LAMPIRAN SPSS STATISTIK DESKRIPTIF

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1 LAMPIRAN SPSS STATISTIK DESKRIPTIF Descriptive Statistics N Minimum Maximum Mean Std. Deviation CSRI 351,11538,32051, , CR 351, , , , Valid N (listwise) 351 Descriptive Statistics N Minimum Maximum Mean Std. Deviation CSRI 96,12821,32051, , CR 96 2, , , , Valid N (listwise) 96 Descriptive Statistics N Minimum Maximum Mean Std. Deviation CSRI 255,11538,32051, , CR 255, , , , Valid N (listwise) 255

2 UJI ASUMSI KLASIK UJI NORMALITAS (SEBELUM NORMAL) Case Processing Summary Cases Valid Missing Total N Percent N Percent N Percent Unstandardized Residual ,0% 0 0,0% ,0% Unstandardized Residual Descriptives Statistic Std. Error Mean 0E-7, % Confidence Interval for Mean Lower Bound -, Upper Bound, % Trimmed Mean -, Median -, Variance,006 Std. Deviation, Minimum -,17232 Maximum,28950 Range,46182 Interquartile Range,08977 Skewness,590,113 Kurtosis,533,226 M-Estimators Huber's M- Estimator a Tukey's Biweight b Hampel's M- Estimator c Andrews' Wave d Unstandardized Residual -, , , , a. The weighting constant is 1,339. b. The weighting constant is 4,685. c. The weighting constants are 1,700, 3,400, and 8,500 d. The weighting constant is 1,340*pi. Weighted Average(Definition 1) Tukey's Hinges Unstandardized Residual Unstandardized Residual Percentiles Percentiles , , , , , , , , , ,

3 Unstandardized Residual Extreme Values Case Number Value 1 70, ,28934 Highest 3 268, , , , ,17232 Lowest , , ,14663 Tests of Normality Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig. Unstandardized Residual, ,000, ,000 a. Lilliefors Significance Correction

4 UJI NORMALITAS (SETELAH NORMAL) Case Processing Summary Cases Valid Missing Total N Percent N Percent N Percent Unstandardized Residual ,0% 0 0,0% ,0% Unstandardized Residual Descriptives Statistic Std. Error Mean 0E-7, % Confidence Interval for Mean Lower Bound -, Upper Bound, % Trimmed Mean -, Median -, Variance,003 Std. Deviation, Minimum -,09171 Maximum,11435 Range,20606 Interquartile Range,07479 Skewness,301,130 Kurtosis -,653,260 M-Estimators Huber's M- Estimator a Tukey's Biweight b Hampel's M- Estimator c Andrews' Wave d Unstandardized Residual -, , , , a. The weighting constant is 1,339. b. The weighting constant is 4,685. c. The weighting constants are 1,700, 3,400, and 8,500 d. The weighting constant is 1,340*pi. Weighted Average(Definition 1) Tukey's Hinges Unstandardized Residual Unstandardized Residual Percentiles Percentiles , , , , , , , , , ,

5 Unstandardized Residual Extreme Values Case Number Value 1 351, ,11356 Highest 3 349, , , , ,09041 Lowest 3 3 -, , ,08825 Tests of Normality Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig. Unstandardized Residual, ,200*, ,132 *. This is a lower bound of the true significance. a. Lilliefors Significance Correction UJI MULTIKOLINEARITAS Model Coefficients a Unstandardized Standardized t Sig. Collinearity Coefficients Coefficients Statistics B Std. Error Beta Tolerance VIF (Constant),201,005 41,148,000 1 CR,005,002,108 2,023,044 1,000 1,000 a. Dependent Variable: CSRI UJI AUTOKORELASI Model Summary b Model R R Square Adjusted R Std. Error of the Durbin-Watson Square Estimate 1,108 a,012,009, ,005 a. Predictors: (Constant), CR b. Dependent Variable: CSRI

6 UJI HETEROSKEDASTISITAS Variables Entered/Removed a Model Variables Variables Method Entered Removed 1 CR b. Enter a. Dependent Variable: ABSOLUT b. All requested variables entered. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1,131 a,017,014,02855 a. Predictors: (Constant), CR ANOVA a Model Sum of Squares df Mean Square F Sig. Regression,005 1,005 6,073,054 b 1 Residual, ,001 Total, a. Dependent Variable: ABSOLUT b. Predictors: (Constant), CR Coefficients a Model Unstandardized Coefficients Standardized Coefficients B Std. Error Beta (Constant),035,003 12,743,000 1 CR,003,001,131 2,464,054 a. Dependent Variable: ABSOLUT t Sig.

7 UJI H1 Variables Entered/Removed a Model Variables Variables Method Entered Removed 1 CR b. Enter a. Dependent Variable: CSRI b. All requested variables entered. Model Summary b Model R R Square Adjusted R Square Std. Error of the Estimate 1,108 a,012,009, a. Predictors: (Constant), CR b. Dependent Variable: CSRI ANOVA a Model Sum of Squares df Mean Square F Sig. Regression,010 1,010 4,093,044 b 1 Residual, ,003 Total, a. Dependent Variable: CSRI b. Predictors: (Constant), CR Coefficients a Model Unstandardized Coefficients Standardized Coefficients B Std. Error Beta (Constant),201,005 41,148,000 1 CR,005,002,108 2,023,044 a. Dependent Variable: CSRI t Sig.

8 UJI H2a Variables Entered/Removed a Model Variables Variables Method Entered Removed 1 CR b. Enter a. Dependent Variable: CSRI b. All requested variables entered. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1,003 a,000,011, a. Predictors: (Constant), CR ANOVA a Model Sum of Squares df Mean Square F Sig. Regression,000 1,000,001,979 b 1 Residual,272 94,003 Total, a. Dependent Variable: CSRI b. Predictors: (Constant), CR Coefficients a Model Unstandardized Coefficients Standardized Coefficients B Std. Error Beta (Constant),218,016 13,985,000 1 CR,120E-3,005,003,027,979 a. Dependent Variable: CSRI t Sig.

9 UJI H2b Variables Entered/Removed a Model Variables Variables Method Entered Removed 1 CR b. Enter a. Dependent Variable: CSRI b. All requested variables entered. Model Summary Model R R Square Adjusted R Square Std. Error of the Estimate 1,111 a,012,008, a. Predictors: (Constant), CR ANOVA a Model Sum of Squares df Mean Square F Sig. Regression,008 1,008 3,156,077 b 1 Residual, ,002 Total, a. Dependent Variable: CSRI b. Predictors: (Constant), CR Coefficients a Model Unstandardized Coefficients Standardized Coefficients B Std. Error Beta (Constant),191,009 21,068,000 1 CR -,012,007 -,111-1,777,077 a. Dependent Variable: CSRI t Sig.

10 UJI H3 CSRI Group Statistics CR N Mean Std. Deviation Std. Error Mean FD 255, , , nonfd 96, , , CSRI Equal variances assumed Equal variances not assumed Levene's Test for Equality of Variances F Sig. t df Sig. (2- tailed) Independent Samples Test t-test for Equality of Means Mean Difference Std. Error Difference 95% Confidence Interval of the Difference Lower Upper 1,439,231-1, ,056 -, , , , , ,679,067 -, , , ,

11 LAMPIRAN DATA PANEL NO TAHUN KODE CSRI CR NO TAHUN KODE CSRI CR NO TAHUN KODE CSRI CR ADES 0,2692 1, KKGI 0,2692 2, INDS 0,2179 2, FAST 0,2436 1, AMFG 0,3077 4, INTA 0,1923 0, ICBP 0,2436 0, BRNA 0,2692 1, KOBX 0,1410 1, MYOR 0,1795 2, IGAR 0,2436 5, LPIN 0,1795 2, MLBI 0,1667 0, LMPI 0,2051 1, NIPS 0,1795 1, ROTI 0,1667 2, SIAP 0,1923 2, PRAS 0,2308 1, PTSP 0,1410 1, SIMA 0,1923 0, UNTR 0,1282 1, SMART 0,3205 1, FPNI 0,1795 0, INTD 0,2821 2, TBLA 0,2051 1, TRST 0,2051 1, MDRN 0,2179 2, RMBA 0,2179 2, YPAS 0,3077 1, INAF 0,2692 2, GGRM 0,1795 2, SMCB 0,1923 1, KLBF 0,1410 3, HMSP 0,2051 1, INTP 0,3205 6, ADES 0,2436 1, CNTX 0,2179 0, BTON 0,2436 3, DLTA 0,1667 4, TIRT 0,1667 1, CTBN 0,2692 2, FAST 0,2564 1, FASW 0,2564 0, INAI 0,2308 1, ICBP 0,2436 2, INKP 0,2436 1, JPRS 0,2821 3, INDF 0,2179 1, KBRI 0,2179 0, LMSH 0,2564 2, MYOR 0,2308 2, TKIM 0,2436 2, PICO 0,1667 1, MLBI 0,2179 0, SPMA 0,1923 3, NIKL 0,2436 1, ROTI 0,2308 1, SAIP 0,2051 0, BAJA 0,1282 1, PTSP 0,1410 1, INRU 0,1667 1, TBMS 0,3077 0, PSDN 0,1795 1, AKRA 0,1795 1, TIRA 0,1410 1, SKBM 0,1923 1, POLY 0,1923 0, KDSI 0,2949 1, SKLT 0,2051 1, BUDI 0,2051 1, IKAI 0,2436 0, ULTJ 0,2308 2, CLPI 0,2308 1, KIAS 0,2564 0, RMBA 0,1667 1, ETWA 0,1154 0, MLIA 0,1538 1, ARGO 0,3077 0, LTLS 0,1667 1, TOTO 0,1282 1, ERTX 0,1795 1, AMFG 0,3205 3, JECC 0,2564 1, RDTX 0,2051 0, APLI 0,2051 1, KBLM 0,2821 0, SSTM 0,1667 1, BRNA 0,1667 1, KBLI 0,2564 2, TFCO 0,1795 1, DYNA 0,2179 0, SCCO 0,1538 1, TRIS 0,2179 2, LMPI 0,1667 1, VOKS 0,2821 1, MYTX 0,1667 0, LAPD 0,2051 0, ASGR 0,2308 1, ESTI 0,2051 0, SMCB 0,2436 1, MTDL 0,2436 1, PBRX 0,1282 3, INTP 0,3077 5, MLPL 0,1667 1, BIMA 0,1795 0, SMGR 0,2308 2, PTSN 0,1410 1, RICY 0,2436 2, ALMI 0,1923 0, AUTO 0,1410 1, BATA 0,3077 1, BTON 0,1538 3, GDYR 0,1667 0, BRPT 0,2179 1, CTBN 0,3205 1, BRAM 0,1410 2, SULI 0,1923 0, GDST 0,2051 1, IMAS 0,2949 1, TIRT 0,1538 0, INAI 0,1667 1, INDS 0,2692 2, ALDO 0,3205 1, KRAS 0,1282 1, INTA 0,1410 0, FASW 0,2051 1, LMSH 0,1538 2, LPIN 0,1538 2, INKP 0,1667 1, NIKL 0,2308 2, MASA 0,2179 0, TKIM 0,1282 2, TIRA 0,2949 1, NIPS 0,2821 1, INRU 0,1538 0, KDSI 0,1795 1, ADMG 0,2692 1, AKRA 0,2051 1, ARNA 0,1410 0, PRAS 0,1667 1, POLY 0,1282 0, IKAI 0,2692 2, SMSM 0,2051 2, BUDI 0,3077 1, KIAS 0,1667 1, TURI 0,2179 1, TPIA 0,2949 1,3140

12 NO TAHUN KODE CSRI CR NO TAHUN KODE CSRI CR NO TAHUN KODE CSRI CR MITI 0,2179 1, INTD 0,2179 1, CLPI 0,2308 1, TOTO 0,2051 2, MDRN 0,1923 1, ETWA 0,1795 1, JECC 0,1667 1, KONI 0,2949 1, LTLS 0,1538 1, KBLM 0,1282 1, DVLA 0,2821 4, ADMG 0,2564 2, KBLI 0,2179 2, INAF 0,1282 1, UNIC 0,1795 1, SCCO 0,2179 1, KLBF 0,1538 3, KKGI 0,1667 1, VOKS 0,1410 1, KAEF 0,2949 2, AKKU 0,1282 0, ASGR 0,2949 1, PYFA 0,2051 2, AKPI 0,2179 1, MTDL 0,2179 1, MBTO 0,1282 4, APLI 0,2949 1, MLPL 0,1795 1, MRAT 0,1538 6, BRNA 0,1410 0, MYOH 0,1410 0, UNVR 0,2179 0, IGAR 0,2949 3, PTSN 0,2692 1, ADES 0,2949 1, IPOL 0,2179 0, ASII 0,1667 1, ICBP 0,2436 2, LMPI 0,1923 1, AUTO 0,2308 1, INDF 0,3077 2, FPNI 0,1410 0, GDYR 0,2051 0, ALTO 0,1667 2, SIAP 0,1795 0, HEXA 0,1410 1, GGRM 0,1923 2, SIMA 0,1154 0, IMAS 0,2051 1, HMSP 0,2564 1, TRST 0,1795 1, INDS 0,1667 1, ARGO 0,1154 0, YPAS 0,2308 1, INTA 0,1795 1, CNTX 0,2051 0, SMGR 0,2821 1, LPIN 0,1538 2, ERTX 0,2179 1, ALMI 0,2179 1, NIPS 0,2179 1, HDTX 0,1795 0, APII 0,2051 2, PRAS 0,1410 1, RDTX 0,2051 0, CTBN 0,1667 1, SMSM 0,2564 2, STAR 0,2179 3, GDST 0,2179 2, TURI 0,1795 1, TRIS 0,1667 2, INAI 0,2949 1, UNTR 0,2179 1, UNTX 0,2564 0, KRAS 0,2692 0, MDRN 0,1923 1, MYTX 0,2436 0, LMSH 0,1410 4, KONI 0,1410 1, ESTI 0,2179 0, PICO 0,2436 1, DVLA 0,2051 3, MYRX 0,2436 0, NIKL 0,2436 1, KLBF 0,1538 4, INDR 0,1923 1, BAJA 0,1795 0, KAEF 0,3205 2, PBRX 0,2051 1, TBMS 0,1667 0, MERK 0,2051 6, BIMA 0,1667 0, TIRA 0,1667 1, PYFA 0,1667 3, BATA 0,1795 2, KICI 0,1410 5, SCPI 0,1795 0, BRPT 0,1923 1, ARNA 0,3205 2, UNVR 0,1795 0, ALDO 0,2051 1, IKAI 0,2051 1, ADES 0,2436 1, INKP 0,2308 1, KIAS 0,2179 5, CEKA 0,1282 1, INRU 0,1667 0, MLIA 0,1795 1, FAST 0,2564 1, BUDI 0,3205 1, TOTO 0,2051 2, ICBP 0,3077 2, LTLS 0,2051 0, JECC 0,2179 0, INDF 0,2308 1, KKGI 0,2179 1, SCCO 0,1667 1, MLBI 0,1538 0, AKPI 0,1667 1, VOKS 0,2564 1, ROTI 0,2179 1, AMFG 0,2051 3, ASGR 0,2692 1, SKLT 0,2692 1, FPNI 0,2436 0, MTDL 0,1410 1, TBLA 0,1538 1, INTP 0,3077 6, PTSN 0,2436 1, ULTJ 0,2179 1, ALMI 0,2179 1, ASII 0,2436 1, RMBA 0,1795 1, CTBN 0,1923 1, AUTO 0,1795 1, GGRM 0,2051 2, GDST 0,1538 2, GJTL 0,1667 2, HMSP 0,2179 1, INAI 0,3205 1, GDYR 0,1667 0, RDTX 0,1667 0, JPRS 0,2051 6, BRAM 0,1410 1, STAR 0,2564 1, KRAS 0,1667 1, INDS 0,2051 3, UNTX 0,2436 0, BAJA 0,1154 1, INTA 0,2179 0, MYTX 0,2692 0, TIRA 0,1282 1, KOBX 0,1795 1, ESTI 0,2692 1, KICI 0,1538 4, LPIN 0,2051 2, MYRX 0,1923 0, KDSI 0,2051 1, MASA 0,2179 1,5667

13 NO TAHUN KODE CSRI CR NO TAHUN KODE CSRI CR NO TAHUN KODE CSRI CR SRSN 0,2564 3, KIAS 0,2308 5, SMSM 0,2436 2, INDR 0,2308 1, JECC 0,2949 1, TURI 0,1538 1, PBRX 0,2436 1, KBLM 0,2308 0, UNTR 0,1795 1, BIMA 0,2179 0, KBLI 0,1795 3, INTD 0,2821 2, RICY 0,2564 1, IKBI 0,1538 5, MDRN 0,2692 1, BRPT 0,2564 1, SCCO 0,2564 1, KONI 0,1667 1, SULI 0,1667 0, VOKS 0,1795 1, KRAH 0,2051 1, TIRT 0,1795 1, ASGR 0,2308 1, DVLA 0,2179 4, SAIP 0,2692 2, MLPL 0,2051 1, INAF 0,1667 1, INRU 0,2179 1, PTSN 0,1667 1, KLBF 0,2051 2, AKRA 0,2051 1, ASII 0,1282 1, MERK 0,2051 3, POLY 0,2564 0, AUTO 0,2179 1, TSPC 0,1538 2, TPIA 0,2051 1, HEXA 0,2179 1, TCID 0,2949 3, CLPI 0,2436 1, BRAM 0,1410 2, MBTO 0,2051 3, UNIC 0,1538 1, IMAS 0,2949 1, UNVR 0,1667 0,6964

14 LAMPIRAN CR TAHUN 2010 No. Kode Aktiva Lancar Hutang lancar CR Ket 1 ADES ,5114 FD 2 FAST ,7082 FD 3 ICBP ,5151 FD 4 MYOR ,5808 non FD 5 MLBI ,9450 FD 6 ROTI ,2991 non FD 7 PTSP ,2437 FD 8 SMART ,5268 FD 9 TBLA ,1110 FD 10 RMBA ,4999 non FD 11 GGRM ,7008 non FD 12 HMSP ,6125 FD 13 CNTX ,7019 FD 14 TIRT ,1819 FD 15 FASW ,8402 FD 16 INKP ,0090 FD 17 KBRI ,3466 FD 18 TKIM ,1934 non FD 19 SPMA ,9106 non FD 20 SAIP ,8226 FD 21 INRU ,6267 FD 22 AKRA ,0479 FD 23 POLY ,1893 FD 24 BUDI ,0293 FD 25 CLPI ,8454 FD 26 ETWA ,4953 FD 27 LTLS ,1011 FD 28 AMFG ,9395 non FD 29 APLI ,8622 FD 30 BRNA ,3316 FD 31 DYNA ,7507 FD 32 LMPI ,7624 FD 33 LAPD ,2160 FD 34 SMCB ,6619 FD 35 INTP ,5537 non FD 36 SMGR ,9170 non FD 37 ALMI ,8648 FD 38 BTON ,5972 non FD 39 CTBN ,3810 FD 40 GDST ,6903 FD 41 INAI ,3989 FD 42 KRAS ,7729 FD 43 LMSH ,4445 non FD 44 NIKL ,0511 non FD 45 TIRA ,4367 FD 46 KDSI ,2664 FD 47 ARNA ,9716 FD 48 IKAI ,1183 non FD 49 KIAS ,5239 FD

15 No. Kode Aktiva Lancar Hutang lancar CR Ket 50 MITI ,2677 FD 51 TOTO ,0974 non FD 52 JECC ,0690 FD 53 KBLM ,0179 FD 54 KBLI ,6343 non FD 55 SCCO ,2647 FD 56 VOKS ,2401 FD 57 ASGR ,5103 FD 58 MTDL ,6102 FD 59 MLPL ,8872 FD 60 MYOH ,2258 FD 61 PTSN ,2684 FD 62 ASII ,2618 FD 63 AUTO ,7573 FD 64 GDYR ,8642 FD 65 HEXA ,7721 FD 66 IMAS ,0694 FD 67 INDS ,2867 FD 68 INTA ,2255 FD 69 LPIN ,5166 non FD 70 NIPS ,0171 FD 71 PRAS ,4480 FD 72 SMSM ,1741 non FD 73 TURI ,5117 FD 74 UNTR ,5659 FD 75 MDRN ,8331 FD 76 KONI ,1200 FD 77 DVLA ,7167 non FD 78 KLBF ,3936 non FD 79 KAEF ,4255 non FD 80 MERK ,2275 non FD 81 PYFA ,0088 non FD 82 SCPI ,8887 FD 83 UNVR ,8513 FD TAHUN 2011 No. Kode Aktiva Lancar Hutang Lancar CR Ket 1 ADES ,7088 FD 2 CEKA ,6869 FD 3 FAST ,7966 FD 4 ICBP ,8711 non FD 5 INDF ,9095 FD 6 MLBI ,9942 FD 7 ROTI ,2835 FD 8 SKLT ,6974 FD 9 TBLA ,3783 FD 10 ULTJ ,5209 FD 11 RMBA ,1196 FD 12 GGRM ,2448 non FD 13 HMSP ,7493 FD 14 RDTX ,4296 FD 15 STAR ,6956 FD 16 UNTX ,2750 FD

16 No. Kode Aktiva Lancar Hutang Lancar CR Ket 17 MYTX ,4646 FD 18 ESTI ,1353 FD 19 MYRX ,2224 FD 20 SRSN ,1748 non FD 21 INDR ,1047 FD 22 PBRX ,4398 FD 23 BIMA ,5249 FD 24 RICY ,7807 FD 25 BRPT ,9899 FD 26 SULI ,2130 FD 27 TIRT ,4450 FD 28 SAIP ,9867 non FD 29 INRU ,1691 FD 30 AKRA ,3573 FD 31 POLY ,1984 FD 32 TPIA ,7599 FD 33 CLPI ,5827 FD 34 UNIC ,5964 FD 35 KKGI ,8239 non FD 36 AMFG ,4229 non FD 37 BRNA ,0093 FD 38 IGAR ,7733 non FD 39 LMPI ,4772 FD 40 SIAP ,0797 non FD 41 SIMA ,3461 FD 42 FPNI ,7313 FD 43 TRST ,3938 FD 44 YPAS ,4822 FD 45 SMCB ,4658 FD 46 INTP ,9854 non FD 47 BTON ,1376 non FD 48 CTBN ,1856 non FD 49 INAI ,1894 FD 50 JPRS ,3840 non FD 51 LMSH ,3549 non FD 52 PICO ,1625 FD 53 NIKL ,5142 FD 54 BAJA ,1115 FD 55 TBMS ,9832 FD 56 TIRA ,4627 FD 57 KDSI ,3582 FD 58 IKAI ,5649 FD 59 KIAS ,6459 FD 60 MLIA ,5446 FD 61 TOTO ,8827 FD 62 JECC ,1141 FD 63 KBLM ,9320 FD 64 KBLI ,1875 non FD 65 SCCO ,2910 FD 66 VOKS ,2872 FD 67 ASGR ,5916 FD 68 MTDL ,8819 FD 69 MLPL ,4840 FD

17 No. Kode Aktiva Lancar Hutang Lancar CR Ket 70 PTSN ,2499 FD 71 AUTO ,3548 FD 72 GDYR ,8534 FD 73 BRAM ,7888 non FD 74 IMAS ,3678 FD 75 INDS ,4040 non FD 76 INTA ,8397 FD 77 LPIN ,9356 non FD 78 MASA ,4818 FD 79 NIPS ,0835 FD 80 ADMG ,3366 FD 81 PRAS ,1378 FD 82 SMSM ,7158 non FD 83 TURI ,5723 FD 84 INTD ,6845 FD 85 MDRN ,9556 FD 86 KONI ,3226 FD 87 DVLA ,8304 non FD 88 INAF ,5380 FD 89 KLBF ,6527 non FD 90 KAEF ,7475 non FD 91 PYFA ,5399 non FD 92 MBTO ,0810 non FD 93 MRAT ,2707 non FD 94 UNVR ,6867 FD TAHUN 2012 No. Kode Aktiva Lancar Hutang Lancar CR Ket 1 ADES ,9416 FD 2 ICBP ,7625 non FD 3 INDF ,0032 non FD 4 ALTO ,1192 non FD 5 GGRM ,1702 non FD 6 HMSP ,7758 FD 7 ARGO ,7888 FD 8 CNTX ,0101 FD 9 ERTX ,0385 FD 10 HDTX ,9252 FD 11 RDTX ,6110 FD 12 STAR ,5190 non FD 13 TRIS ,5012 non FD 14 UNTX ,2112 FD 15 MYTX ,5038 FD 16 ESTI ,9993 FD 17 MYRX ,4549 FD 18 INDR ,1220 FD 19 PBRX ,3148 FD 20 BIMA ,5481 FD 21 BATA ,1238 non FD 22 BRPT ,5288 FD 23 ALDO ,3001 FD 24 INKP ,6781 FD

18 No. Kode Aktiva Lancar Hutang Lancar CR Ket 25 INRU ,7282 FD 26 BUDI ,1316 FD 27 LTLS ,8413 FD 28 KKGI ,9476 FD 29 AKPI ,4044 FD 30 AMFG ,8870 non FD 31 FPNI ,9126 FD 32 INTP ,0276 non FD 33 ALMI ,0591 FD 34 CTBN ,7892 FD 35 GDST ,3139 non FD 36 INAI ,9933 FD 37 JPRS ,7043 non FD 38 KRAS ,1247 FD 39 BAJA ,0510 FD 40 TIRA ,3776 FD 41 KICI ,7999 non FD 42 KDSI ,5911 FD 43 KIAS ,8606 non FD 44 JECC ,1562 FD 45 KBLM ,9751 FD 46 KBLI ,0708 non FD 47 IKBI ,2167 non FD 48 SCCO ,4621 FD 49 VOKS ,3339 FD 50 ASGR ,5930 FD 51 MLPL ,4901 FD 52 PTSN ,3706 FD 53 ASII ,3991 FD 54 AUTO ,1649 FD 55 HEXA ,6617 FD 56 BRAM ,1276 non FD 57 IMAS ,2323 FD 58 INDS ,3339 non FD 59 INTA ,8660 FD 60 KOBX ,1685 FD 61 LPIN ,9031 non FD 62 NIPS ,1034 FD 63 PRAS ,1132 FD 64 UNTR ,9465 FD 65 INTD ,1646 non FD 66 MDRN ,3029 non FD 67 INAF ,1025 non FD 68 KLBF ,4054 non FD TAHUN 2013 No. Kode Aktiva Lancar Hutang Lancar CR Ket 1 ADES ,8096 FD 2 DLTA ,7054 non FD 3 FAST ,7042 FD 4 ICBP ,4106 non FD 5 INDF ,6673 FD

19 No. Kode Aktiva Lancar Hutang Lancar CR Ket 6 MYOR ,4434 non FD 7 MLBI ,9775 FD 8 ROTI ,1364 FD 9 PTSP ,8613 FD 10 PSDN ,6757 FD 11 SKBM ,2483 FD 12 SKLT ,2338 FD 13 ULTJ ,4701 non FD 14 RMBA ,1787 FD 15 ARGO ,6744 FD 16 ERTX ,0074 FD 17 RDTX ,2405 FD 18 SSTM ,3143 FD 19 TFCO ,6126 FD 20 TRIS ,3030 non FD 21 MYTX ,4799 FD 22 ESTI ,8629 FD 23 PBRX ,3379 non FD 24 BIMA ,5346 FD 25 RICY ,0997 non FD 26 BATA ,6926 FD 27 BRPT ,3492 FD 28 SULI ,2889 FD 29 TIRT ,9803 FD 30 ALDO ,2997 FD 31 FASW ,4195 FD 32 INKP ,4643 FD 33 TKIM ,3257 non FD 34 INRU ,6425 FD 35 AKRA ,1714 FD 36 POLY ,2083 FD 37 BUDI ,0763 FD 38 TPIA ,3140 FD 39 CLPI ,5305 FD 40 ETWA ,0512 FD 41 LTLS ,1396 FD 42 ADMG ,6354 non FD 43 UNIC ,7533 FD 44 KKGI ,7351 FD 45 AKKU ,7489 FD 46 AKPI ,3591 FD 47 APLI ,8408 FD 48 BRNA ,8117 FD 49 IGAR ,3891 non FD 50 IPOL ,8882 FD 51 LMPI ,1935 FD 52 FPNI ,9404 FD 53 SIAP ,9966 FD 54 SIMA ,7209 FD 55 TRST ,1429 FD 56 YPAS ,1763 FD 57 SMGR ,8824 FD 58 ALMI ,0591 FD

20 No. Kode Aktiva Lancar Hutang Lancar CR Ket 59 APII ,8060 non FD 60 CTBN ,7870 FD 61 GDST ,9888 non FD 62 INAI ,2362 FD 63 KRAS ,9623 FD 64 LMSH ,1966 non FD 65 PICO ,3135 FD 66 NIKL ,1864 FD 67 BAJA ,8217 FD 68 TBMS ,8219 FD 69 TIRA ,2010 FD 70 KICI ,7741 non FD 71 ARNA ,4267 non FD 72 IKAI ,0429 FD 73 KIAS ,2726 non FD 74 MLIA ,1295 FD 75 TOTO ,1950 non FD 76 JECC ,9779 FD 77 SCCO ,3942 FD 78 VOKS ,1348 FD 79 ASGR ,5839 FD 80 MTDL ,6190 FD 81 PTSN ,6937 FD 82 ASII ,2420 FD 83 AUTO ,8899 FD 84 GJTL ,3088 non FD 85 GDYR ,9384 FD 86 BRAM ,5714 FD 87 INDS ,8559 non FD 88 INTA ,7366 FD 89 KOBX ,3654 FD 90 LPIN ,4841 non FD 91 MASA ,5667 FD 92 SMSM ,0976 non FD 93 TURI ,5014 FD 94 UNTR ,9102 FD 95 INTD ,7354 non FD 96 MDRN ,6291 FD 97 KONI ,1091 FD 98 KRAH ,7393 FD 99 DVLA ,2418 non FD 100 INAF ,2652 FD 101 KLBF ,8393 non FD 102 MERK ,9795 non FD 103 TSPC ,9619 non FD 104 TCID ,5732 non FD 105 MBTO ,9914 non FD 106 UNVR ,6964 FD

21 LAMPIRAN CSRI 2013 No. Kode L1 L2 L3 L4 L5 L6 L7 L8 L9 L10 L11 L12 L13 E1 E2 E3 E4 E5 E6 E7 K1 K2 K3 K4 K5 K6 K7 K8 L1 L2 L3 L4 L5 L6 1 ADES DLTA FAST ICBP INDF MYOR MLBI ROTI PTSP PSDN SKBM SKLT ULTJ RMBA ARGO ERTX RDTX SSTM TFCO TRIS MYTX ESTI PBRX BIMA RICY BATA BRPT SULI TIRT

22 39 ALDO FASW INKP TKIM INRU AKRA POLY BUDI TPIA CLPI ETWA LTLS ADMG UNIC KKGI AKKU AKPI APLI BRNA IGAR IPOL LMPI FPNI SIAP SIMA TRST YPAS SMGR ALMI APII CTBN GDST INAI

23 83 KRAS LMSH PICO NIKL BAJA TBMS TIRA KICI ARNA IKAI KIAS MLIA TOTO JECC SCCO VOKS ASGR MTDL PTSN ASII AUTO GJTL GDYR BRAM INDS INTA KOBX LPIN MASA SMSM TURI UNTR INTD

24 124 MDRN KONI KRAH DVLA INAF KLBF MERK TSPC TCID MBTO UNVR

25 LAMPIRAN CSRI 2013 No. L7 L8 L9 L10 L11 L12 L13 L14 L15 L16 L17 L18 L19 L20 L21 L22 L23 L24 L25 L26 L27 L28 L29 P1 P2 P3 P4 P5 P

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