Daftar Perusahaan Otomotif yang Terdatar di Bursa Efek Indonesia(Periode )

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114 Lampiran 1: Populasi Penelitian Daftar Perusahaan Otomotif yang Terdatar di Bursa Efek Indonesia(Periode 2006 2012) 89 1 PT. Astra Internasional Tbk. ASII 2 PT. Astra Otoparts Tbk. AUTO 3 PT. Indo Kordsa Tbk. BRAM 4 PT. Goodyear Indonesia Tbk. GDYR 5 PT. Gajah Tunggal Tbk. GJTL 6 PT. Indomobil Sukses Internasional Tbk. IMAS 7 PT. Indospring Tbk. INDS 8 PT. Multi Prima Sejahtera Tbk. LPIN 9 PT. Multistrada Arah Sarana Tbk. MASA 10 PT. Nipress Tbk. NIPS 11 PT. Prima Alloy Steel Universal Tbk. PRAS 12 PT. Selamat Sempurna Tbk. SMSM

115 Lampiran 2: Daftar Sampel Terpilih Daftar Sampel Terpilih Memenuhi Kriteria Sampel Terpilih 1 2 1 PT. Astra Internasional Tbk. S1 2 PT. Astra Otoparts Tbk. S2 3 PT. Indo Kordsa Tbk. S3 4 PT. Goodyear Indonesia Tbk. S4 5 PT. Gajah Tunggal Tbk. S5 6 PT. Indomobil Sukses Internasional Tbk. S6 7 PT. Indospring Tbk. S7 8 PT. Multi Prima Sejahtera Tbk. S8 9 PT. Multistrada Arah Sarana Tbk. S9 10 PT. Nipress Tbk. S10 11 PT. Prima Alloy Steel Universal Tbk. S11 12 PT. Selamat Sempurna Tbk. S12

116 Lampiran 3: Data Penelitian PT. Astra Internasional Tbk. (ASII) 1 DER 1,4078 1,1688 1,2142 1,0029 1,0986 1,0244 1,0295 2 lnsls 17,8357 18,0666 18,3909 18,4058 18,6830 18,9066 19,0522 3 lnast 17,8747 17,9669 18,2067 18,3035 18,5416 18,8493 19,0210 4 ROA 0,1014 0,1742 0,1903 0,1845 0,1864 0,1679 0,1531 5 MTBR 2,8406 4,0991 1,2912 3,5213 4,4786 3,9503 0,3426 6 ASTG -0,0530 0,0966 0,2712 0,1016 0,2690 0,3604 0,1873 7 SGR -0,0976 0,2599 0,3831 0,0151 0,3194 0,2506 0,1568 8 PER 17,120 16,950 4,650 13,990 15,370 14,030 13,700 9 FAR 0,2250 0,2225 0,0076 0,2467 0,2159 0,1864 0,1884 10 FAR+ 0,2940 0,2946 0,1150 0,3286 0,3120 0,2645 0,2722 11 CRR 0,7839 1,3195 1,3217 1,3731 1,2618 1,3640 1,3991 12 QCR 0,5845 1,1048 0,9994 1,1009 0,9698 1,1162 1,1170 13 KSI 0,5011 0,5011 0,5011 0,5011 0,5011 0,5011 0,5009 14 DOL 2,9159 3,4014 1,0158 4,4901 0,8838 0,8997 0,5262 PT. Astra Otoparts Tbk. (AUTO) 1 DER 0,5723 0,4841 0,4489 0,3934 0,3841 0,4746 0,6193 2 lnsls 15,0310 15,2519 15,4903 15,4767 15,6489 15,8121 15,9290 3 lnast 14,9235 15,0551 15,1971 15,3513 15,5357 15,7563 15,9995 4 ROA 0,1278 0,1672 0,1939 0,2039 0,2497 0,1803 0,1423 5 MTBR 1,2102 1,1342 1,0177 1,3823 2,7871 2,7758 2,6010 6 ASTG -0,0002 0,1408 0,1526 0,1667 0,2026 0,2468 0,2754 7 SGR -0,1249 0,2472 0,2693-0,0135 0,1879 0,1773 0,1241 8 PER 8,000 5,640 4,770 5,770 9,430 11,860 13,250 9 FAR 0,2375 0,1938 0,1764 0,1500 0,1764 0,2223 0,2347 10 FAR+ 0,3729 0,3376 0,3447 0,2608 0,3032 0,3595 0,3648 11 CRR 1,7476 2,1966 2,1334 2,1739 1,7574 1,3549 1,1650 12 QCR 1,1917 1,5416 1,3661 1,6490 1,1915 0,8502 0,7452 13 KSI 0,8472 0,8672 0,9391 0,9565 0,9565 0,9565 0,9565 14 DOL 0,7856 1,9913 1,2517-16,8453 2,5139-0,5633 0,0532

117 Lampiran 3 (Lanjutan) : Data Penelitian PT. Indo Kordsa Tbk. (BRAM) 1 DER 0,6085 0,5172 0,4812 0,2290 0,2647 0,3815 0,3556 2 lnsls 14,2280 14,2519 14,3089 14,2214 14,4063 14,4575 14,3366 3 lnast 14,2401 14,2569 14,3300 14,1153 14,2161 14,3224 14,6146 4 ROA 0,0260 0,0430 0,0962 0,0993 0,1433 0,0741 0,0843 5 MTBR 1,0257 0,9564 0,8117 0,6645 1,0070 0,8051 0,8231 6 ASTG -0,1056 0,0170 0,0759-0,1932 0,1061 0,1122 0,3394 7 SGR -0,1442 0,0242 0,0587-0,0838 0,2031 0,0526-0,1139 8 PER 46,690 21,840 8,550 9,050 8,050 17,600 5,690 9 FAR 0,4500 0,4117 0,3869 0,4783 0,4855 0,4293 0,5679 10 FAR+ 0,6780 0,6033 0,6278 0,6540 0,6807 0,6406 0,7279 11 CRR 3,9344 4,9761 2,1929 3,4374 4,0176 2,7889 2,1276 12 QCR 2,2973 3,3502 1,2896 2,1952 2,4055 1,6316 1,2209 13 KSI 0,5690 0,6582 0,6582 0,6582 0,6582 0,6582 0,6582 14 DOL 5,5582 28,2477 24,0145 1,9978 2,9400-8,0878-4,5870 PT. Goodyear Indonesia Tbk. (GDYR) 1 DER 0,6174 0,9353 2,4454 1,7149 1,7624 1,7727 1,3500 2 lnsls 13,7978 13,9006 14,0343 14,0723 14,3671 14,4467 14,4920 3 lnast 13,0277 13,2702 13,8376 13,9356 13,9521 13,9862 13,9964 4 ROA 0,0806 0,1056 0,0065 0,1502 0,0676 0,0240 0,0615 5 MTBR 0,9622 1,7795 0,6909 0,9477 1,2350 0,9153 0,9891 6 ASTG -0,0085 0,2744 0,7637 0,1031 0,0167 0,0347 0,0103 7 SGR 0,1228 0,1084 0,1430 0,0389 0,3429 0,0829 0,0463 8 PER 10,650 12,570 252,450 3,250 7,700 10,520 7,810 9 FAR 0,2533 0,3824 0,5364 0,6170 0,5108 0,4719 0,4637 10 FAR+ 0,4763 0,5954 0,6840 0,7770 0,6959 0,6677 0,6695 11 CRR 2,1519 1,3524 1,4880 0,9048 0,8642 0,8535 0,8949 12 QCR 1,4471 0,8446 0,9839 0,4955 0,5133 0,5195 0,5278 13 KSI 0,8500 0,8500 0,8500 0,9392 0,9416 0,9416 0,9402 14 DOL -50,7641 6,1764-6,2392 634,1561-1,5835-7,6452 34,4679

118 Lampiran 3 (Lanjutan) : Data Penelitian PT. Gajah Tunggal Tbk. (GJTL) 1 DER 2,4076 2,5438 4,2828 2,3240 1,9410 1,6077 1,3492 2 lnsls 15,5149 15,7116 15,8904 15,8870 16,1034 16,2871 16,3475 3 lnast 15,8001 15,9502 15,9804 15,9990 16,1546 16,2626 16,3704 4 ROA 0,0321 0,0166-0,0889 0,1435 0,1081 0,0741 0,0747 5 MTBR 0,8606 0,6507 0,4226 0,5546 2,2728 2,3595 1,4154 6 ASTG -0,0272 0,1620 0,0307 0,0188 0,1684 0,1141 0,1139 7 SGR 0,1318 0,2174 0,1958-0,0034 0,2417 0,2017 0,0623 8 PER 15,520 17,090-1,120 1,640 9,650 11,050 7,140 9 FAR 0,4378 0,3868 0,4153 0,4066 0,3930 0,3972 0,4757 10 FAR+ 0,5835 0,4975 0,5759 0,5037 0,4980 0,5409 0,5906 11 CRR 1,9430 2,1535 1,4760 2,5318 1,7609 1,7493 1,7199 12 QCR 1,0934 1,5533 0,8004 1,8851 1,3337 1,1768 1,2302 13 KSI 0,6157 0,6500 0,5787 0,5637 0,5981 0,5981 0,5970 14 DOL 1,5451-1,8332-33,2955 778,9638-0,4978-1,1716 1,9708 PT. Indomobil Sukses Internasional Tbk. (IMAS) 1 DER 20,8978 27,0394 17,7764 10,1578 4,9926 1,5401 2,0793 2 lnsls 14,8834 15,4416 15,9193 15,7528 16,2075 16,5740 16,8002 3 lnast 15,3014 15,4063 15,5344 15,4434 15,8931 16,3738 16,6821 4 ROA -0,0237 0,0063 0,0302 0,0454 0,0809 0,0921 0,0492 5 MTBR 3,6272 6,9965 3,1618 1,9596 5,9292 3,4810 2,5675 6 ASTG -0,0408 0,1107 0,1368-0,0871 0,5678 0,6173 0,3612 7 SGR -0,3578 0,7477 0,6124-0,1535 0,5758 0,4428 0,2539 8 PER 558,940 843,640 39,350 7,290 16,880 16,600 16,560 9 FAR 0,1310 0,1198 0,1220 0,1175 0,0934 0,1454 0,1679 10 FAR+ 0,2184 0,2058 0,2473 0,2679 0,2866 0,3334 0,3891 11 CRR 0,9540 0,8363 0,9094 0,9340 1,0694 1,3678 1,2323 12 QCR 0,7964 0,7048 0,7053 0,6839 0,7036 0,9194 0,7441 13 KSI 0,9461 0,9461 0,9310 0,9310 0,7040 0,7040 0,7040 14 DOL 7,1406-1,7283 7,3690-2,4200 3,1199 1,8971-1,0728

119 Lampiran 3 (Lanjutan) : Data Penelitian PT. Indospring Tbk. (INDS) 1 DER 6,1256 6,6110 7,4482 2,7509 2,3898 0,8027 0,4648 2 lnsls 12,8764 13,2436 13,7780 13,4873 13,8423 14,0266 14,2055 3 lnast 13,1034 13,3035 13,7302 13,3393 13,5549 13,9463 14,3252 4 ROA 0,0089 0,0354 0,0514 0,1287 0,1363 0,1410 0,0837 5 MTBR 0,2615 0,6908 0,4141 0,2832 1,7323 1,2456 1,1641 6 ASTG 0,0673 0,2216 0,5323-0,3236 0,2407 0,4790 0,4607 7 SGR -0,0956 0,4437 0,7065-0,2523 0,4262 0,2024 0,1960 8 PER 8,290 5,500 1,410 0,800 5,540 6,540 2,450 9 FAR 0,4413 0,3606 0,2265 0,2955 0,2398 0,2992 0,4542 10 FAR+ 0,7587 0,7470 0,7437 0,7010 0,6524 0,6744 0,7717 11 CRR 0,9843 1,0706 1,0750 1,2722 1,2867 2,4041 2,3340 12 QCR 0,3407 0,3742 0,3276 0,4967 0,5156 1,1093 0,9122 13 KSI 0,8746 0,8746 0,8746 0,8746 0,8811 0,8811 0,8811 14 DOL 15,9145 8,7130 1,7351-2,7529 0,7371 2,6195-0,6779 PT. Multi Prima Sejahtera Tbk. (LPIN) 1 DER 0,7698 0,7890 1,2141 0,4859 0,4115 0,3308 0,2775 2 lnsls 10,2831 10,8027 10,9895 10,9697 10,9941 11,0502 11,1380 3 lnast 11,5968 11,8440 12,1169 11,8344 11,9246 11,9664 12,0568 4 ROA -0,0036 0,1515 0,0436 0,0957 0,1228 0,1012 0,0954 5 MTBR 0,2075 0,4368 0,2444 0,2519 0,6210 0,3954 1,2055 6 ASTG -0,0711 0,2806 0,3138-0,2462 0,0945 0,0427 0,0947 7 SGR -0,3253 0,6814 0,2054-0,0196 0,0247 0,0578 0,0918 8 PER -13,580 1,890 4,240 2,290 4,700 4,130 9,790 9 FAR 0,0166 0,0143 0,0076 0,0052 0,0111 0,0152 0,0328 10 FAR+ 0,1811 0,1811 0,4024 0,1831 0,1930 0,1736 0,1876 11 CRR 0,7969 1,7011 1,3013 2,2701 2,5167 2,9357 2,9032 12 QCR 0,4007 1,3069 0,5594 1,6838 1,8338 2,2159 2,0950 13 KSI 0,2971 0,2971 0,2971 0,2971 0,8637 0,8637 0,2500 14 DOL 2,9642-82,4791-3,0280-33,3861 16,4230-2,4319 0,3504

120 Lampiran 3 (Lanjutan) : Data Penelitian PT. Multistrada Arah Sarana Tbk.(MASA) 1 DER 0,9868 0,3970 0,8517 0,7375 0,8651 1,6805 0,6789 2 lnsls 13,2499 13,7083 14,1034 14,3411 14,5121 14,8670 14,9479 3 lnast 14,1758 14,4028 14,6822 14,7461 14,9268 15,3708 15,6137 4 ROA 0,0113 0,0243 0,0028 0,0908 0,0748 0,0398 0,0036 5 MTBR 0,9922 1,0215 0,6668 0,8594 1,2395 1,7315 1,1489 6 ASTG 0,3235 0,2550 0,3223 0,0661 0,1981 0,5589 0,2750 7 SGR 1,3829 0,5815 0,4846 0,2684 0,1865 0,4261 0,0843 8 PER 4,540 35,040 288,090 7,170 11,470 21,440 607,120 9 FAR 0,8194 0,6802 0,6819 0,6675 0,7025 0,6840 0,6835 10 FAR+ 0,8961 0,8091 0,8317 0,8384 0,8320 0,8500 0,8361 11 CRR 0,5612 1,3211 0,8938 0,8593 0,6704 0,4818 1,3934 12 QCR 0,2123 0,4569 0,3762 0,3527 0,2740 0,1816 0,6163 13 KSI 0,7574 0,5992 0,6310 0,4990 0,4780 0,4780 0,4773 14 DOL -1,1815 2,9388-1,7564 128,3824-0,0699-0,4025-10,5055 PT. Nipress Tbk. (NIPS) 1 DER 1,4364 2,1791 1,6356 1,4762 1,2786 1,6910 1,4458 2 lnsls 12,4690 12,9135 13,0825 12,5423 12,9015 13,2694 13,4627 3 lnast 12,3024 12,5712 12,6916 12,6587 12,7296 13,0096 13,1724 4 ROA 0,0566 0,0255 0,0129 0,0225 0,0522 0,0555 0,0412 5 MTBR 0,2976 0,4053 0,2417 0,2284 0,5366 0,4820 0,3816 6 ASTG 0,1578 0,3085 0,1280-0,0324 0,0736 0,3232 0,1768 7 SGR 0,1889 0,5597 0,1842-0,4174 0,4322 0,4449 0,2133 8 PER 3,380 7,280 19,210 7,870 6,280 4,490 3,800 9 FAR 0,5359 0,3889 0,4301 0,4522 0,4608 0,3928 0,4069 10 FAR+ 0,6575 0,5309 0,5810 0,6883 0,6207 0,6653 0,6412 11 CRR 1,0799 1,0518 1,0351 0,9926 1,0172 1,0836 1,1034 12 QCR 0,7912 0,8044 0,7545 0,5557 0,7095 0,5884 0,6627 13 KSI 0,3711 0,3711 0,3711 0,3711 0,3711 0,3711 0,5282 14 DOL 8,5227-0,7339-2,3412-1,6633 3,4501 0,9130-0,5953

121 Lampiran 3 (Lanjutan) : Data Penelitian PT. Prima Alloy Steel Universal Tbk. (PRAS) 1 DER 3,6782 3,1906 3,8393 4,3569 2,3253 2,4473 1,0599 2 lnsls 13,5465 13,3971 12,9256 11,9904 11,2249 12,7082 12,6450 3 lnast 13,2932 13,2048 13,2273 12,9497 13,0272 13,0855 13,2662 4 ROA -0,0065 0,0076-0,0369-0,1119 0,0025 0,0134 0,0122 5 MTBR 0,4174 0,6036 0,6149 0,8910 0,4001 0,5553 0,5350 6 ASTG 0,0572-0,0847 0,0228-0,2424 0,0806 0,0601 0,1981 7 SGR 0,1098-0,1388-0,3760-0,6075-0,5350 3,4075-0,0612 8 PER -19,160 28,200-4,760-1,930 178,540 17,130 3,620 9 FAR 0,2040 0,2441 0,2986 0,3652 0,4861 0,4617 0,6109 10 FAR+ 0,3353 0,4496 0,4912 0,5991 0,6992 0,6872 0,8186 11 CRR 1,0807 1,0503 1,0088 2,0348 1,3525 1,1379 1,1132 12 QCR 0,8884 0,7405 0,7188 1,2047 0,7327 0,6365 0,4364 13 KSI 0,8743 0,8743 0,8113 0,4576 0,4524 0,4524 0,4524 14 DOL -14,1084 14,8715 15,9654-2,1425 1,9145 1,3778-1,4855 PT. Selamat Sempurna Tbk. (SMSM) 1 DER 0,5313 0,6565 0,6266 0,8000 0,9616 0,6953 0,7569 2 lnsls 13,6889 13,8776 14,1183 14,1337 14,2613 14,4077 14,5874 3 lnast 13,4824 13,6292 13,7427 13,7554 13,8805 13,9438 14,1810 4 ROA 0,1470 0,1574 0,1545 0,1974 0,1919 0,2460 0,0454 5 MTBR 1,0077 13,3544 1,7132 2,1690 2,9660 2,9197 4,4314 6 ASTG 0,0808 0,1582 0,1202 0,0128 0,1333 0,0654 0,2678 7 SGR 0,0228 0,2077 0,2722 0,0156 0,1362 0,1576 0,1969 8 PER 7,610 7,710 10,230 8,130 10,240 8,930 13,540 9 FAR 0,3615 0,3840 0,3856 0,3626 0,3532 0,3499 0,3393 10 FAR+ 0,6212 0,6792 0,6936 0,6333 0,6409 0,6353 0,6041 11 CRR 1,9887 1,7093 1,8180 1,5870 2,1742 2,7158 1,9443 12 QCR 1,0920 0,8271 0,8803 0,8833 1,1653 1,4900 1,1191 13 KSI 0,6136 0,6994 0,5813 0,5813 0,5813 0,5813 0,5813 14 DOL 1,4085 1,1560 0,3660 18,8960 0,7472 2,3193-3,8915

KMO and Bartlett's Test Kaiser-Meyer-Olkin Measure of Sampling,457 Adequacy. Approx. Chi-Square 973,843 Bartlett's Test of df 78 Sphericity Sig.,000 Anti-image Correlation Anti-image Covariance Anti-image Matrices ROA MTBR ASTG FAR FAR+ CRR QCR KSI DOL SGR PER lnast lnsls ROA,569 -,172 -,069,003,010 -,019,011 -,119 -,160 -,034,202,005 -,006 MTBR -,172,741 -,046 -,015,019 -,014,016 -,060,044 -,028 -,220,006 -,006 ASTG -,069 -,046,785 -,001 -,004 -,008,012 -,045,056 -,227 -,057,004 -,004 FAR,003 -,015 -,001,085 -,060,032 -,030,021 -,011,002 -,053 -,002,002 FAR+,010,019 -,004 -,060,049 -,030,029 -,008 -,015 -,011,042,001,000 CRR -,019 -,014 -,008,032 -,030,029 -,028,003,030,017 -,015,000,000 QCR,011,016,012 -,030,029 -,028,027,000 -,028 -,013,015,000,000 KSI -,119 -,060 -,045,021 -,008,003,000,855 -,061,071 -,115,001,000 DOL -,160,044,056 -,011 -,015,030 -,028 -,061,852,064 -,007 -,002,002 SGR -,034 -,028 -,227,002 -,011,017 -,013,071,064,849 -,001,003 -,003 PER,202 -,220 -,057 -,053,042 -,015,015 -,115 -,007 -,001,729 -,007,007 lnast,005,006,004 -,002,001,000,000,001 -,002,003 -,007,003 -,003 lnsls -,006 -,006 -,004,002,000,000,000,000,002 -,003,007 -,003,003 ROA,694 a -,265 -,103,014,057 -,147,087 -,170 -,230 -,049,314,108 -,129 MTBR -,265,604 a -,060 -,061,098 -,093,113 -,076,055 -,035 -,300,120 -,124 ASTG -,103 -,060,715 a -,004 -,022 -,053,084 -,054,069 -,278 -,076,071 -,080 FAR,014 -,061 -,004,409 a -,927,634 -,639,079 -,041,009 -,215 -,111,097 FAR+,057,098 -,022 -,927,384 a -,788,800 -,037 -,072 -,055,222,042 -,026 CRR -,147 -,093 -,053,634 -,788,345 a -,982,020,188,110 -,106 -,045,048 QCR,087,113,084 -,639,800 -,982,375 a -,002 -,182 -,086,109,037 -,038 KSI -,170 -,076 -,054,079 -,037,020 -,002,653 a -,072,084 -,145,017,002 DOL -,230,055,069 -,041 -,072,188 -,182 -,072,383 a,075 -,009 -,031,036 SGR -,049 -,035 -,278,009 -,055,110 -,086,084,075,641 a -,001,062 -,057 PER,314 -,300 -,076 -,215,222 -,106,109 -,145 -,009 -,001,355 a -,133,137 lnast,108,120,071 -,111,042 -,045,037,017 -,031,062 -,133,567 a -,997 lnsls -,129 -,124 -,080,097 -,026,048 -,038,002,036 -,057,137 -,997,572 a a. Measures of Sampling Adequacy(MSA)

123 Lampiran 4 (Lanjutan) : Output SPSS Uji Faktor Hasil Akhir Uji Faktor KMO and Bartlett's Test Kaiser-Meyer-Olkin Measure of Sampling,548 Adequacy. Approx. Chi-Square 51,000 Bartlett's Test of df 15 Sphericity Sig.,000 Anti-image Covariance Anti-image Correlation Anti-image Matrices ROA MTBR FAR QCR KSI lnsls ROA,720 -,169,082 -,225 -,128 -,231 MTBR -,169,862,096,124 -,109 -,092 FAR,082,096,820,198,103,159 QCR -,225,124,198,839,087,102 KSI -,128 -,109,103,087,887,237 lnsls -,231 -,092,159,102,237,772 ROA,592 a -,215,107 -,289 -,160 -,309 MTBR -,215,623 a,115,146 -,125 -,112 FAR,107,115,662 a,239,121,199 QCR -,289,146,239,453 a,100,127 KSI -,160 -,125,121,100,356 a,286 lnsls -,309 -,112,199,127,286,511 a a. Measures of Sampling Adequacy(MSA) Communalities Initial Extraction ROA 1,000,606 MTBR 1,000,667 FAR 1,000,508 QCR 1,000,810 KSI 1,000,826 lnsls 1,000,750 Extraction Method: Principal Component Analysis.

Reproduced Correlation Residual b Reproduced Correlations ROA MTBR FAR QCR KSI lnsls ROA,606 a,397 -,538,361,135,422 MTBR,397,667 a -,258 -,236,317,366 FAR -,538 -,258,508 a -,450 -,141 -,294 QCR,361 -,236 -,450,810 a -,016,012 KSI,135,317 -,141 -,016,826 a -,396 TRVSL,422,366 -,294,012 -,396,750 a ROA -,115,241 -,075 -,019 -,080 MTBR -,115,068,185 -,172 -,165 FAR,241,068,186,043,044 QCR -,075,185,186 -,017,012 KSI -,019 -,172,043 -,017,204 lnsls -,080 -,165,044,012,204 Extraction Method: Principal Component Analysis. a. Reproduced communalities b. Residuals are computed between observed and reproduced correlations. There are 10 (66,0%) nonredundant residuals with absolute values greater than 0.05.

125 Lampiran 5: Output SPSS Statistik Deskriptif Output SPSS Hasil Uji Statistik Deskriptif Descriptive Statistics N Range Minimum Maximum Mean Std. Deviation DER 84 26,8104,2290 27,0394 27,0394 4,2087724 lnsls 84 8,7691 10,2831 19,0522 19,0522 1,9058969 ROA 84,3616 -,1119,2497,2497,0728170 MTBR 84 13,1469,2075 13,3544 13,3544 1,8653608 FAR 84,8142,0052,8194,8194,1895415 QCR 84 3,1686,1816 3,3502 3,3502,5647257 Valid N (listwise) 84

One-Sample Kolmogorov-Smirnov Test DER N 84 rmal Parameters a,b Std. 4,208772 Mean 2,378996 Deviation 4 Absolute,318 Most Extreme Positive,318 Differences Negative -,305 Kolmogorov-Smirnov Z 2,912 Asymp. Sig. (2-tailed),000 a. Test distribution is rmal. b. Calculated from data.

One-Sample Kolmogorov-Smirnov Test DER N 84 rmal Parameters a,b Std.,42115 Mean,9879 Deviation Absolute,071 Most Extreme Positive,071 Differences Negative -,046 Kolmogorov-Smirnov Z,649 Asymp. Sig. (2-tailed),793 a. Test distribution is rmal. b. Calculated from data.

129 Lampiran 8(Lanjutan) : Output SPSS Ujirmalitas Uji rmalitas 3 One-Sample Kolmogorov-Smirnov Test RES_1 N 84 rmal Parameters a,b Std.,2681889 Mean,0000000 Deviation 9 Absolute,057 Most Extreme Positive,057 Differences Negative -,044 Kolmogorov-Smirnov Z,526 Asymp. Sig. (2-tailed),945 a. Test distribution is rmal. b. Calculated from data.

131 Lampiran 9(Lanjutan) : Output SPSS UjiHeteroskedastisitas Uji Heteroskedastisitas 2 Correlations lnsls ROA MTBR FAR QCR KSI ABS Correlation 1,000,367 **,677 ** -,129,186,259 * -,080 lnsls Coefficient Sig. (2-tailed).,001,000,241,090,017,469 N 84 84 84 84 84 84 84 Correlation,367 ** 1,000,430 ** -,336 **,432 **,117,004 ROA Coefficient Sig. (2-tailed),001.,000,002,000,289,969 N 84 84 84 84 84 84 84 Correlation,677 **,430 ** 1,000 -,215 *,132,320 ** -,095 MTBR Coefficient Sig. (2-tailed),000,000.,050,233,003,390 N 84 84 84 84 84 84 84 Correlation -,129 -,336 ** -,215 * 1,000 -,302 ** -,151,114 Spearman's Coefficient FAR rho Sig. (2-tailed),241,002,050.,005,171,302 N 84 84 84 84 84 84 84 Correlation,186,432 **,132 -,302 ** 1,000 -,017,112 QCR Coefficient Sig. (2-tailed),090,000,233,005.,878,309 N 84 84 84 84 84 84 84 Correlation,259 *,117,320 ** -,151 -,017 1,000,116 KSI Coefficient Sig. (2-tailed),017,289,003,171,878.,292 N 84 84 84 84 84 84 84 Correlation -,080,004 -,095,114,112,116 1,000 ABS Coefficient Sig. (2-tailed),469,969,390,302,309,292. N 84 84 84 84 84 84 84 **. Correlation is significant at the 0.01 level (2-tailed). *. Correlation is significant at the 0.05 level (2-tailed).

132 Lampiran 10: Output SPSS UjiMultikolinearitas Uji Multikolinearitas 1 Model 1 Collinearity Statistics Tolerance VIF (Constant) lnsls,750 1,333 ROA,722 1,385 MTBR,788 1,269 FAR,845 1,183 QCR,852 1,174 KSI,950 1,052 Uji Multikolinearitas 2 Coefficient Correlations a Model KSI QCR MTBR FAR lnsls ROA KSI 1,000,062 -,052,079 -,127 -,035 QCR,062 1,000,143,215,037 -,263 Correlations MTBR -,052,143 1,000,164 -,312 -,144 FAR,079,215,164 1,000 -,099,202 lnsls -,127,037 -,312 -,099 1,000 -,305 1 ROA -,035 -,263 -,144,202 -,305 1,000 KSI,023,001,000,002,000 -,003 QCR,001,003,000,002,000 -,008 Covariances MTBR,000,000,000,001,000 -,001 FAR,002,002,001,031,000,017 lnsls,000,000,000,000,000 -,003 ROA -,003 -,008 -,001,017 -,003,244 a. Dependent Variable: trder

133 Lampiran 11 : Output SPSS UjiAutokorelasi Uji Autokorelasi Model Summary b Model Durbin-Watson 1 1,542 a. Predictors: (Constant), KSI, QCR, MTBR, FAR, lnsls, ROA b. Dependent Variable: trder

134 Lampiran 12: Output SPSS UjiHipotesis Variables Entered/Removed a Model Variables Entered Variables Removed Method KSI, QCR, MTBR,. Enter 1 FAR, lnsls, ROA b a. Dependent Variable: trder b. All requested variables entered. Model Summary b Model R R Square Adjusted R Square Std. Error of the Estimate 1,771 a,594,563,2784419 a. Predictors: (Constant), KSI, QCR, MTBR, FAR, lnsls, ROA b. Dependent Variable: trder ANOVA a Model Sum of Squares df Mean Square F Sig. Regression 8,752 6 1,459 18,814,000 b 1 Residual 5,970 77,078 Total 14,722 83 a. Dependent Variable: trder b. Predictors: (Constant), KSI, QCR, MTBR, FAR, lnsls, ROA

135 Lampiran 12 (Lanjutan) : Output SPSS UjiHipotesis Coefficients a Model Unstandardized Coefficients Standardized Coefficients t Sig. B Std. Error Beta (Constant) 1,203,273 4,414,000 lnsls -,067,019 -,303-3,619,001 ROA 3,242,494,561 6,563,000 1 MTBR -,006,018 -,028 -,344,731 FAR,615,175,277 3,504,001 QCR,358,059,480 6,100,000 KSI -,107,152 -,053 -,705,483 a. Dependent Variable: trder Residuals Statistics a Minimum Maximum Mean Std. Deviation Predicted Value,327425 1,784675,987866,3247215 84 Std. Predicted Value -2,034 2,454,000 1,000 84 Standard Error of,039,221,076,026 84 Predicted Value Adjusted Predicted Value,304895 1,909712,986643,3288411 84 Residual -,8085280,7125171,0000000,2681890 84 Std. Residual -2,904 2,559,000,963 84 Stud. Residual -3,008 2,632,002 1,006 84 Deleted Residual -,8673883,7539210,0012224,2932846 84 Stud. Deleted Residual -3,181 2,741,002 1,021 84 Mahal. Distance,600 51,361 5,929 6,228 84 Cook's Distance,000,141,014,025 84 Centered Leverage Value,007,619,071,075 84 a. Dependent Variable: trder N