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(1)

87

Lampiran i

Daftar Populasi Dan Sampel

NO

NAMA

PERUSAHAAN

KRITERIA

SAMPEL

1

2

3

4

1

AKKU

X

X

X

2

ALDO

1

3

ALKA

X

X

4

ALMI

X

X

5

AMFG

X

X

6

APLI

2

7

ARNA

3

8

BAJA

X

X

X

9

BRNA

X

X

10

BRPT

X

X

11

BTON

4

12

BUDI

X

X

13

CPIN

5

14

CTBN

6

15

DAJK

X

X

X

16

DPNS

X

X

17

EKAD

7

18

ETWA

8

(2)

88

20

FPNI

X

X

21

GDST

X

X

22

IGAR

9

23

IKAI

X

X

X

X

24

INAI

X

X

25

INCI

X

X

26

INKP

10

27

INRU

X

X

X

28

INTP

11

29

IPOL

12

30

ISSP

X

X

31

JKSW

X

X

X

X

32

JPFA

13

33

JPRS

14

34

KBRI

X

X

35

KDSI

X

X

36

LION

X

X

37

LMSH

X

X

38

MAIN

15

39

MLIA

X

X

40

NIKL

X

X

41

PICO

16

42

SIAP

X

X

(3)

89

45

SMBR

X

X

46

SMCB

18

47

SMGR

X

X

48

SOBI

X

X

X

X

49

SPMA

X

X

X

50

SRSN

19

51

SULI

X

X

52

TALF

X

X

X

53

TBMS

X

X

X

54

TIRT

X

X

X

55

TKIM

20

56

TOTO

21

57

TPIA

X

X

58

TRST

22

59

UNIC

23

60

WTON

X

X

X

X

61

ADMG

X

X

62

ARGO

X

X

63

ASII

X

X

X

64

AUTO

X

X

65

BATA

24

66

BIMA

X

X

X

(4)

90

68

CNTX

X

X

X

69

ERTX

26

70

ESTI

X

X

71

GDYR

X

X

72

GJTL

X

X

X

73

HDTX

X

X

X

74

IKBI

X

X

X

75

IMAS

27

76

INDR

X

X

77

INDS

X

X

78

JECC

28

79

KBLI

29

80

KBLM

30

81

KRAH

X

X

X

82

LPIN

31

83

MASA

X

X

84

MYTX

X

X

85

NIPS

X

X

86

PBRX

X

X

87

POLY

X

X

X

88

PRAS

32

89

PTSN

X

X

90

RICY

X

X

X

(5)

91

93

SRIL

X

X

X

94

SSTM

X

X

X

95

STAR

X

X

96

TFCO

X

X

X

97

UNTX

X

X

X

98

VOKS

34

99

ADES

X

X

100

AISA

35

101

ALTO

36

102 CEKA

X

X

X

103 CINT

X

X

X

X

104 DAVO

X

X

105

DLTA

37

106

DVLA

38

107 GGRM

X

X

108 HMSP

X

X

X

109 ICBP

X

X

110 INAF

X

X

X

111 INDF

X

X

X

112 KAEF

X

X

113

KLBF

39

114 LMPI

X

X

X

(6)

92

116

MERK

41

117

MLBI

42

118 MRAT

X

X

119

MYOR

43

120 PSDN

X

X

X

121 PYFA

X

X

122 RMBA

X

X

123

ROTI

44

124 SCPI

X

X

X

125

SIDO

45

126

SKBM

46

127 SKLT

X

X

X

X

128

SQBB

47

129 STTP

X

X

X

X

130 TCID

X

X

X

131 TSPC

X

X

132 ULTJ

X

X

133 UNVR

X

X

(7)

93

Daftar Nama Perusahaan

yang menjadi Sampel Penelitian

No

Kode

Nama Perusahaan

1

ALDO

Alkindo naratama Tbk

2

APLI

Asiaplast Industries Tbk

3

ARNA

Arwana Citramulia Tbk

4

BTON

Betonjaya Manunggal Tbk

5

CPIN

Charoen Pokphand Indonesia Tbk

6

CTBN

Citra Tubindo Tbk

7

EKAD

Ekadharma International Tbk

8

ETWA

Eterindo Wahanatama Tbk

9

IGAR

Champion Pacific Indonesia Tbk

10

INKP

Indah Kiat Pulp & Paper Tbk

11

INTP

Indocement Tunggal Prakasa Tbk

12

IPOL

Indopoly Swakarsa Industry Tbk

13

JPFA

JAPFA Comfeed Indonesia Tbk

14

JPRS

Jaya Parl Steel Tbk

15

MAIN

Malindo Feedmill Tbk

16

PICO

Pelangi Indah Canindo Tbk

17

SIPD

Sierad Produce Tbk

18

SMCB

Holcim Indonesia Tbk

19

SRSN

Indo Acidatama Tbk

20

TKIM

Pabrik Kertas Tjiwi Kimia Tbk

21

TOTO

Surya Toto Indonesia Tbk

22

TRST

Trias Sentosa Tbk

23

UNIC

Unggul Indah Cahaya Tbk

24

BATA

Sepatu Bata Tbk

25

BRAM

Indo Kordsa Tbk

26

ERTX

Eratex Djaja Tbk

27

IMAS

Indomobil Sukses International Tbk

28

JECC

Jembo Cable Company Tbk

29

KBLI

KMI Wire and Cable Tbk

30

KBLM

Kabelindo Murni Tbk

31

LPIN

Multi Prima Sejahtera Tbk

32

PRAS

Prima Alloy Steel Universal Tbk

33

SMSM

Selamat Sempurna Tbk

34

VOKS

Voksel Electric Tbk

(8)

94

36

ALTO

Tri Banyan Tirta Tbk

37

DLTA

Delta Djakarta Tbk

38

DVLA

Darya-Varia Laboratoria Tbk

39

KLBF

Kalbe Farma Tbk

40

MBTO

Martina Berto Tbk

41

MERK

Merc Tbk

42

MLBI

Multi Bintang Indonesia Tbk

43

MYOR

Mayora Indah Tbk

44

ROTI

Nippon Indosari Corpindo Tbk

45

SIDO

Sido Muncul Tbk

46

SKBM

Sekar Bumi Tbk

47

SQBB

Taisho Pharmaceutical Indonesia Tbk

(9)

95

Data Professional Fee dan Logaritma Natural

Professional Fee Tahun 2012-2013

No Perusahaan

2.012 2013

5 CPIN 17.741.000.000 23,599 24.168.000.000 23,908

6 CTBN 26.980.769.840 24,018 39.172.220.400 24,391

7 EKAD 732.412.960 20,412 917.202.223 20,637

8 ETWA 1.079.433.656 20,800 6.805.344.843 22,641

9 IGAR 641.437.235 20,279 669.606.279 20,322

10 INKP 115.991.650.000 25,477 150.761.490.000 25,739

11 INTP 14.915.000.000 23,426 16.788.000.000 23,544

12 IPOL 2.001.361.220 21,417 1.944.377.820 21,388

13 JPFA 24.910.000.000 23,939 30.229.000.000 24,132

14 JPRS 853.638.768 20,565 1.099.662.888 20,818

15 MAIN 2.776.960.000 21,745 2.293.607.000 21,553

16 PICO 555.323.873 20,135 1.047.248.000 20,769

17 SIPD 4.814.065.438 22,295 5.592.643.484 22,445

18 SMCB 63.018.000.000 24,867 34.770.000.000 24,272

19 SRSN 685.025.000 20,345 952.564.000 20,675

20 TKIM 28.932.640.000 24,088 76.086.270.000 25,055

21 TOTO 1.656.608.903 21,228 4.051.019.234 22,122

22 TRST 2.498.660.926 21,639 1.313.183.898 20,996

23 UNIC 5.473.113.630 22,423 5.844.765.420 22,489

24 BATA 1.603.231.000 21,195 5.149.735.000 22,362

25 BRAM 4.810.119.090 22,294 2.554.160.010 21,661

26 ERTX 2.097.082.000 21,464 1.222.006.110 20,924

27 IMAS 16.621.023.047 23,534 24.382.696.495 23,917

28 JECC 3.360.662.000 21,935 3.269.548.000 21,908

29 KBLI 921.510.892 20,642 1.268.652.487 20,961

30 KBLM 451.306.000 19,928 465.888.500 19,959

31 LPIN 190.705.000 19,066 418.662.500 19,853

32 PRAS 490.100.000 20,010 1.066.530.128 20,788

(10)

96

34 VOKS 1.538.950.470 21,154 1.650.907.103 21,225

35 AISA 3.616.000.000 22,009 5.582.000.000 22,443

36 ALTO 752.557.240 20,439 1.659.550.214 21,230

37 DLTA 4.638.191.000 22,258 3.306.469.000 21,919

38 DVLA 2.316.654.000 21,563 3.967.857.000 22,101

39 KLBF 22.034.130.574 23,816 26.792.291.663 24,011

40 MBTO 1.692.124.879 21,249 2.242.824.934 21,531

41 MERK 5.316.660.000 22,360 10.027.625.000 23,029

42 MLBI 23.059.000.000 23,861 54.726.000.000 24,726

43 MYOR 3.842.897.255 22,069 7.307.386.415 22,712

44 ROTI 4.417.498.963 22,209 6.000.825.278 22,515

45 SIDO 2.392.000.000 21,595 5.104.000.000 22,353

46 SKBM 1.891.144.549 21,360 1.155.479.723 20,868

47 SQBB 1.348.302.000 21,022 1.588.518.000 21,186

(11)

97

Data Pengadopsian ISA, Jenis KAP, dan

Jumlah anak perusahaan periode 2012-2013

No Perusahaan Adopsi ISA Jenis KAP Kompleksitas

(12)

98

34 VOKS 0 1 0

0

3

4

35 AISA 0 1 0

0

17

17

36 ALTO 0 1 0

0

3

3

37 DLTA 0 1 1

1

1

1

38 DVLA 0 1 1

1

4

4

39 KLBF 0 1 1

1

20

22

40 MBTO 0 1 0

0

2

2

41 MERK 0 1 1

1

0

0

42 MLBI 0 1 1

1

0

1

43 MYOR 0 1 0

0

5

5

44 ROTI 0 1 1

1

0

0

45 SIDO 0 1 0

0

2

3

46 SKBM 0 1 0

0

4

6

47 SQBB 0 1 1

1

0

0

(13)

99

Data Total Asset dan Logaritma Natural

Total Asset Tahun 2012-2013

no Perusahaan 2012 2013

Total ASSET LNTA Total Asset LNTA

1 ALDO 184.896.742.887 25,943 301.479.232.221 26,432

2 APLI 333.867.300.446 26,534 303.594.490.546 26,439

3 ARNA 937.359.770.277 27,566 1.135.244.802.060 27,758

4 BTON 145.100.528.067 25,701 176.136.296.407 25,895

5 CPIN 12.348.627.000.000 30,145 15.722.197.000.000 30,386

6 CTBN 2.595.800.014.570 28,585 3.363.836.291.490 28,844

7 EKAD 273.893.467.429 26,336 343.601.504.089 26,563

8 ETWA 960.956.808.834 27,591 1.291.711.270.379 27,887

9 IGAR 312.342.760.278 26,467 314.746.644.499 26,475

10 INKP 64.281.325.000.000 31,794 83.156.170.380.000 32,052

11 INTP 22.755.160.000.000 30,756 26.607.241.000.000 30,912

12 IPOL 2.735.332.293.230 28,637 3.405.028.632.420 28,856

13 JPFA 10.961.464.000.000 30,025 14.917.590.000.000 30,334

14 JPRS 398.606.524.648 26,711 376.540.741.943 26,654

15 MAIN 1.799.881.575.000 28,219 2.214.398.692.000 28,426

16 PICO 594.616.098.268 27,111 621.400.236.614 27,155

17 SIPD 3.298.123.574.771 28,824 3.155.680.394.480 28,780

18 SMCB 12.168.517.000.000 30,130 14.894.990.000.000 30,332

19 SRSN 402.108.960.000 26,720 420.782.548.000 26,765

20 TKIM 25.935.346.140.000 30,887 31.962.810.120.000 31,096

21 TOTO 1.522.663.914.388 28,051 1.746.177.682.568 28,188

22 TRST 2.188.129.039.119 28,414 3.260.919.505.192 28,813

23 UNIC 2.400.777.765.700 28,507 3.303.941.452.140 28,826

24 BATA 574.107.994.000 27,076 680.685.060.000 27,246

25 BRAM 2.223.454.411.460 28,430 2.932.878.418.920 28,707

26 ERTX 433.414.874.000 26,795 559.030.206.180 27,049

27 IMAS 17.577.664.024.361 30,498 22.315.022.507.630 30,736

28 JECC 708.955.186.000 27,287 1.239.821.716.000 27,846

29 KBLI 1.161.698.219.225 27,781 1.337.022.291.951 27,921

30 KBLM 722.941.339.245 27,307 654.296.256.935 27,207

31 LPIN 172.268.827.993 25,872 196.390.816.224 26,003

32 PRAS 577.349.886.068 27,082 795.630.250.208 27,402

33 SMSM 1.441.204.473.590 27,997 1.701.103.245.176 28,162

34 VOKS 1.698.078.355.471 28,161 1.955.830.321.070 28,302

35 AISA 3.867.576.000.000 28,984 5.020.824.000.000 29,245

(14)

100

37 DLTA 745.306.835.000 27,337 867.040.802.000 27,488

38 DVLA 1.074.691.476.000 27,703 1.190.054.288.000 27,805

39 KLBF 9.417.957.180.958 29,874 11.315.061.275.026 30,057

40 MBTO 609.494.013.942 27,136 611.769.745.328 27,140

41 MERK 569.430.951.000 27,068 696.946.318.000 27,270

42 MLBI 1.152.048.000.000 27,773 1.782.148.000.000 28,209

43 MYOR 8.302.506.241.903 29,748 9.709.838.250.473 29,904

44 ROTI 1.204.944.681.223 27,817 1.822.689.047.108 28,231

45 SIDO 2.150.999.000.000 28,397 2.951.507.000.000 28,713

46 SKBM 288.961.557.631 26,390 497.652.557.672 26,933

47 SQBB 397.144.458.000 26,708 421.187.982.000 26,766

(15)

101

Data Total Debt, Laba Bersih,

LEVERAGE dan ROA

Tahun 2012

No Perusahaan

Risiko Litigasi (LEVERAGE) Profitabilitas TOTAL DEBT LEV laba bersih ROA

1 ALDO 90.590.989.110 0,490 19.391.797.651 0,105

2 APLI 115.231.507.057 0,345 5.961.142.917 0,018

3 ARNA 332.551.590.871 0,355 212.271.534.750 0,226

4 BTON 31.921.571.823 0,220 32.390.792.706 0,223

5 CPIN 4.172.163.000.000 0,338 3.376.499.000.000 0,273

6 CTBN 1.216.776.718.880 0,469 453.245.616.050 0,175

7 EKAD 81.915.660.390 0,299 47.930.499.632 0,175

8 ETWA 523.207.574.639 0,544 54.803.730.517 0,057

9 IGAR 70.313.908.037 0,225 58.881.731.387 0,189

10 INKP 44.237.387.680.000 0,688 310.687.430 0,000

11 INTP 3.336.422.000.000 0,147 6.239.550.000.000 0,274

12 IPOL 1.371.276.039.810 0,501 88.629.543.710 0,032

13 JPFA 6.198.137.000.000 0,565 1.364.891.000.000 0,125

14 JPRS 51.097.519.438 0,128 12.283.454.627 0,031

15 MAIN 1.118.011.031.000 0,621 383.075.893.000 0,213

16 PICO 395.503.093.290 0,665 15.152.893.643 0,025

17 SIPD 2.021.380.807.617 0,613 19.828.222.867 0,006

18 SMCB 3.750.461.000.000 0,308 1.872.712.000.000 0,154

19 SRSN 132.904.817.000 0,331 25.760.615.000 0,064

20 TKIM 18.447.981.180.000 0,711 402.533.090.000 0,016

21 TOTO 624.499.013.875 0,410 336.281.961.088 0,221

22 TRST 835.136.579.731 0,382 80.748.964.071 0,037

23 UNIC 1.049.539.106.950 0,437 46.268.658.210 0,019

24 BATA 186.619.508.000 0,325 99.147.385.000 0,173

25 BRAM 583.198.193.170 0,262 244.794.754.220 0,110

26 ERTX 346.488.931.000 0,799 3.907.869.410 0,009

27 IMAS 11.869.218.951.856 0,675 1.073.071.363.221 0,061

28 JECC 566.079.393.000 0,798 48.928.924.000 0,069

29 KBLI 316.557.195.404 0,272 172.555.280.837 0,149

30 KBLM 458.195.274.791 0,634 32.005.609.712 0,044

31 LPIN 37.413.214.492 0,217 19.595.989.481 0,114

32 PRAS 297.056.156.250 0,515 9.976.910.277 0,017

33 SMSM 620.875.870.082 0,431 369.687.759.532 0,257

34 VOKS 1.095.012.302.724 0,645 184.655.229.128 0,109

(16)

102

36 ALTO 553.396.886.631 0,621 40.682.828.293 0,046

37 DLTA 147.095.322.000 0,197 287.505.070.000 0,386

38 DVLA 233.144.997.000 0,217 204.477.046.000 0,190

39 KLBF 2.046.313.566.061 0,217 2.308.017.092.492 0,245

40 MBTO 174.931.100.594 0,287 59.554.649.590 0,098

41 MERK 152.689.086.000 0,268 145.914.877.000 0,256

42 MLBI 822.195.000.000 0,714 607.261.000.000 0,527

43 MYOR 5.234.655.914.665 0,630 959.815.066.914 0,116

44 ROTI 538.337.083.673 0,447 199.792.980.761 0,166

45 SIDO 846.348.000.000 0,393 513.621.000.000 0,239

46 SKBM 161.281.794.388 0,558 16.561.534.229 0,057

47 SQBB 71.785.430.000 0,181 180.897.794.000 0,455

(17)

103

Data Total Debt, Laba Bersih,

LEVERAGE dan ROA

Tahun 2013

No Perusahaan Risiko Litigasi (Leverage) Profitabilitas

Total Debt LEV Laba Bersih ROA

1 ALDO 161.595.933.059 0,536 19.391.797.651 0,064

2 APLI 85.871.301.621 0,283 2.742.452.624 0,009

3 ARNA 366.754.918.531 0,323 316.349.602.459 0,279

4 BTON 37.318.882.613 0,212 33.272.073.649 0,189

5 CPIN 5.771.297.000.000 0,367 3.451.333.000.000 0,220

6 CTBN 1.512.255.745.290 0,450 654.769.347.450 0,195

7 EKAD 105.893.942.734 0,308 51.988.302.824 0,151

8 ETWA 846.050.835.530 0,655 31.386.452.889 0,024

9 IGAR 89.003.869.709 0,283 48.442.303.122 0,154

10 INKP 55.008.814.920.000 0,662 2.538.736.620 0,000

11 INTP 3.629.554.000.000 0,136 6.595.154.000.000 0,248

12 IPOL 1.548.114.881.640 0,455 141.272.976.300 0,041

13 JPFA 9.672.368.000.000 0,648 895.947.000.000 0,060

14 JPRS 14.019.207.792 0,037 18.337.547.841 0,049

15 MAIN 1.351.915.503.000 0,611 310.887.695.000 0,140

16 PICO 406.365.304.333 0,654 10.989.782.669 0,018

17 SIPD 1.870.560.118.674 0,593 11.269.860.848 0,004

18 SMCB 6.122.043.000.000 0,411 1.336.548.000.000 0,090

19 SRSN 106.406.914.000 0,253 32.666.954.000 0,078

20 TKIM 22.168.098.570.000 0,694 181.902.750.000 0,006

21 TOTO 710.527.268.893 0,407 323.204.864.975 0,185

22 TRST 1.551.242.364.818 0,476 72.553.777.173 0,022

23 UNIC 1.519.505.143.500 0,460 231.920.914.200 0,070

24 BATA 283.831.895.000 0,417 63.758.495.000 0,094

25 BRAM 934.570.893.690 0,319 102.995.386.140 0,035

26 ERTX 430.970.032.140 0,771 11.037.306.720 0,020

27 IMAS 15.655.152.396.933 0,702 595.522.228.749 0,027

28 JECC 1.092.161.372.000 0,881 43.435.984.000 0,035

29 KBLI 450.372.591.220 0,337 105.179.474.227 0,079

30 KBLM 384.632.097.122 0,588 10.671.148.829 0,016

31 LPIN 52.980.206.367 0,270 12.896.434.470 0,066

32 PRAS 389.182.140.905 0,489 15.808.091.138 0,020

33 SMSM 694.304.234.869 0,408 458.595.417.885 0,270

34 VOKS 1.354.581.302.107 0,693 51.602.217.442 0,026

(18)

104

36 ALTO 960.189.991.593 0,639 23.889.167.908 0,016

37 DLTA 190.482.809.000 0,220 358.395.988.000 0,413

38 DVLA 275.351.336.000 0,231 175.756.777.000 0,148

39 KLBF 2.815.103.309.451 0,249 2.572.522.717.231 0,227

40 MBTO 160.451.280.610 0,262 23.006.208.262 0,038

41 MERK 184.727.696.000 0,265 234.707.739.000 0,337

42 MLBI 794.615.000.000 0,446 1.576.945.000.000 0,885

43 MYOR 5.771.077.430.823 0,594 1.356.073.496.557 0,140

44 ROTI 1.035.351.397.437 0,568 210.804.904.162 0,116

45 SIDO 326.051.000.000 0,110 582.658.000.000 0,197

46 SKBM 296.528.343.161 0,596 78.305.045.915 0,157

47 SQBB 74.135.708.000 0,176 199.482.401.000 0,474

(19)
(20)

106

Removed Method

1 BIGF, ADISA,

SBSDR, LEV,

ROA, LNTAb

. Enter

a. Dependent Variable: PFEE

b. All requested variables entered.

Model Summaryb

a. Predictors: (Constant), BIGF, ADISA, SBSDR, LEV, ROA, LNTA

b. Dependent Variable: PFEE

ANOVAa

Model Sum of Squares df Mean Square F Sig.

1 Regression 160,395 6 26,733 50,885 ,000b

Residual 46,756 89 ,525

Total 207,152 95

a. Dependent Variable: PFEE

b. Predictors: (Constant), BIGF, ADISA, SBSDR, LEV, ROA, LNTA

(21)

107 a. Dependent Variable: PFEE

CollinearityDiagnosticsa

a. Dependent Variable: PFEE

Residuals Statisticsa

Minimum Maximum Mean Std. Deviation N

Predicted Value 19,61744 24,85978 21,92513 1,299374 96

Std. Predicted Value -1,776 2,259 ,000 1,000 96

Standard Error of Predicted

Value ,122 ,495 ,186 ,061 96

Adjusted Predicted Value 19,66179 24,72988 21,92349 1,302655 96

Residual -1,568753 1,683148 ,000000 ,701550 96

Std. Residual -2,164 2,322 ,000 ,968 96

Stud. Residual -2,244 2,356 ,001 1,003 96

Deleted Residual -1,686803 1,732105 ,001641 ,755918 96

Stud. Deleted Residual -2,298 2,419 ,002 1,011 96

Mahal. Distance 1,696 43,232 5,938 6,393 96

Cook's Distance ,000 ,120 ,012 ,017 96

Centered Leverage Value ,018 ,455 ,063 ,067 96

(22)

108

Removed Method

1 BIGF, ADISA,

SBSDR, LEV,

ROA, LNTAb

. Enter

a. Dependent Variable: PFEE

b. All requested variables entered.

Model Summaryb

a. Predictors: (Constant), BIGF, ADISA, SBSDR, LEV, ROA, LNTA

b. Dependent Variable: PFEE

Coefficientsa

a. Dependent Variable: PFEE

Residuals Statisticsa

Minimum Maximum Mean Std. Deviation N

Predicted Value 19,61744 24,85978 21,92513 1,299374 96

Residual -1,568753 1,683148 ,000000 ,701550 96

Std. Predicted Value -1,776 2,259 ,000 1,000 96

Std. Residual -2,164 2,322 ,000 ,968 96

(23)

109 Unstandardized

Residual

N 96

Normal Parametersa,b Mean ,0000000

Std. Deviation ,70155010

Most Extreme Differences Absolute ,065

Positive ,065

Negative -,055

Test Statistic ,065

Asymp. Sig. (2-tailed) ,200c,d

a. Test distribution is Normal.

b. Calculated from data.

c. Lilliefors Significance Correction.

d. This is a lower bound of the true significance.

Descriptive Statistics

N Minimum Maximum Mean Std. Deviation

PFEE 96 18,827 25,739 21,92513 1,476667

ADISA 96 ,0 1,0 ,500 ,5026

LNTA 96 25,701 32,052 28,10726 1,438453

SBSDR 96 ,0 70,0 5,917 10,6184

LEV 96 ,037 ,881 ,43818 ,187664

ROA 96 ,000 ,885 ,13627 ,137377

BIGF 96 ,0 1,0 ,417 ,4956

(24)
(25)

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