LAMPIRAN. Lampiran 1. Contoh Laporan Auditor Dengan Opini Audit Going Concern

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1 68 LAMPIRAN Lampiran 1 Contoh Laporan Auditor Dengan Opini Audit Going Concern

2 69 Lampiran 2 Daftar Sampel Perusahaan NO KODE NAMA PERUSAHAAN 1 ADES PT Akasha Wira International Tbk 2 AKKU PT Alam Karya Unggul Tbk 3 ALDO PT Alkindo Naratama Tbk 4 APLI PT Asiaplast Industries Tbk 5 ARGO PT Argo Pantes Tbk 6 ARNA PT Arwana Citramulia Tbk 7 BIMA PT Primarindo Asia Infrastructure Tbk 8 ETWA PT Eterindo Wahanatama Tbk 9 HDTX PT Panasia Indosyntec Tbk 10 IGAR PT Champion Pacific Indonesia Tbk 11 IKAI PT Intikeramik Alamsari Tbk 12 INAF PT Indofarma (Persero) Tbk 13 INKP PT Indah Kiat Pulp & Paper Tbk 14 INRU PT Toba Pulp Lestari Tbk 15 KARW PT Karwell Indonesia Tbk 16 KIAS PT Keramika Indonesia Assosiasi Tbk 17 MLBI PT Multi Bintang Indonesia Tbk 18 MYRX PT Hanson International Tbk 19 MYTX PT Apac Citra Centertex Tbk 20 NIKL PT Latinusa Tbk 21 NIPS PT Nipress Tbk 22 SCCO PT Supreme Cable Manufacturing & Commerce Tbk 23 SIMA PT Siwani Makmur Tbk 24 SMSM PT Selamat Sempurna Tbk 25 SSTM PT Sunson Textile Manufacturer Tbk 26 TIRT PT Tirta Mahakam Resources Tbk 27 TKIM PT Pabrik Kertas Tjiwi Kimia Tbk 28 ULTJ PT Ultrajaya Milk Industry & Trading Company Tbk 29 UNIT PT Nusantara Inti Corpora Tbk 30 VOKS PT Voksel Electric Tbk 31 YPAS PT Yanaprima Hastapersada Tbk

3 70 Lampiran 3 Daftar Input Data 1. Input data variabel auditor switching NO KODE ADES AKKU ALDO APLI ARGO ARNA BIMA ETWA HDTX IGAR IKAI INAF INKP INRU KARW KIAS MLBI MYRX MYTX NIKL NIPS SCCO SIMA SMSM SSTM TIRT TKIM ULTJ UNIT VOKS YPAS

4 71 2. Input data variabel ukuran perusahaan (dalam log natural total aset) NO KODE ADES AKKU ALDO APLI ARGO ARNA BIMA ETWA HDTX IGAR IKAI INAF INKP INRU KARW KIAS MLBI MYRX MYTX NIKL NIPS SCCO SIMA SMSM SSTM TIRT TKIM ULTJ UNIT VOKS YPAS

5 72 3. Input data variabel financial distress (dalam total hutang/total ekuitas) NO KODE ADES AKKU ALDO APLI ARGO ARNA BIMA ETWA HDTX IGAR IKAI INAF INKP INRU KARW KIAS MLBI MYRX MYTX NIKL NIPS SCCO SIMA SMSM SSTM TIRT TKIM ULTJ UNIT VOKS YPAS

6 73 4. Input data variabel opini audit going concern NO KODE ADES AKKU ALDO APLI ARGO ARNA BIMA ETWA HDTX IGAR IKAI INAF INKP INRU KARW KIAS MLBI MYRX MYTX NIKL NIPS SCCO SIMA SMSM SSTM TIRT TKIM ULTJ UNIT VOKS YPAS

7 74 5. Input data variabel reputasi auditor NO KODE ADES AKKU ALDO APLI ARGO ARNA BIMA ETWA HDTX IGAR IKAI INAF INKP INRU KARW KIAS MLBI MYRX MYTX NIKL NIPS SCCO SIMA SMSM SSTM TIRT TKIM ULTJ UNIT VOKS YPAS

8 75 Lampiran 4 Hasil Statistik Deskriptif Descriptive Statistics N Minimum Maximum Mean Std. Deviation UKP FCD OGC SWITCH RAD Valid N (listwise) 155

9 76 Lampiran 5 Hasil Analisis Regresi Logistik Case Processing Summary Unweighted Cases 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 Original Value Internal Value

10 77 Block 0: Beginning Block Iteration History a,b,c Coefficients Iteration -2 Log likelihood Constant Step a. Constant is included in the model. b. Initial -2 Log Likelihood: c. Estimation terminated at iteration number 2 because parameter estimates changed by less than.001. Classification Table a,b Predicted Observed SWITCH 0 1 Percentage Correct Step 0 SWITCH Overall Percentage 55.5 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

11 78 Variables not in the Equation Score df Sig. Step 0 Variables UKP FCD OGC RAD UKP.RAD FCD.RAD OGC.RAD Overall Statistics Block 1: Method = Enter Iteration History a,b,c,d Coefficients Iteration -2 Log likelihood Constant UKP FCD OGC RAD UKP.RAD FCD.RAD OGC.RAD Step a. Method: Enter b. Constant is included in the model. c. Initial -2 Log Likelihood: d. Estimation terminated at iteration number 7 because parameter estimates changed by less than.001.

12 79 Omnibus Tests of Model Coefficients Chi-square df Sig. Step 1 Step Block Model Model Summary Cox & Snell R Nagelkerke R Step -2 Log likelihood Square Square a a. Estimation terminated at iteration number 7 because parameter estimates changed by less than.001. Hosmer and Lemeshow Test Step Chi-square df Sig

13 80 Contingency Table for Hosmer and Lemeshow Test SWITCH = SWITCH = Observed Expected Observed Expected Total Step Classification Table a Predicted Observed SWITCH 0 1 Percentage Correct Step 1 SWITCH Overall Percentage 81.9 a. The cut value is.500

14 81 Variables in the Equation 95.0% C.I.for EXP(B) B S.E. Wald df Sig. Exp(B) Lower Upper Step 1 a UKP FCD OGC RAD UKP.RAD FCD.RAD OGC.RAD Constant a. Variable(s) entered on step 1: UKP, FCD, OGC, RAD, UKP.RAD, FCD.RAD, OGC.RAD.

15 82 Correlation Matrix Constant UKP FCD OGC RAD UKP.RAD FCD.RAD OGC.RAD Step 1 Constant UKP FCD OGC RAD UKP.RAD FCD.RAD OGC.RAD Casewise List b Observed Temporary Variable Case Selected Status a SWITCH Predicted Predicted Group Resid ZResid 75 S 1** S 1** S 1** S 1** a. S = Selected, U = Unselected cases, and ** = Misclassified cases. b. Cases with studentized residuals greater than are listed.

16 83 Step number: 1 Observed Groups and Predicted Probabilities F 0 0 R E 0 0 Q 000 U 000 E N C Y Predicted Prob: Group: Predicted Probability is of Membership for The Cut Value is.50 Symbols: Each Symbol Represents 1 Case.

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