Lampiran 1 :Hasil data sampel penelitian. No. Kode Perusahaan

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1 74 Lampiran 1 :Hasil data sampel penelitian No. Kode Perusahaan 1. ADES PT. AkashaWira International Tbk 2. ADMG PT. Polychem Indonesia Tbk 3. ALKA PT. AlakasaIndustrindoTbk 4. ALMI PT. Alumindo Light Metal Industry Tbk 5. ASII PT. Astra International Tbk 6. AMFG PT. Asahimas Flat Glass Tbk 7. BUDI PT. Budi Acid Jaya Tbk 8. BRAM PT. Indo KorsaTbk 9. CTBN PT. Citra TubindoTbk 10. CPIN PT. Charoen Pokphand Indonesia Tbk 11. DLTA PT. Delta Djakarta Tbk 12. ETWA PT. EterindoWahanatamaTbk 13. ESTI PT. Ever Shine Tex Tbk 14. FASW PT. Fajar Surya WisesaTbk 15. GGRM PT. GudangGaramTbk 16. GDYR PT. Goodyear Indonesia Tbk 17. HMSP PT. HM SampoernaTbk 18. IGAR PT. Champion Pacific Indonesia Tbk 19. IMAS PT. IndomobilSuksesInternasionalTbk 20. ICBP PT. Indofood CBP Tbk 21. INAF PT. Indofarma (Persero) Tbk 22. INAI PT. IndalAluminium Industry Tbk 23. INCI PT. IntanwijayaInternasionalTbk 24. INDF PT. Indofood SuksesMakmurTbk 25. INTP PT. Indocement Tunggal Perkasa Tbk 26. INDS PT. IndospringTbk 27. INDR PT. Indo-Rama Synthetic Tbk 28. INRU PT. Toba Pulp Lestari Tbk 29. IKBI PT. Sumi Indo KabelTbk 30. IPOL PT. Indo-Poly Swakarsa Industry Tbk 31. INKP PT. Indah Kiat Pulp dan Paper Tbk 32. JECC PT. Jembo Cable Company Tbk 33. JPRS PT. Jaya Pari Steel Tbk 34. KAEF PT. Kimia Farma (Persero) 35. KBLM PT. KabelindoMurniTbk 36. KBRI PT. KertasBasukiRahmat Indonesia Tbk 37. KDSI PT. KedawungSetia Industrial Tbk 38. KIAS PT. Keramika Indonesia AssosiasiTbk 39. KLBF PT. Kalbe FarmaTbk

2 No. Kode Perusahaan 41. KRAS PT. Krakatau Steel (Persero) Tbk 42. LMPI PT. LanggengMakmurIndustriTbk 43. LPIN PT. Multi Prima Sejahtera Tbk 44. LION PT. Lion Metal Works Tbk 45. LMSH PT. Lionmesh Prima Tbk 46. MBTO PT. Marina BertoTbk 47. MRAT PT. MustikaRatuTbk 48. MYOR PT. Mayora Indah Tbk 49. MYTX PT. Apac Citra Centertex Tbk 50. MLBI PT. Multi Bintang Indonesia Tbk 51. MLIA PT. MuliaIndustrindoTbk 52. MASA PT. MultistradaArahSaranaTbk 53. NIKL PT. LatinusaTbk 54. NIPS PT. NipressTbk 55. PSDN PT. Prasidha Aneka NiagaTbk 56. PRAS PT. Prima Alloy Steel Universal Tbk 57. POLY PT. Asia Pacific Fibers Tbk 58. PTSN PT. Sat Nusa PersadaTbk 59. PBRX PT. Pan Brothers Tbk 60. RMBA PT. BentoelInternasionalInvestamaTbk 61. ROTI PT. Nippon IndosariCorpindoTbk 62. SCCO PT. SucacoTbk 63. SIAP PT. SekawanIntipratamaTbk 64. SIPD PT. Sierad Produce Tbk 65. SMCB PT. Holcim Indonesia Tbk 66. SPMA PT. SuparmaTbk 67. SRSN PT. Indo AcidatamaTbk 68. SSTM PT. SunsonTextil Manufacturer Tbk 69. SMSM PT. SelamatSempurnaTbk 70. SULI PT. Sumalindo Lestary Jaya Tbk 71. TCID PT. Mandom Indonesia Tbk 72. TIRT PT. Tirta Mahakam Resource Tbk 73. TOTO PT. Surya Toto Indonesia Tbk 74. TRST PT. TriasSentosaTbk 75. TSPC PT. Tempo Scan Pacific Tbk 76. TPIA PT. Chandra Asri Petrochemical Tbk 77. ULTJ PT. Ultrajaya Milk Industry Tbk 78. VOKS PT. Voksel Electric Tbk 79. YPAS PT. Yanaprima Hasta PersadaTbk 75

3 76 Lampiran 2: Tabulasi Tahun 2011 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 1. ADES ADMG ALKA ALMI ASII AMFG BUDI BRAM CTBN CPIN DLTA ETWA ESTI FASW GGRM GDYR HMSP IGAR IMAS ICBP INAF INAI INCI INDF INTP INDS INDR INRU IKBI IPOL INKP JECC JPRS KAEF KBLM KBRI KDSI KIAS KLBF

4 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 40. KICI KRAS LMPI LPIN LION LMSH MBTO MRAT MYOR MYTX MLBI MLIA MASA NIKL NIPS PSDN PRAS POLY PTSN PBRX RMBA ROTI SCCO SIAP SIPD SMCB SPMA SRSN SSTM SMSM SULI TCID TIRT TOTO TRST TSPC TPIA ULTJ VOKS YPAS

5 78 Lampiran 3: Tabulasi Tahun 2012 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 1. ADES ADMG ALKA ALMI ASII AMFG BUDI BRAM CTBN CPIN DLTA ETWA ESTI FASW GGRM GDYR HMSP IGAR IMAS ICBP INAF INAI INCI INDF INTP INDS INDR INRU IKBI IPOL INKP JECC JPRS KAEF KBLM KBRI KDSI KIAS KLBF

6 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 40. KICI KRAS LMPI LPIN LION LMSH MBTO MRAT MYOR MYTX MLBI MLIA MASA NIKL NIPS PSDN PRAS POLY PTSN PBRX RMBA ROTI SCCO SIAP SIPD SMCB SPMA SRSN SSTM SMSM SULI TCID TIRT TOTO TRST TSPC TPIA ULTJ VOKS YPAS

7 Lampiran 4: Tabulasi Tahun 2013 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 1. ADES ADMG ALKA ALMI ASII AMFG BUDI BRAM CTBN CPIN DLTA ETWA ESTI FASW GGRM GDYR HMSP IGAR IMAS ICBP INAF INAI INCI INDF INTP INDS INDR INRU IKBI IPOL INKP JECC JPRS KAEF KBLM KBRI KDSI KIAS KLBF

8 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 40. KICI KRAS LMPI LPIN LION LMSH MBTO MRAT MYOR MYTX MLBI MLIA MASA NIKL NIPS PSDN PRAS POLY PTSN PBRX RMBA ROTI SCCO SIAP SIPD SMCB SPMA SRSN SSTM SMSM SULI TCID TIRT TOTO TRST TSPC TPIA ULTJ VOKS YPAS

9 82 Lampiran 5: Tabulasi Tahun 2014 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 1. ADES ADMG ALKA ALMI ASII AMFG BUDI BRAM CTBN CPIN DLTA ETWA ESTI FASW GGRM GDYR HMSP IGAR IMAS ICBP INAF INAI INCI INDF INTP INDS INDR INRU IKBI IPOL INKP JECC JPRS KAEF KBLM KBRI KDSI KIAS KLBF

10 NO. KODE SWITCH CEO UPK DAR OPINI GROWTH SUBS 40. KICI KRAS LMPI LPIN LION LMSH MBTO MRAT MYOR MYTX MLBI MLIA MASA NIKL NIPS PSDN PRAS POLY PTSN PBRX RMBA ROTI SCCO SIAP SIPD SMCB SPMA SRSN SSTM SMSM SULI TCID TIRT TOTO TRST TSPC TPIA ULTJ VOKS YPAS

11 84 Lampiran 6: Hasil Uji RegresiLogistik HASIL UJI REGRESI LOGISTIK Case Processing Summary UnweightedCases a N Percent Selected Cases Included in Analysis Missing Cases 0.0 Total Unselected Cases 0.0 Total a. If weight is in effect, see classification table for the total number of cases. Dependent Variable Encoding Origin al Value Internal Value Block 0: Beginning Block

12 85 Lampiran 7: Hasil Uji Fit Model Iteration History a,b,c Iteration -2 Log likelihood Coefficients Constant Step a. Constant is included in the model. b. Initial -2 Log Likelihood: c. Estimation terminated at iteration number 4 because parameter estimates changed by less than.001. Classification Table a,b Observed Predicted SWITCH Percentage Correct Step 0 SWITCH Overall Percentage 83.9 a. Constant is included in the model. b. The cut value is.500 Variables in the Equation B S.E. Wald df Sig. Exp(B) Step 0 Constant Variables not in the Equation Score df Sig. Step 0 Variables CEO UPK

13 86 DAR OPINI GROWTH SUBS Overall Statistics Block 1: Method = Enter Iteration History a,b,c,d Iteration -2 Log likelihood Coefficients Constant CEO UPK DAR OPINI GROWTH SUBS Step a. Method: Enter b. Constant is included in the model. c. Initial -2 Log Likelihood: d. Estimation terminated at iteration number 6 because parameter estimates changed by less than.001. Omnibus Tests of Model Coefficients Chi-square df Sig. Step 1 Step Block Model

14 87 Lampiran 8: Hasil Uji KoefisienDeterminasidan Uji Kelayakan Model Step -2 Log likelihood Model Summary Cox & Snell R Square Nagelkerke R Square a Hosmer and Lemeshow Test Step Chi-square df Sig Contingency Table for Hosmer and Lemeshow Test SWITCH =.00 SWITCH = 1.00 Observed Expected Observed Expected Total Step

15 88 Lampiran 9: Hasil Classification Classification Table a Observed Predicted SWITCH Step 1 SWITCH Overall Percentage 82.9 a. The cut value is.500 Percentage Correct

16 89 Lampiran 10: Hasil Uji Hipotesis Variables in the Equation B S.E. Wald df Sig. Exp(B) 95% C.I.for EXP(B) Lower Upper Step 1 a CEO UPK DAR OPI NI GRO WTH SUB S Cons tant a. Variable(s) entered on step 1: CEO, UPK, DAR, OPINI, GROWTH, SUBS.

17 90 Lampiran 11: Hasil Uji StatistikDeskriptif Descriptive Statistics N Minimum Maximum Mean Std. Deviation SWITCH CEO UPK DAR OPINI GROWTH SUBS Valid N (listwise) 316

18 Lampiran 12. Surat Hasil Validitas 91

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