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Lampiran 1 : Pengolahan Data ROA Variabel bebas Variabel terikat : VAIC, Ukuran, dan Leverage : ROA EMITEN TAHUN ROA (%) VAIC (%) UKURAN CEKA DLTA INDF MYOR LEVERAGE (Rp) LnROA LnVAIC LnLEVERAGE 2007 0.04 78.38 0 0.64-3.22 4.36-0.45 2008 0.05 140.1 0 0.59-3 3.42-0.53 2009 0.09 82.85 0 0.47-2.41 2.51-0.76 2010 0.03 44.44 0 0.64-3.51 3.79-0.45 2007 0.08 8.84 0 0.23-2.53 2.18-1.47 2008 0.12 11.86 0 0.26-2.12 2.47-1.35 2009 0.17 20.84 0 0.22-3.77 3.04-1.51 2010 0.2 20.58 0 0.18-2.61 4.89-1.71 2007 0.03 22.32 1 3.13-3.51 3.11 1.14 2008 0.03 25.48 1 3.66-3.51 3.24 1.3 2009 0.05 20.61 1 2.98-3 3.03 1.09 2010 0.06 18.92 1 1.82-2.81 2.94 0.6 2007 0.07 19.31 0 0.43-2.66 2.96-0.84 2008 0.07 20.88 0 0.57-2.66 3.04-0.56 2009 0.11 19.49 0 0.51-2.21 2.97-0.67 2010 0.11 21.3 0 0.55-2.21 3.06-0.6 2007 0.14 17.74 0 0.68-1.97 1.23-0.39 2008 0.24 16.63 0 0.63-1.43 1.45-0.46 MLBI 2009 0.34 20.74 0 0.89-1.08 1.51-0.12 LEVERAGE EMITEN TAHUN ROA (%) VAIC (%) UKURAN (Rp) LnROA LnVAIC LnLEVERAGE MLBI 2010 0.39 16.27 0 0.59-3.94 4.01-0.53 SKLT STTP ULTJ 2007 0.03 15.58 0 0.47-3.51 4.21-0.76 2008 0.02 18.75 0 0.5-3.91 3.88-0.69 2009 0.07 14.84 0 0.42-2.66 2.7-0.87 2010 0.02 15.22 0 0.41-3.91 2.72-0.89 2007 0.03 36.09 0 0.31-3.51 3.59-1.17 2008 0.01 32.92 0 0.42-4.61 3.89-0.87 2009 0.07 32.65 0 0.26-2.66 1.32-1.35 2010 0.07 34.6 0 0.31-2.66 3.54-1.17 2007 0.02 14.63 0 0.4-3.91 2.68-0.92 2008 0.17 15.19 0 0.35-1.77 2.72-1.05 2009 0.04 18.17 0 0.31-3.22 2.9-1.17 2010 0.05 17.97 0 0.35-3 2.89-1.05 GGRM 2007 0.06 35.61 1 0.41-2.81 3.57-0.89

HMSP 2008 0.08 34.2 1 0.36-2.53 3.53-1.02 2009 0.13 28.96 1 0.33-2.04 3.37-1.11 2010 0.13 27.14 1 0.31-2.04 3.3-1.17 2007 0.23 27.04 1 0.49-3.47 3.3-0.71 2008 0.24 28.44 1 0.5-2.43 3.35-0.69 2009 0.29 35.87 1 0.41-3.24 3.58-0.89 2010 0.31 32.79 1 0.5-1.17 0.43-0.69 2007 0.09 5.65 0 0.21-0.41 0.08-1.56 2008 0.11 5.45 0 0.26-0.21 0.02-1.35 2009 0.09 8.02 0 0.41-2.41 1.21-0.89 DVLA 2010 0.13 8.5 0 0.33-2.04 1-1.11 LEVERAGE EMITEN TAHUN ROA (%) VAIC (%) UKURAN (Rp) LnROA LnVAIC LnLEVERAGE KAEF MERK PYFA TSPC TCID MRAT 2007 0.04 9.56 0 0.35-3.22 2.26-1.05 2008 0.04 9.88 0 0.34-1.28 2.29-1.08 2009 0.04 9.19 0 0.36-3.22 2.22-1.02 2010 0.84 9.01 0 0.33-3.16 2.2-1.11 2007 0.27 7.55 0 0.15-1.31 2.02-1.9 2008 0.26 7.37 0 0.13-1.35 1.21-2.04 2009 0.34 7.88 0 0.18-1.08 2.06-1.71 2010 0.27 6.95 0 0.17-1.31 1.94-1.77 2007 0.02 3.66 0 0.3-3.91 2.97-0.12 2008 0.02 3.88 0 0.3-3.91 4.23-1.2 2009 0.04 4.5 0 0.27-3.22 2.98-1.31 2010 0.04 5.49 0 0.23-3.22 2.77-1.47 2007 0.1 9.39 0 0.24-2.3 2.24-2.81 2008 0.11 9.57 0 0.25-2.21 2.26-1.39 2009 0.11 12.55 0 0.26-2.21 2.53-1.35 2010 0.14 13.34 0 0.27-3.37 3.66-1.31 2007 0.15 9.52 0 0.07-1.9 2.25-2.66 2008 0.13 9.77 0 0.1-2.04 1.89-2.3 2009 0.13 10.45 0 0.11-2.04 2.35-2.21 2010 0.13 9.38 0 0.09-2.04 2.24-2.41 2007 0.04 3.52 0 0.12-3.22 1.26-2.12 2008 0.06 3.94 0 0.14-2.81 3.89-1.97 2009 0.06 4.62 0 0.13-3.01 3.75-1.88 2010 0.06 4.74 0 0.13-2.81 3.93-2.04 UNVR 2007 0.37 15.55 1 0.5-3.88 1.01-0.69 LEVERAGE EMITEN TAHUN ROA (%) VAIC (%) UKURAN (Rp) LnROA LnVAIC LnLEVERAGE UNVR KDSI 2008 0.37 20.72 1 0.52-0.99 1.05-0.65 2009 0.41 21.89 1 0.51-2.25 3.09-0.67 2010 0.39 20.51 1 0.54-2.71 3.02-0.62 2007 0.03 21.19 0 0.59-3.51 4.51-0.53 2008 0.01 22.15 0 0.53-4.61 4.89-0.63 2009 0.02 17.44 0 0.54-3.91 3.76-0.62

2010 0.03 17.28 0 0.57-3.51 3.95-0.56 2007 0.02 6.75 0 0.27-3.91 4.99-1.31 2008 0.01 6.93 0 0.3-4.61 4.86-1.2 2009 0.01 7.3 0 0.26-4.61 4.33-1.35 LMPI 2010 0.01 7.6 0 0.34-4.61 4.51-1.08

Lampiran 2 : Pengolahan Data ATO Variabel bebas Variabel terikat : VAIC, Ukuran, dan Leverage : ATO EMITEN CEKA DLTA INDF MYOR MLBI EMITEN SKLT STTP ULTJ TAHUN ATO ( kali) VAIC (%) UKURAN LEVERAGE (Rp) Wt_VAIC Wt_LEVERAGE Wt_UKURAN Wt_ATO Wt_SQRO 2007 1.32 78.38 0 0.64 162.23 1.32 0 2.73 2.07 2008 3.25 140.1 0 0.59 242.08 1.02 0 5.62 1.73 2009 2.1 82.85 0 0.47 164.35 0.93 0 4.17 1.98 2010 0.84 44.44 0 0.64 104.8 1.51 0 2.98 2.36 2007 0.74 8.84 0 0.23 22.35 0.58 0 2.87 2.53 2008 0.96 11.86 0 0.26 29.76 0.65 0 3.61 2.51 2009 1.66 20.84 0 0.22 49.64 0.52 0 3.95 2.38 2010 1.7 20.58 0 0.18 48.63 0.43 0 4.02 2.36 2007 0.94 22.32 1 3.13 75.75 10.62 3.39 3.19 3.39 2008 0.98 25.48 1 3.66 114.84 16.5 4.51 4.42 4.51 2009 0.93 20.61 1 2.98 66.46 9.61 3.22 3 3.22 2010 0.81 18.92 1 1.82 43.79 4.21 2.31 2.87 2.31 2007 1.49 19.31 0 0.43 48.74 1.09 0 3.76 2.52 2008 1.34 20.88 0 0.57 54.24 1.48 0 3.48 2.6 2009 1.47 19.49 0 0.51 50.18 1.31 0 3.78 2.57 2010 1.64 21.3 0 0.55 54.91 1.42 0 4.23 2.58 2007 1.57 17.74 0 0.68 48.39 1.85 0 4.28 2.73 2008 1.41 16.63 0 0.63 44.98 1.7 0 3.81 2.7 2009 1.63 20.74 0 0.89 59.31 2.55 0 4.66 2.86 2010 1.57 16.27 0 0.59 43.59 1.58 0 4.21 2.68 ATO LEVERAGE TAHUN (Kali) VAIC (%) UKURAN (Rp) Wt_VAIC Wt_LEVERAGE Wt_UKURAN Wt_ATO Wt_SQRO 2007 1.3 15.58 0 0.47 40.52 1.22 0 3.28 2.6 2008 1.56 18.75 0 0.5 48.34 1.29 0 4.02 2.58 2009 1.41 14.84 0 0.42 38.22 1.08 0 3.63 2.58 2010 1.58 15.22 0 0.41 39.02 1.05 0 4.05 2.56 2007 1.16 36.09 0 0.31 82.12 0.71 0 4.5 2.28 2008 1 32.92 0 0.42 77.75 0.99 0 5.8 2.36 2009 1.14 32.65 0 0.26 74.57 0.59 0 3.8 2.28 2010 1.17 34.6 0 0.31 79.22 0.71 0 4.2 2.29 2007 0.83 14.63 0 0.4 37.53 1.03 0 5.6 2.56 2008 0.78 15.19 0 0.35 38.35 0.88 0 2.25 2.52 2009 0.93 18.17 0 0.31 44.76 0.76 0 4.35 2.46 2010 0.94 17.97 0 0.35 44.74 0.87 0 2.34 2.49 GGRM 2007 1.15 35.61 1 0.41 62.34 0.72 1.75 3.9 1.75

2008 1.26 34.2 1 0.36 59.71 0.63 1.75 2.2 1.75 2009 1.21 28.96 1 0.33 51.02 0.58 1.76 3.9 1.76 2010 1.23 27.14 1 0.31 47.91 0.55 1.77 3.8 1.77 2007 1.9 27.04 1 0.49 48.86 0.89 1.81 3.43 1.81 2008 2.15 28.44 1 0.5 51.27 0.9 1.8 3.88 1.8 2009 2.2 35.87 1 0.41 62.76 0.72 1.75 3.85 1.75 HMSP DVLA EMITEN KAEF MERK PYFA TSPC TCID MRAT EMITEN UNVR KDSI 2010 2.11 32.79 1 0.5 58.46 0.89 1.78 3.76 1.78 2007 0.88 5.65 0 0.21 14.44 0.54 0 4.5 2.56 2008 0.91 5.45 0 0.26 14.13 0.67 0 2.36 2.59 2009 1.11 8.02 0 0.41 21.38 1.09 0 2.96 2.67 2010 1.09 8.5 0 0.33 22.1 0.86 0 2.83 2.6 ATO LEVERAGE TAHUN (Kali) VAIC (%) UKURAN (Rp) Wt_VAIC Wt_LEVERAGE Wt_UKURAN Wt_ATO Wt_SQRO 2007 1.71 9.56 0 0.35 24.85 0.91 0 4.44 2.6 2008 1.87 9.88 0 0.34 25.57 0.88 0 4.84 2.59 2009 1.82 9.19 0 0.36 24 0.94 0 4.75 2.61 2010 1.92 9.01 0 0.33 23.36 0.86 0 4.98 2.59 2007 1.65 7.55 0 0.15 18.82 0.37 0 4.11 2.49 2008 1.7 7.37 0 0.13 18.3 0.32 0 4.22 2.48 2009 1.73 7.88 0 0.18 19.76 0.45 0 4.34 2.51 2010 1.83 6.95 0 0.17 17.47 0.43 0 4.6 2.51 2007 0.91 3.66 0 0.3 10.69 0.79 0 4.78 2.65 2008 1.21 3.88 0 0.3 10.26 0.79 0 3.2 2.64 2009 1.32 4.5 0 0.27 11.76 0.71 0 3.45 2.61 2010 1.4 5.49 0 0.23 14.12 0.59 0 3.6 2.57 2007 1.13 9.39 0 0.24 23.73 0.61 0 3.89 2.53 2008 1.22 9.57 0 0.25 24.23 0.63 0 3.09 2.53 2009 1.38 12.55 0 0.26 31.38 0.65 0 3.45 2.5 2010 1.43 13.34 0 0.27 33.31 0.67 0 3.57 2.5 2007 1.4 9.52 0 0.07 23.06 0.77 0 3.39 2.42 2008 1.36 9.77 0 0.1 23.81 0.24 0 5.99 2.44 2009 1.4 10.45 0 0.11 25.44 0.27 0 3.41 2.43 2010 1.4 9.38 0 0.09 22.84 0.22 0 3.41 2.44 2007 0.8 3.52 0 0.12 10.89 0.3 0 4.78 2.52 2008 0.87 3.94 0 0.14 12.98 0.35 0 4.8 2.53 2009 0.95 4.62 0 0.13 11.63 0.33 0 3.76 2.52 2010 0.96 4.74 0 0.13 11.92 0.33 0 5.35 2.52 ATO LEVERAGE TAHUN (Kali) VAIC (%) UKURAN (Rp) Wt_VAIC Wt_LEVERAGE Wt_UKURAN Wt_ATO Wt_SQRO 2007 2.35 15.55 1 0.5 29.01 0.93 1.87 4.38 2.6 2008 2.39 20.72 1 0.52 38.22 0.96 1.84 4.41 1.84 2009 2.44 21.89 1 0.51 40.2 0.94 1.84 4.48 1.84 2010 2.26 20.51 1 0.54 37.96 1 1.85 4.18 1.85 2007 1.7 21.19 0 0.59 55.25 1.54 0 4.43 2.61 2008 2.22 22.15 0 0.53 56.55 1.35 0 5.67 2.55

2009 1.74 17.44 0 0.54 45.77 1.42 0 4.57 2.62 2010 2.01 17.28 0 0.57 45.77 1.51 0 5.32 2.65 2007 0.57 6.75 0 0.27 17.43 0.7 0 4.35 2.58 2008 0.58 6.93 0 0.3 18.02 0.78 0 2.51 2.6 2009 0.71 7.3 0 0.26 18.74 0.67 0 2.82 2.57 LMPI 2010 0.66 7.6 0 0.34 19.91 0.89 0 4.4 2.62

Lampiran 3 Pengolahan Data MBR Variabel bebas Variabel terikat : VAIC, Ukuran, dan Leverage : MBR TEN TAHUN MBR (%) VAIC (%) UKURAN KA TA DF OR LEVERAGE (Rp) LN_MBR Wt_VAIC Wt_UKURAN Wt_LEVERAGE Wt_LN_MBR 2007 282 78.38 0 0.64 5.64 0 2008 225 140.1 0 0.59 5.42 0 2009 366 82.85 0 0.47 5.9 0 2010 272 44.44 0 0.64 5.61 0 2007 157 8.84 0 0.23 5.06 12.5 0 0.33 7.15 2008 44 11.86 0 0.26 16.09 0 0.35 2009 39 20.84 0 0.22 24.99 0 0.26 2010 67 20.58 0 0.18 4.2 24.62 0 0.22 8.66 2007 276 22.32 1 3.13 5.62 44.1 2.98 6.18 11.1 2008 84 25.48 1 3.66 4.43 55.32 2.17 7.95 9.62 2009 269 20.61 1 2.98 5.59 40.77 1.98 5.9 11.07 2010 223 18.92 1 1.82 5.41 28.65 2.51 2.76 8.19 2007 956 19.31 0 0.43 6.86 24.27 0 0.54 8.62 2008 538 20.88 0 0.57 6.29 26.23 0 0.72 7.9 2009 167 19.49 0 0.51 5.12 24.72 0 0.65 6.49 2010 317 21.3 0 0.55 5.76 26.55 0 0.69 7.18 2007 129 17.74 0 0.68 4.86 23.64 0 1.23 6.48 2008 63 16.63 0 0.63 4.14 22.34 0 1.85 7.89 BI 2009 633 20.74 0 0.89 6.45 27.38 0 1.17 8.52 LEVERAGE TEN TAHUN MBR (%) VAIC (%) UKURAN (Rp) LN_MBR Wt_VAIC Wt_UKURAN Wt_LEVERAGE Wt_LN_MBR BI 2010 259 16.27 0 0.59 5.56 21.83 0 0.79 7.46 LT TP TJ 2007 301 15.58 0 0.47 5.71 20.71 0 0.62 7.59 2008 426 18.75 0 0.5 6.05 23.97 0 1.64 7.74 2009 630 14.84 0 0.42 6.45 19.78 0 1.56 8.59 2010 564 15.22 0 0.41 6.34 20.14 0 0.54 8.38 2007 174 36.09 0 0.31 5.16 37.52 0 1.32 6.34 2008 684 32.92 0 0.42 6.53 35.62 0 0.45 7.06 2009 933 32.65 0 0.26 6.84 34.83 0 1.28 7.3 2010 145 34.6 0 0.31 4.98 36.45 0 0.33 5.24 2007 666 14.63 0 0.4 6.5 19.49 0 0.53 8.66 2008 587 15.19 0 0.35 6.38 19.93 0 0.46 8.36 2009 392 18.17 0 0.31 5.97 22.78 0 0.39 7.49 2010 777 17.97 0 0.35 6.66 22.71 0 0.44 8.41 RM 2007 222 35.61 1 0.41 5.4 36.39 1.02 0.42 9.62

SP 2008 101 34.2 1 0.36 4.62 35.2 1.03 0.37 6.75 2009 435 28.96 1 0.33 6.08 31.14 1.08 0.35 6.53 2010 698 27.14 1 0.31 6.55 29.63 1.09 0.34 7.15 2007 340 27.04 1 0.49 5.83 30.13 1.11 0.55 6.5 2008 193 28.44 1 0.5 5.26 31.29 1.1 0.55 6.66 2009 190 35.87 1 0.41 5.25 36.57 2.02 0.42 7.87 2010 529 32.79 1 0.5 6.27 34.64 1.06 0.53 6.62 2007 108 5.65 0 0.21 4.68 12.4 0 0.31 6.96 2008 580 5.45 0 0.26 6.36 13.2 0 0.39 9.59 2009 842 8.02 0 0.41 6.74 11.89 0 0.61 9.99 LA 2010 562 8.5 0 0.33 6.33 12.31 0 0.48 9.17 LEVERAGE TEN TAHUN MBR (%) VAIC (%) UKURAN (Rp) LN_MBR Wt_VAIC Wt_UKURAN Wt_LEVERAGE Wt_LN_MBR EF RK FA PC ID AT 2007 130 9.56 0 0.35 4.87 13.65 0 0.5 6.95 2008 310 9.88 0 0.34 5.74 14.01 0 0.48 8.13 2009 157 9.19 0 0.36 5.06 13.23 0 0.52 7.28 2010 176 9.01 0 0.33 5.17 12.94 0 0.47 7.42 2007 91 7.55 0 0.15 4.51 10.74 0 0.21 7.89 2008 60 7.37 0 0.13 10.48 0 1.18 2009 128 7.88 0 0.18 4.85 11.21 0 1.26 6.9 2010 121 6.95 0 0.17 4.8 10.03 0 1.25 6.92 2007 346 3.66 0 0.3 5.85 15.65 0 0.47 9.19 2008 206 3.88 0 0.3 5.33 9 0 0.47 8.34 2009 431 4.5 0 0.27 6.07 17.66 0 0.42 9.32 2010 470 5.49 0 0.23 6.15 25.22 0 0.34 9.21 2007 717 9.39 0 0.24 6.58 18.18 0 1.34 9.23 2008 362 9.57 0 0.25 5.89 13.42 0 0.35 8.26 2009 613 12.55 0 0.26 6.42 16.85 0 0.35 8.62 2010 132 13.34 0 0.27 4.88 17.74 0 0.36 6.77 2007 408 9.52 0 0.07 6.01 12.96 0 1.1 8.18 2008 257 9.77 0 0.1 5.55 13.31 0 1.14 8.99 2009 371 10.45 0 0.11 5.92 14.12 0 2.15 8.65 2010 302 9.38 0 0.09 5.71 12.83 0 1.12 7.81 2007 193 3.52 0 0.12 5.26 15 0 0.18 10.99 2008 917 3.94 0 0.14 6.82 26 0 0.21 9.35 2009 228 4.62 0 0.13 5.43 12.45 0 0.19 8.09 2010 352 4.74 0 0.13 5.86 13.77 0 0.19 8.72 VR 2007 1459 15.55 1 0.5 7.29 19.78 1.27 0.64 9.27 LEVERAGE TEN TAHUN MBR (%) VAIC (%) UKURAN (Rp) LN_MBR Wt_VAIC Wt_UKURAN Wt_LEVERAGE Wt_LN_MBR VR SI 2008 1362 20.72 1 0.52 7.22 24.8 1.2 0.62 8.64 2009 1737 21.89 1 0.51 7.46 25.82 1.18 0.6 9.75 2010 2374 20.51 1 0.54 7.77 24.67 1.2 0.65 9.35 2007 202 21.19 0 0.59 5.31 26.59 0 0.74 6.66 2008 70 22.15 0 0.53 4.25 27.24 0 0.65 7.88 2009 106 17.44 0 0.54 4.66 22.83 0 0.71 8.88

2010 150 17.28 0 0.57 5.01 22.78 0 0.75 6.61 2007 338 6.75 0 0.27 5.82 16.55 0 0.4 8.59 2008 199 6.93 0 0.3 5.29 10.25 0 0.44 7.83 2009 548 7.3 0 0.26 6.31 10.65 0 1.38 9.2 PI 2010 6836 7.6 0 0.34 11.2 0 0.5

LAMPIRAN 4 HASIL PENGOLAHAN DATA ROA 1. HASIL ROA SEBELUM LN Model Summary b Model R R Square Adjusted R Square Std. Error of the Estimate Durbin-Watson 1.394 a.155.122.12664 1.193 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: ROA ANOVA b Model Sum of Squares df Mean Square F Sig. 1 Regression.224 3.075 4.648.005 a Residual 1.219 76.016 Total 1.442 79 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: ROA Coefficients a Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant).142.022 6.352.000 VAIC.000.001 -.090 -.842.402.965 1.036 UKURAN.145.041.431 3.569.001.761 1.314 LEVERAGE -.067.027 -.298-2.474.016.764 1.308 a. Dependent Variable: ROA

One-Sample Kolmogorov-Smirnov Test ROA N 80 Normal Parameters a,,b Mean.1254 Std. Deviation.13512 Most Extreme Differences Absolute.211 Positive.211 Negative -.197 Kolmogorov-Smirnov Z 1.890 Asymp. Sig. (2-tailed).002 a. Test distribution is Normal. b. Calculated from data.

UJI GLEJSER SEBELUM LN Coefficients a Unstandardized Coefficients Standardized Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant).831.098 8.450.000 VAIC -.004.003 -.124-1.076.285.965 1.036 UKURAN -.130.179 -.094 -.725.471.761 1.314 LEVERAGE -.006.120 -.007 -.051.960.764 1.308 a. Dependent Variable: ABS_RES HASIL ROA SETELAH LN

Model Summary b Model R R Square Adjusted R Square Std. Error of the Estimate Durbin-Watson 1.739 a.546.528.68446 2.104 a. Predictors: (Constant), Ln_LEVERAGE, Ln_VAIC, UKURAN b. Dependent Variable: Ln_ROA ANOVA b Model Sum of Squares df Mean Square F Sig. 1 Regression 42.878 3 14.293 30.508.000 a Residual 35.605 76.468 Total 78.483 79 a. Predictors: (Constant), Ln_LEVERAGE, Ln_VAIC, UKURAN b. Dependent Variable: Ln_ROA Coefficients a Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant) -1.424.280-5.088.000 Ln_VAIC -.599.070 -.678-8.612.000.964 1.038 UKURAN.354.217.143 1.636.106.780 1.281 Ln_LEVERAGE -.285.119 -.212-2.392.019.761 1.314 a. Dependent Variable: Ln_ROA One-Sample Kolmogorov-Smirnov Test Ln_ROA N 80 Normal Parameters a,,b Mean -2.7684 Std. Deviation.99672 Most Extreme Differences Absolute.074 Positive.074 Negative -.057 Kolmogorov-Smirnov Z.665 Asymp. Sig. (2-tailed).768

a. Test distribution is Normal. b. Calculated from data. UJI GLEJSER SETELAH LN

Coefficients a Unstandardized Coefficients Standardized Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant).746.168 4.442.000 Ln_VAIC -.071.042 -.193-1.689.095.964 1.038 UKURAN -.080.130 -.078 -.617.539.780 1.281 Ln_LEVERAGE.002.072.004.029.977.761 1.314 a. Dependent Variable: ABS_RES

LAMPIRAN 5 HASIL PENGOLAHAN DATA ATO HASIL ATO SEBELUM WEIGHTING (PEMBOBOTAN) Model Summary b Adjusted R Std. Error of the Model R R Square Square Estimate Durbin-Watson 1.541 a.293.265.43644.750 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: ATO ANOVA b Model Sum of Squares df Mean Square F Sig. 1 Regression 6.003 3 2.001 10.505.000 a Residual 14.476 76.190 Total 20.479 79 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: ATO Coefficients a Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant) 1.231.077 16.014.000 VAIC.011.003.435 4.430.000.965 1.036 UKURAN.394.140.312 2.818.006.761 1.314 LEVERAGE -.261.094 -.307-2.780.007.764 1.308 a. Dependent Variable: ATO One-Sample Kolmogorov-Smirnov Test

ATO N 80 Normal Parameters a,,b Mean 1.4044 Std. Deviation.50914 Most Extreme Differences Absolute.083 Positive.083 Negative -.051 Kolmogorov-Smirnov Z.743 Asymp. Sig. (2-tailed).639 a. Test distribution is Normal. b. Calculated from data.

UJI GLEJSER SEBELUM WEIGHTING (PEMBOBOTAN) Coefficients a Standardized Unstandardized Coefficients Coefficients Model B Std. Error Beta t Sig. 1 (Constant).327.050 6.490.000 VAIC.004.003.161 1.270.208 UKURAN.145.076.267 1.909.060 LEVERAGE -.117.045 -.324-2.597.011 a. Dependent Variable: ABS_RES HASIL ATO SETELAH WEIGHTING (PEMBOBOTAN) Model Summary c,d Std. Error of the Model R R Square b Adjusted R Square Estimate Durbin-Watson 1.980 a.960.958.83134 1.821 a. Predictors: Wt_LEVERAGE, Wt_VAIC, Wt_UKURAN, Wt_SQROOT b. For regression through the origin (the no-intercept model), R Square measures the proportion of the variability in the dependent variable about the origin explained by regression. This CANNOT be compared to R Square for models which include an intercept. c. Dependent Variable: Wt_ATO d. Linear Regression through the Origin

ANOVA c,d Model Sum of Squares df Mean Square F Sig. 1 Regression 1257.050 4 314.263 454.710.000 a Residual 52.526 76.691 Total 1309.576 b 80 a. Predictors: Wt_LEVERAGE, Wt_VAIC, Wt_UKURAN, Wt_SQROOT b. This total sum of squares is not corrected for the constant because the constant is zero for regression through the origin. c. Dependent Variable: Wt_ATO d. Linear Regression through the Origin Coefficients a,b Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 Wt_SQROOT 1.566.060.963 26.166.000.390 2.564 Wt_VAIC.010.002.138 3.888.000.418 2.392 Wt_UKURAN.393.139.101 2.819.006.413 2.423 Wt_LEVERAGE -.366.061 -.241-6.013.000.329 3.037 a. Dependent Variable: Wt_ATO b. Linear Regression through the Origin One-Sample Kolmogorov-Smirnov Test Wt_ATO N 80 Normal Parameters a,,b Mean 3.9584 Std. Deviation.84240 Most Extreme Differences Absolute.060 Positive.060 Negative -.057 Kolmogorov-Smirnov Z.538 Asymp. Sig. (2-tailed).934 a. Test distribution is Normal. b. Calculated from data.

UJI GLEJSER SETELAH WEIGHTING (PEMBOBOTAN)

Coefficients a,b Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 Wt_SQROOT.261.036.802 7.164.000.390 2.564 Wt_VAIC.002.002.109 1.008.317.418 2.392 Wt_UKURAN -.050.085 -.064 -.590.557.413 2.423 Wt_LEVERAGE -.040.037 -.132-1.083.282.329 3.037 a. Dependent Variable: ABS_RES b. Linear Regression through the Origin

LAMPIRAN 6 HASIL PENGOLAHAN DATA MBR HASIL MBR SEBELUM LN Model Summary b Adjusted R Std. Error of Model R R Square Square the Estimate Durbin-Watson 1.176 a.031 -.007 820.60319 1.008 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: MBR ANOVA b Model Sum of Squares df Mean Square F Sig. 1 Regression 1643601.756 3 547867.252.814.490 a Residual 5.118E7 76 673389.593 Total 5.282E7 79 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: MBR Coefficients a Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant) 574.002 144.514 3.972.000 VAIC -3.552 4.833 -.084 -.735.465.965 1.036 UKURAN 357.868 262.957.176 1.361.178.761 1.314 LEVERAGE -173.242 176.392 -.127 -.982.329.764 1.308 a. Dependent Variable: MBR One-Sample Kolmogorov-Smirnov Test MBR

N 80 Normal Parameters a,,b Mean 491.3000 Std. Deviation 817.69366 Most Extreme Differences Absolute.290 Positive.266 Negative -.290 Kolmogorov-Smirnov Z 2.595 Asymp. Sig. (2-tailed).000 a. Test distribution is Normal. b. Calculated from data.

UJI GLEJSER SEBELUM LN Coefficients a Unstandardized Coefficients Standardized Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant) 442.668 126.558 3.498.001 VAIC -2.548 4.232 -.069 -.602.549.965 1.036 UKURAN 277.224 230.284.156 1.204.232.761 1.314 LEVERAGE -163.405 154.475 -.137-1.058.293.764 1.308 a. Dependent Variable: ABS_RES HASIL MBR SETELAH LN Model Summary b Adjusted R Std. Error of Model R R Square Square the Estimate Durbin-Watson 1.320 a.102.063.78664 1.495 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: Ln_MBR ANOVA b Sum of Model Squares df Mean Square F Sig. 1 Regression 4.800 3 1.600 2.586.060 a Residual 42.078 68.619

Total 46.878 71 a. Predictors: (Constant), LEVERAGE, VAIC, UKURAN b. Dependent Variable: Ln_MBR Coefficients a Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant) 5.959.204 29.271.000 VAIC -.013.012 -.146-1.048.299.679 1.473 UKURAN.754.297.389 2.536.014.562 1.779 LEVERAGE -.356.170 -.275-2.100.039.768 1.303 a. Dependent Variable: Ln_MBR One-Sample Kolmogorov-Smirnov Test Ln_MBR N 76 Normal Parameters a,,b Mean 5.7359 Std. Deviation.79192 Most Extreme Differences Absolute.053 Positive.045 Negative -.053 Kolmogorov-Smirnov Z.462 Asymp. Sig. (2-tailed).983 a. Test distribution is Normal. b. Calculated from data.

UJI GLEJSER SETELAH LN Coefficients a Unstandardized Coefficients Standardized Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 (Constant).531.107 4.974.000 VAIC.010.006.217 1.518.134.679 1.473 UKURAN.018.156.019.118.906.562 1.779 LEVERAG -.097.089 -.147-1.090.280.768 1.303 E a. Dependent Variable: ABS_RES

HASIL LN MBR SETELAH WEIGHTING (PEMBOBOTAN) Model Summary c,d Std. Error of the Model R R Square b Adjusted R Square Estimate Durbin-Watson 1.993 a.986.985.99234 1.783 a. Predictors: Wt_LEVERAGE, Wt_SQROOT, Wt_UKURAN, Wt_VAIC b. For regression through the origin (the no-intercept model), R Square measures the proportion of the variability in the dependent variable about the origin explained by regression. This CANNOT be compared to R Square for models which include an intercept. c. Dependent Variable: Wt_Ln_MBR d. Linear Regression through the Origin ANOVA c,d Model Sum of Squares df Mean Square F Sig. 1 Regression 4784.467 4 1196.117 1214.661.000 a Residual 66.962 68.985 Total 4851.429 b 72 a. Predictors: Wt_LEVERAGE, Wt_SQROOT, Wt_UKURAN, Wt_VAIC b. This total sum of squares is not corrected for the constant because the constant is zero for regression through the origin. c. Dependent Variable: Wt_Ln_MBR d. Linear Regression through the Origin Coefficients a,b Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 Wt_SQROOT 5.773.222.961 26.045.000.149 6.703 Wt_VAIC.030.014.087 2.142.036.123 8.119 Wt_UKURAN.492.245.046 2.008.049.392 2.551 Wt_LEVERAGE -.534.120 -.105-4.439.000.364 2.748 a. Dependent Variable: Wt_Ln_MBR b. Linear Regression through the Origin

One-Sample Kolmogorov-Smirnov Test Wt_Ln_MBR N 72 Normal Parameters a,,b Mean 8.1218 Std. Deviation 1.19883 Most Extreme Differences Absolute.062 Positive.062 Negative -.058 Kolmogorov-Smirnov Z.524 Asymp. Sig. (2-tailed).947 a. Test distribution is Normal. b. Calculated from data.

UJI GLEJSER SETELEH LN MBR DI WEIGHTING Coefficients a,b Standardized Unstandardized Coefficients Coefficients Collinearity Statistics Model B Std. Error Beta t Sig. Tolerance VIF 1 Wt_SQROOT.567.124.804 4.567.000.149 6.703 Wt_VAIC.003.008.079.406.686.123 8.119 Wt_UKURAN.104.137.082.754.453.392 2.551 Wt_LEVERAGE -.080.067 -.134-1.191.238.364 2.748 a. Dependent Variable: ABS_RES b. Linear Regression through the Origin