LAMPIRAN 1. Daftar Nilai SIZE, KAP, ARL, dan PERF.SIZE pada Perusahaan yang Dijadikan Sampel

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1 LAMPIRAN 1 Daftar Nilai SIZE, KAP, ARL, dan PERF.SIZE pada Perusahaan yang Dijadikan Sampel No. Kode Perusahaan Tahun SIZE KAP ARL PERF.SIZE 1. ADES , , , , , , , , CEKA , , , , , , , , DLTA , , , , , , , , FAST , , , , , , , , GGRM , , , , , , , , HMSP , , , , , , , , ICBP , , , , , , , , INDF , , , , , , , , KAEF , , , , , ,

2 Lanjutan Lampiran , , KICI , , , , , , , , KLBF , , , , , , , , MERK , , , , , , , , MLBI , , , , , , , , MYOR , , , , , , , , PYFA , , , , , , , , ROTI , , , , , , , , SKLT , , , , , , , , SMAR , , , , , , , , STTP , , , , , ,

3 Lanjutan Lampiran , , TBLA , , , , , , , , ULTJ , , , , , , , , LAMPIRAN 2 Hasil Uji Multikolinearitas Correlation Matrix Constant Ukuran Perusahaan Ukuran_ KAP Kinerja Perusahaan Constant Step Ukuran_Perusahaan Ukuran_KAP Kinerja_Perusahaan LAMPIRAN 3 Statistik Deskriptif Variabel Penelitian Descriptive Statistics N Minimu m Maximu m Mean Std. Deviation Ukuran_Perusahaan Ukuran_KAP Kinerja_Perusahaan Audit_Report_Lag Valid N (listwise) 84 85

4 LAMPIRAN 4 Hasil Regresi Logistik Hipotesis Pertama Hosmer and Lemeshow Test Step Chi-square df Sig Iteration History a,b,c Iteration -2 Log Step 0 Coefficien ts Constant a. Constant is included in the model. b. Initial -2 Log Likelihood: c. Estimation terminated at iteration number 6 because parameter estimates changed by less than.001. Iteration History a,b,c,d Iteration -2Log Coefficients Constant Step a. Method: Enter b. Constant is included in the model. Ukuran Perusahaan 86

5 c. Initial -2 Log Likelihood: d. Estimation terminated at iteration number 7 because parameter estimates changed by less than.001. Model Summary Step -2 Log Cox & Snell Nagelkerke R Square R Square a a. Estimation terminated at iteration number 7 because parameter estimates changed by less than.001. Variables in the Equation B S.E. Wald df Sig. Exp(B) 95% C.I.for EXP(B) Lower Upper Ukuran Step Perusahaan 1 a Constant a. Variable(s) entered on step 1: Ukuran_Perusahaan. 87

6 Hasil Regresi Logistik Hipotesis Kedua Iteration History a,b,c,d Iteration -2 Log LAMPIRAN 5 Hosmer and Lemeshow Test Step Chi-square df Sig Iteration History a,b,c Iteration -2 Log Coefficient s Constant Step a. Constant is included in the model. b. Initial -2 Log Likelihood: c. Estimation terminated at iteration number 6 because parameter estimates changed by less than.001. Coefficients Constant Ukuran_Perus ahaan Step a. Method: Enter b. Constant is included in the model. c. Initial -2 Log Likelihood: UkPerusahaan _KinPerusaha an 88

7 d. Estimation terminated at iteration number 8 because parameter estimates changed by less than.001. Model Summary Step -2 Log Cox & Snell Nagelkerke R Square R Square a a. Estimation terminated at iteration number 8 because parameter estimates changed by less than.001. Variables in the Equation B S.E. Wald df Sig. Exp( B) 95% C.I.for EXP(B) Lower Uppe r Ukuran_Perusa haan Step 1 a UkPerusahaan_ KinPerusahaan Constant a. Variable(s) entered on step 1: Ukuran_Perusahaan, UkPerusahaan_KinPerusahaan. 89

8 Hasil Regresi Logistik Hipotesis Ketiga LAMPIRAN 6 Hosmer and Lemeshow Test Step Chi-square df Sig Iteration History a,b,c Iteration -2 Log Coefficient s Constant Step a. Constant is included in the model. b. Initial -2 Log Likelihood: c. Estimation terminated at iteration number 6 because parameter estimates changed by less than.001. Iteration History a,b,c,d Iteration -2 Log Step 1 Coefficients Constant Ukuran_KA P

9 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. Model Summary Step -2 Log Cox & Snell Nagelkerke R Square R Square a d. Estimation terminated at iteration number 20 because parameter estimates changed by less than.001. Variables in the Equation B S.E. Wald df Sig. Exp(B) 95% C.I.for EXP(B) Lower Upper Ukuran_ Step 1 a KAP 00 Constant a. Variable(s) entered on step 1: Ukuran_KAP

10 LAMPIRAN 7 Hasil Regresi Logistik Hipotesis Keempat Hosmer and Lemeshow Test Step Chi-square df Sig Iteration History a,b,c Iteration -2 Log Coefficient s Constant Step a. Constant is included in the model. b. Initial -2 Log Likelihood: c. Estimation terminated at iteration number 6 because parameter estimates changed by less than.001. Iteration History a,b,c,d Iteration -2 Log Step 1 Coefficients Constant Ukuran_KA P UkKAP_Kin Perusahaan 92

11 a. Method: Enter b. Constant is included in the model. c. Initial -2 Log Likelihood: d. Estimation terminated at iteration number 37 because parameter estimates changed by less than.001. Model Summary Step -2 Log Cox & Snell R Square a Nagelkerke R Square 93

12 a. Estimation terminated at iteration number 37 because parameter estimates changed by less than.001. Variables in the Equation B S.E. Wald df Sig. Exp(B) 95% C.I.for EXP(B) Lowe r Uppe r Step 1 a Ukuran_KAP UkKAP_KinP erusahaan Constant a. Variable(s) entered on step 1: Ukuran_KAP, UkKAP_KinPerusahaan. 94

13 LAMPIRAN 8 Titik Persentase Distribusi Chi-Square untuk d.f. = 1-50 Pr df

14 Titik Persentase Distribusi Chi-Square untuk d.f. = Pr df

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