lilliefors Significance Correction. Model Variables Entered/Removed a Variables Entered 1 CSR, Profitabilitas, UP b Variables Removed a. Dependent Variable: NP b. All requested variables entered. Method. Enter Model R R Square Model Summary b Adjusted R Square Std. Error of the Estimate Durbin- Watson 1,509 a,259,249 1, ,806 a. Predictors: (Constant), CSR, Profitabilitas, UP b. Dependent Variable: NP

4 Model R R Square Model Summary b Adjusted R Square Std. Error of the Estimate Durbin- Watson 1,512 a,262,255 1, ,852 a. Predictors: (Constant), UPxCSR, PROFxCSR b. Dependent Variable: NP Model 1 (Constan t) Profitabi litas Unstandardized Coefficients B Std. Error Coefficients a Standardi zed Coefficie nts Beta t Sig.,492,398 1,234,219 Collinearity Statistics Tolera nce VIF 13,648 1,824,448 7,480,000,948 1,055 UP -,001,021 -,004 -,067,947,936 1,069 CSR 4,300 1,600,166 2,688,008,895 1,117 a. Dependent Variable: NP

5 Coefficients a Model 1 (Consta nt) PROFx CSR UPxCS R Unstandardized Coefficients B a. Dependent Variable: NP Std. Error Standardi zed Coefficie nts Beta t Sig. 1,256,191 6,584,000 Collinearity Statistics Tolera nce VIF 84,298 10,467,538 8,053,000,754 1,326 -,068,078 -,059 -,876,382,754 1,326 Model 1 (Constan t) Profitabil itas Unstandardized Coefficients B Std. Error Coefficients a Standardi zed Coefficien ts Beta t Sig. 1,164,236 4,933,000 Collinearity Statistics Toleran ce VIF -,847 1,016 -,063 -,833,406,965 1,036 UP -,011,012 -,067 -,865,388,933 1,072 CSR,318,865,029,368,714,904 1,106 a. Dependent Variable: ABS_RES

6 Model 1 (Consta nt) LN_PC SR LN_UC SR Unstandardized Coefficients a. Dependent Variable: LNEI2 Coefficients a Standardiz ed Coefficien ts B Std. Error Beta t Sig.,417,704,593,554 Collinearity Statistics Toleran ce VIF,170,112,125 1,518,131,803 1,245,134,221,050,605,546,803 1,245 Model Variables Entered/Removed a Variables Entered 1 UPxCSR, PROFxCSR b Variables Removed a. Dependent Variable: NP b. All requested variables entered. Method. Enter Model R R Square Model Summaryb Adjusted R Square Std. Error of the Estimate Durbin- Watson 1,509 a,259,249 1, ,806 a. Predictors: (Constant), CSR, Profitabilitas, UP b. Dependent Variable: NP Model R R Square Model Summary b Adjusted R Square Std. Error of the Estimate Durbin- Watson 1,512 a,262,255 1, ,852 a. Predictors: (Constant), UPxCSR, PROFxCSR b. Dependent Variable: NP

7 Model Sum of Squares ANOVA a df Mean Square F Sig. 1 Regression 215, ,888 25,416,000 b Residual 616, ,828 Total 832, a. Dependent Variable: NP b. Predictors: (Constant), CSR, Profitabilitas, UP Model ANOVA a Sum of Squares df Mean Square F Sig. 1 Regression 218, ,015 38,868,000 b Residual 614, ,805 Total 832, a. Dependent Variable: NP b. Predictors: (Constant), UPxCSR, PROFxCSR Model Unstandardized Coefficients Coefficients a Standard ized Coeffici ents B Std. Error Beta t Sig. 1(Constant),492,398 1,234,219 Profitabilitas UP CSR Collinearity Statistics Toleranc e 13,648 1,824,448 7,480,000,948 -,001,021 -,004 -,067,947,936 4,300 1,600,166 2,688,008,895 VIF 1,05 5 1,06 9 1,11 7

8 a. Dependent Variable: NP Tabel 4.17 Hasil Uji t Model Penelitian 2 Model Unstandardized Coefficients Coefficients a Standardize d Coefficient s B Std. Error Beta t Sig. (Constant) 1,256,191 6,584,000 Collinearity Statistics Toleran ce PROFxCSR 84,298 10,467,538 8,053,000,754 1,326 UPxCSR -,068,078 -,059 -,876,382,754 1,326 a. Dependent Variable: NP VIF

9 NO NAMA Tahun LABA SETELAH PAJAK TOTAL ASET ROA SIZE Keterangan Sampel 1 ADES , , Sampel 2 ADMG (0.0530) ,161, ,010,232 (0.0575) Sampel 3 AISA ,375 9,060, , Sampel 5 AKPI , ,644,714 1,015,820, Sampel 7 ALKA ,175, ,628,405 (0.0081) , Sampel 8 ALMI , ,613,905,767 1,370,783,812,492 (0.0391) Sampel 10 AMFG ,503 4,270, ,697,913,883 1,135,244,802, Sampel 14 ARNA ,879,784,046 1,259,938,133, ,209,943,348 1,430,779,475, ,708, Sampel 15 ASII ,125, , , ,058, Sampel 16 AUTO ,150, ,701 14,339, Sampel 18 BATA ,519, ,257, Sampel 22 BRNA #DIV/0! #NUM! (0.0158) Bukan Sampel 23 BRPT (0.0010) ,159,572 1,820,783,911 (0.0039) , Sampel 24 BTON ,323,778, ,116,245, Sampel 25 BUDI ,072 3,265, Sampel 26 CEKA ,549,446,980 1,485,826,210, Sampel 29 CPIN ,832,598 24,684, Sampel 30 CTBN ,140, ,679, , Sampel 33 DPNS ,859,176, ,483,110, Sampel 34 DVLA ,894,430 1,376,278, , Bukan Sampel 35 EKAD , #DIV/0! #NUM! Sampel 36 ERTX ,344,465 52,990, ,670, (0.0906) Sampel 37 ESTI ,389, (0.0917) ,485,191 56,837,316 (0.1845) , (0.0438) Sampel

10 NO NAMA Tahun LABA SETELAH PAJAK TOTAL ASET ROA SIZE Keterangan Sampel 41 GDST (0.0103) ,212,703,852 1,183,934,183,257 (0.0466) ,634, Sampel 43 GDYR , ,315,863 (0.0000) Sampel 44 GJTL ,326 17,509,505 (0.0179) , (0.0919) Sampel 45 HDTX , (0.0250) ,659,019 4,878,367,904 (0.0729) Sampel 46 HMSP ,181, ,363,308 38,010, Sampel 47 ICBP ,923,148 26,560, , Sampel 48 IGAR , ,416,184, ,936,040, Sampel 50 IMAS (0.0029) ,489,430,531 24,860,957,839,497 (0.0009) (0.0419) Sampel 53 INAF ,565,707,419 1,533,708,564, , Sampel 54 INAI , ,615,673,167 1,330,259,296, Sampel 55 INCI ,960,660, ,546,066, ,416, Sampel 56 INDF ,709,501 91,831, Sampel 57 INDR ,108, ,851, , Sampel 58 INDS , ,933,819,152 2,553,928,346, , Sampel 59 INKP ,747 7,038, Sampel 60 INRU , ,904 (0.0070) Sampel 61 INTP ,356,661 27,638, ,503, Sampel 62 IPOL ,664, ,780, , Sampel 64 JECC , ,464,669 1,358,464, (0.0304) Bukan Sampel 65 JKSW (0.0318) (23,193,914,549) 22,464,848,428 (1.0325) Sampel 66 JPFA ,484 17,159, , Sampel 67 JPRS , (0.0187) ,265,042,157 (0.0605)

11 NO NAMA Tahun LABA SETELAH PAJAK TOTAL ASET ROA SIZE Keterangan Sampel 71 KBLM ,760,365, ,385,717, , Sampel 72 KDSI , ,470,563,293 1,177,093,668, , Sampel 74 KICI , E+11 2,124,390,696,519 (0.0771) ,970, Sampel 76 KLBF ,121, ,057,694,281,873 13,696,417,381, (0.0269) Sampel 78 KRAS (0.0614) ,514 3,702,144 (0.0882) , Sampel 79 LION , ,018,637, ,330,150, , (0.0146) Sampel 80 LMPI , ,968,046, ,093,512, Sampel 81 LMSH #DIV/0! #NUM! Bukan Sampel 83 MAIN ,841,276 3,530,183,618 (0.0240) ,097,227 3,962,068,064 (0.0157) #DIV/0! #NUM! Bukan Sampel 84 MASA , ,512, ,859, ,429,237 (0.0449) Sampel 85 MBTO ,056,549, ,899,377,240 (0.0217) , Sampel 86 MERK , ,545, ,646, Sampel 87 MLBI ,909 2,100, (0.0659) Sampel 88 MLIA ,911,654 7,125,800,277 (0.0219) (0.0152) Sampel 89 MRAT ,045,990, ,090,038, Sampel 90 MYOR ,250,233,128,560 11,342,715,686, Sampel 92 NIKL , (0.0588) ,720,564 (0.0529) Sampel 93 NIPS , ,752,147 1,547,720, Sampel 94 PBRX ,107, ,621, ,841, Sampel 95 PICO ,975,406, ,788,310, Sampel 98 PSDN (0.0454) ,619,829, ,398,854,182 (0.0687) Sampel 99 PTSN (0.0407) ,617 63,515, #DIV/0! #NUM! Sampel 100 PYFA ,661,022, ,557,400, ,087,104, ,951,537,

12 NO NAMA Tahun LABA SETELAH PAJAK TOTAL ASET ROA SIZE Keterangan Sampel 103 ROTI ,538,700,440 2,706,323,637, Sampel 104 SCCO ,119,646,125 1,773,144,328, , (0.0163) Sampel 105 SCPI , (0.0474) ,510,747, Sampel 107 SIDO ,475 2,796, , Sampel 110 SKBM , ,150,568, ,484,248, , Sampel 111 SKLT , ,066,791, ,110,748, , Sampel 112 SMBR , ,344,846 3,268,667, Sampel 114 SMGR ,525,441,038 38,153,118, Sampel 115 SMSM ,997 2,220, #DIV/0! #NUM! Sampel 117 SPMA ,961,046,055 2,091,957,078, ,597,342,144 2,185,464,365,772 (0.0195) Sampel 118 SQBB ,207, ,027, Sampel 120 SRSN ,073, Sampel 122 STAR ,885, ,020,553, , Sampel 125 TALF , ,717,725, ,210,376, (0.0263) Sampel 126 TBMS ,174, ,737, Sampel 127 TCID , ,474,278,014 2,082,096,848, ,402, (0.0260) Sampel 128 TFCO (0.0136) ,634, ,020,865 (0.0052) , Sampel 129 TIRT , ,431, ,168,027,178 (0.0011) , Sampel 130 TKIM , ,683, , Sampel 131 TOTO , ,236,780,659 2,439,540,859, , Sampel 132 TPIA , ,862, , Sampel 133 TRIS ,448,445, ,346,433, , Sampel 134 TRST , ,314,103,403 3,357,359,499, Sampel 135 TSPC ,218,651,807 6,284,729,099, Sampel 136 ULTJ ,100,215,029 3,539,995,910, Sampel 137 UNIC , ,447,500 (0.0039) Sampel

13 NO Nama Tahun Ekuitas lbr saham harga/lbr nilai buku/lbr saham saham pbv ket Sampel 1 ADES Sampel 2 ADMG Sampel 3 AISA Bukan Sampel 4 AKKU Sampel 5 AKPI Bukan Sampel 6 ALDO Sampel 7 ALKA Sampel 8 ALMI Bukan Sampel 9 ALTO Sampel 10 AMFG Bukan Sampel 11 AMIN Bukan Sampel 12 APLI Bukan Sampel 13 ARGO Sampel 14 ARNA Sampel 15 ASII Sampel 16 AUTO Bukan Sampel 17 BAJA Sampel 18 BATA Bukan Sampel 19 BIMA Bukan Sampel 20 BOLT Bukan Sampel 21 BRAM Sampel 22 BRNA Bukan Sampel 23 BRPT Sampel 24 BTON Sampel 25 BUDI Sampel 26 CEKA Bukan Sampel 27 CINT Bukan Sampel 28 CNTX

14 No Nama Tahun Ekuitas lbr saham harga/lbr nilai buku/lbr saham saham pbv ket Bukan Sampel 31 DAJK Bukan Sampel 32 DLTA Sampel 33 DPNS Sampel 34 DVLA Sampel 35 EKAD Sampel 36 ERTX Sampel 37 ESTI #DIV/0! 0 Bukan Sampel 38 ETWA #DIV/0! #DIV/0! Sampel 39 FASW Sampel 40 FPNI E E Sampel 41 GDST Bukan Sampel 42 GGRM Sampel 43 GDYR Sampel 44 GJTL Sampel 45 HDTX Sampel 46 HMSP Sampel 47 ICBP Sampel 48 IGAR Bukan Sampel 49 IKAI #DIV/0! Sampel 50 IMAS Bukan Sampel 51 IKBI Bukan Sampel 52 IMPC Sampel 53 INAF Sampel 54 INAI Sampel 55 INCI Sampel 56 INDF Sampel 57 INDR Sampel 58 INDS

15 No Nama Tahun Ekuitas lbr saham harga/lbr nilai buku/lbr saham saham pbv ket Sampel 61 INTP Sampel 62 IPOL Bukan Sampel 63 ISSP Sampel 64 JECC #DIV/0! 0 Bukan Sampel 65 JKSW #DIV/0! #DIV/0! Sampel 66 JPFA Sampel 67 JPRS Bukan Sampel 68 KAEF Sampel 69 KBLI Sampel 70 KBRI Sampel 71 KBLM Sampel 72 KDSI Bukan Sampel 73 KIAS Sampel 74 KICI Bukan Sampel 75 KINO Sampel 76 KLBF Bukan Sampel 77 KRAH Sampel 78 KRAS Sampel 79 LION Sampel 80 LMPI Sampel 81 LMSH Bukan Sampel 82 LPIN Sampel 83 MAIN Sampel 84 MASA Sampel 85 MBTO Sampel 86 MERK Sampel 87 MLBI Sampel 88 MLIA

16 No Nama Tahun Ekuitas lbr saham harga/lbr nilai buku/lbr saham saham pbv ket #DIV/0! 0 Bukan Sampel 91 MYTX #DIV/0! #DIV/0! Sampel 92 NIKL Sampel 93 NIPS Sampel 94 PBRX Sampel 95 PICO Bukan Sampel 96 POLY Bukan Sampel 97 PRAS Sampel 98 PSDN Sampel 99 PTSN Sampel 100 PYFA Sampel 101 RICY Sampel 102 RMBA Sampel 103 ROTI Sampel 104 SCCO Sampel 105 SCPI Bukan Sampel 106 SIAP Sampel 107 SIDO Bukan Sampel 108 SIMA Bukan Sampel 109 SIPD Sampel 110 SKBM Sampel 111 SKLT Sampel 112 SMBR Bukan Sampel 113 SMCB Sampel 114 SMGR Sampel 115 SMSM #DIV/0! 0 Bukan Sampel 116 SOBI #DIV/0! #DIV/0! Sampel 117 SPMA Sampel 118 SQBB

17 No Nama Tahun Ekuitas lbr saham harga/lbr nilai buku/lbr saham saham pbv ket Bukan Sampel 121 SSTM Sampel 122 STAR #DIV/0! 0 Bukan Sampel 123 STTP #DIV/0! #DIV/0! #DIV/0! 0 Bukan Sampel 124 SULI #DIV/0! #DIV/0! Sampel 125 TALF Sampel 126 TBMS Sampel 127 TCID Sampel 128 TFCO Sampel 129 TIRT Sampel 130 TKIM Sampel 131 TOTO Sampel 132 TPIA Sampel 133 TRIS Sampel 134 TRST Sampel 135 TSPC Sampel 136 ULTJ Sampel 137 UNIC Sampel 138 UNIT Sampel 139 UNVR Bukan Sampel 140 VOKS #DIV/0! Bukan Sampel 141 WIIM

18 Tahun 2013 Ind ADES ADMG AISA AKPI ALKA ALMI AMFG ARNA ASII AUTO BATA BRNA BTON BUDI CPIN CTBN DPNS DVLA ERTX ESTI EC EC EC EC EC EC EC EC EC EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN LA LA LA LA LA LA LA LA LA LA LA LA LA LA LA HR HR HR HR HR HR HR HR HR HR HR HR SO SO SO SO SO SO SO SO SO SO SO PR PR PR PR PR PR PR PR PR

19 Ind FASW GDST GDYR GJTL HMSP ICBP IGAR IMAS INAF INAI INCI INDF INDR INKP INRU INTP IPOL JECC JPFA JPRS EC EC EC EC EC EC EC EC EC EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN LA LA LA LA LA LA LA LA LA LA LA LA LA LA LA HR HR HR HR HR HR HR HR HR HR HR HR SO SO SO SO SO SO SO SO SO SO SO PR PR PR PR PR

20 Ind KBLI KBRI KBLM KDSI KLBF KRAS LION LMPI LMSH MAIN MASA MBTO MERK MLBI MLIA MRAT MYOR MYTX NIKL NIPS EC EC EC EC EC EC EC EC EC EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN LA LA LA LA LA LA LA LA LA LA LA LA LA LA LA HR HR HR HR HR HR HR HR HR HR HR HR SO SO SO SO SO SO SO SO SO SO SO PR PR PR PR PR

21 Ind PBRX POLY PRAS PSDN PTSN PYFA RICY RMBA ROTI SCCO SCPI SIDO SKBM SKLT SMBR SMGR SMSM SRSN STAR TALF EC EC EC EC EC EC EC EC EC EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN EN LA LA LA LA LA LA LA LA LA LA LA LA LA LA LA HR HR HR HR HR HR HR HR HR HR HR HR SO SO SO SO SO SO SO SO SO SO SO PR PR PR PR PR

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