Lampiran 1 Data Sampel Penelitian. Kode Nama Sektor/Sub Sektor

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1 Lampiran Data Sampel Penelitian Kode Nama Sektor/Sub Sektor AALI Astra Agro Lestari Tbk Pertanian/Perkebunan ADRO Adaro Energy Tbk Pertambangan/Batubara ASII Astra International Tbk Aneka Industri/Otomotif & komponen BBCA Bank Central Asia Tbk Keuangan/Bank BBNI Bank Negara Indonesia Tbk Keuangan/Bank BBRI Bank Rakyat Indonesia Tbk Keuangan/Bank BDMN Bank Danamon Indonesia Tbk Keuangan/Bank BMRI Bank Mandiri (Persero) Tbk Keuangan/Bank BUMI Bumi Resources Tbk Pertambangan/Batubara GGRM Gudang Garam Tbk Industri Barang Konsumsi/Rokok INCO Interational Nikel Indonesia Pertambangan/Logam & Mineral Tbk Lainnya INDF Indofood Sukses makmur Tbk Barang Konsumsi/Makanan & Minuman INTP Indocement Tunggal Prakasa Tbk Industri Dasar Dan Kimia/Semen ITMG Indo Tambangraya Megah Tbk Pertambangan/Batubara JSMR Jasa Marga Tbk Infrastruktur, Utilitas & Sejenisnya/Jalan tol, Bandara,

2 Pelabuhan & sejenisnya KLBF Kalbe Farma Tbk Industri Barang Konsumsi/Farmasi LPKR Lippo Karawaci Tbk Property & Realestate/Property & Realestate LSIP PP London Sumatera Tbk Pertanian/Perkebunan PGAS Perusahaan Gas Negara Pertambangan/Minyak & Gas (Persero) Tbk bumi PTBA Tambang Batubara Bukit Asam Tbk Pertambangan/Batubara SMGR Semen Gresik (Persero) Tbk Industri Dasar Dan Kimia/Semen TLKM Telekomunikasi Indonesia Infrastruktur, Utilitas & Tbk Sejenisnya/Telekomunikasi UNTR United Tractors Tbk Aneka Industri/Otomotif & komponen UNVR Unilever Indonesia Tbk Industri Barang Konsusmsi/Kosmetik & Keperluan Rumah Tangga

3 Lampiran 2 Statistik Deskriptif Estimasi Beta dan Standar Error Beta per Tahun Interval Return Harian YEAR COMP AALI 0,4955, ,97565,4308 ADRO 0,7545,7438,47370,220 ASII,4088,37543,22742,36432 BBCA,758, ,9875,26308 BBNI,470 0,79970, ,97096 BBRI,4280,3605,46827,979 BDMN 0,8999 0,7355 0,9624,2526 BMRI,4834,3303,50250,29709 BUMI,835 2,2784,49535,58736 GGRM,0699 0, , ,78339 INCO 0,7524,58407,24638,38488 INDF,0076 0,84674,0947 0,95845 INTP,362,7907,49856,67254 ITMG 0,654,2657,35596,06005 JSMR 0,857 0,6386 0, ,80840 KLBF,3228 0,60943,2462 0,89267 LPKR,465 0,69382,975 0,53054 LSIP 0,437 0,982,5862 0,94854 PGAS 0,9433 0,76842,224,05263 PTBA,0762,5456,783,08052 SMGR,523,2779,0066,0629 TLKM,2322 0, , ,74569 UNTR,0728,60787,28986,58070

4 UNVR,2922 0,9756 0,6020,53606 Mean,09452,4,559,3547 Med,2599,0756,8467,026 Min 0,4368 0, , ,53054 Max,5230 2,2784,50250,67254 Stdev 0,323 0,4203 0, ,29045 S YEAR COMP AALI 0,559 0,3589 0, ,09798 ADRO 0, ,3589 0,0830 0,09747 ASII 0,3570 0, , ,069 BBCA 0, , , ,08358 BBNI 0,0826 0, ,0679 0,09882 BBRI 0,0787 0, , ,0842 BDMN 0,3977 0, ,084 0,0227 BMRI 0, ,0974 0,0637 0,07950 BUMI 0,3640 0, , ,6334 GGRM 0,3953 0,3039 0,083 0,36 INCO 0,498 0,694 0, ,09308 INDF 0, , , ,09009 INTP 0, ,243 0, ,20944 ITMG 0,2254 0,2547 0, ,0986 JSMR 0,3920 0,0506 0, ,08563 KLBF 0, ,542 0, ,0577 LPKR 0,29 0,872 0, ,3257 LSIP 0,4730 0,6888 0, ,08804 PGAS 0,098 0,298 0, ,073

5 PTBA 0,3338 0,32 0, ,083 SMGR 0,3583 0,24 0, ,07657 TLKM 0, ,2048 0, ,07084 UNTR 0,0706 0,4077 0, ,4053 UNVR 0,0334 0,5605 0, ,2879 Mean 0,7745 0,3946 0, ,06293 Med 0,3889 0,2345 0, , Min 0, , , ,0692 Max 0,3640 0, , ,28788 Stdev 0,0934 0, , ,04034 Interval Return Mingguan YEAR COMP AALI 0,0639, ,9947,35705 ADRO 0,2865 2,03975,2392,4377 ASII,35693,77758,7305,53874 BBCA,9680, ,9745 0,9935 BBNI, ,66009,453,0824 BBRI,47855,342,44788,05026 BDMN 0,59452,8449 0,56334,23994 BMRI,59856,09479,60463,39330 BUMI,070 2,77902, ,99908 GGRM 0,96783,00562,053 0,68380 INCO 0,3070,97600,27403,5979 INDF, ,502,9429 0,9396 INTP 0, ,70337,57977,0335 ITMG 0, ,667,533,35409

6 JSMR 0, , ,7323 0,9260 KLBF, ,38920,27022,33258 LPKR,846 0,9770,0897 0,80723 LSIP 0,3303 0,98766,407,33292 PGAS,047 0,57063,9925 0,97867 PTBA 0,50089,8809,52954,03839 SMGR,303,323,757 0,62628 TLKM,6479 0, ,4954 0,46939 UNTR 0,8869 2,09856,5268,37223 UNVR 0,9693 0,938 0,5799 0,5976 Mean 0,97046,20829,4547,0895 Med,0942,03293,8473,04432 Min 0,0639 0, ,4954 0,46939 Max,846 2,77902,60463,5979 Stdev 0, , ,3975 0,30965 S YEAR COMP AALI 0,2960 0, ,6796 0,25770 ADRO 0,3293 0,4373 0,7374 0,2254 ASII 0,4764 0, ,353 0,5667 BBCA 0,0820 0,2745 0,2403 0,5484 BBNI 0,6922 0,8549 0,4484 0,25678 BBRI 0,4582 0, ,3796 0,574 BDMN 0,2558 0, , ,2869 BMRI 0,7495 0, ,2083 0,3393 BUMI 0,3843 0, ,2223 0,36056 GGRM 0,259 0, ,7727 0,30823

7 INCO 0, ,5747 0,5660 0,964 INDF 0,6522 0,2850 0,6492 0,225 INTP 0,636 0, ,800 0,677 ITMG 0,3940 0,3355 0,7848 0,2274 JSMR 0,5996 0, ,3322 0,2664 KLBF 0,6876 0, ,5789 0,24376 LPKR 0, , ,2226 0,3682 LSIP 0, ,5595 0,5065 0,24637 PGAS 0,863 0, , ,5566 PTBA 0, ,4024 0,6889 0,6977 SMGR 0,8997 0,3277 0,580 0,5238 TLKM 0,87 0, ,4866 0,4982 UNTR 0,2073 0, ,4959 0,730 UNVR 0,200 0, ,7939 0,20278 Mean 0, , , ,2277 Med 0, , ,65 0,2097 Min 0,082 0, , ,33934 Max 0,3843 0, ,2226 0,36822 Stdev 0, , , , Interval Return Bulanan YEAR COMP AALI -,923 0,84222,5226 0,48 ADRO -,09683,70692, ,6756 ASII 0,75707,45244,0869,569 BBCA,2372,6250,08705,03409 BBNI,92867,0394, ,7509

8 BBRI,85000,68206,56839,22 BDMN,44875,0273 0,3638 0,77452 BMRI,80550,22828,6098,6559 BUMI 2, ,4765 2,084,20335 GGRM 0, , ,5779 0,40277 INCO -0,066 2,553, ,4872 INDF 0, ,53759,23354,76 INTP 0,8935 0,7886, ,6245 ITMG -0,87204,07582, ,63232 JSMR 0, ,757 0, ,93626 KLBF 0, , , ,5650 LPKR, ,9422,5823,38243 LSIP -0, ,2338 0, ,75928 PGAS 0, ,03386, ,29458 PTBA -0, ,2044,34525,39 SMGR,64559,68887,4896 0,73397 TLKM 0,8869,0285-0, ,63775 UNTR 0,0933 2,06657, ,7674 UNVR 0,5000-0,4367-0, ,400 Mean 0,66023,22378,2322 0,8236 Med 0,7937,08927,2554 0,7550 Min -,923-0,4367-0, ,4872 Max 2, ,553 2,084,6559 Stdev, , , ,38645 S YEAR COMP AALI 0, ,6535 0, ,45394

9 ADRO 0, ,6393 0,556 0,34229 ASII 0, , ,98 0,22458 BBCA 0, , , ,3029 BBNI 0,3764 0, , ,5975 BBRI 0, , , ,3320 BDMN 0, , , ,4220 BMRI 0, , , ,27960 BUMI 0, , ,4099 0,63495 GGRM 0,5266 0,7098 0,4372 0,74022 INCO 0,99406,466 0, ,44593 INDF 0,4239 0,3244 0,3496 0,3953 INTP 0, , , ,26786 ITMG 0, , ,2898 0,34246 JSMR 0,4075 0,3042 0, ,5934 KLBF 0, , ,3044 0,68793 LPKR 0, , ,670 0,58899 LSIP,3878 0,8328 0, ,42852 PGAS 0, , , ,36253 PTBA 0,8255 0, ,280 0,3996 SMGR 0,2664 0, , ,3924 TLKM 0, , ,856 0,3035 UNTR 0,406 0, , ,24763 UNVR 0, , ,475 0,43829 Mean 0,5730 0, , ,42787 Med 0, , , ,39557 Min 0,2664 0, , , Max,38777,466 0, , Stdev 0, ,2543 0,8763 0,4552

10 Lampiran 3 Hasil Uji Asumsi Homogenitas Variance Sb Test of Homogeneity of Variances Levene Statistic df df2 Sig

11 Lampiran 4 Hasil Uji Anova Interval Return dengan Standard Error Beta Sb ANOVA Sum of Squares df Mean Square F Sig. Between Groups Within Groups Total

12 Lampiran 5 Hasil Uji Anova Periode Estimasi dengan Standard Error Beta Sb ANOVA Sum of Squares df Mean Square F Sig. Between Groups Within Groups Total

13 Lampiran 6 Estimasi Beta dan Standard Error Beta dengan Interval Return Harian per Periode 203 Variables Entered/Removed b Variables Entered Variables Removed Method Rm a. Enter a. All requested variables entered. b. Dependent Variable: Ri Summary R R Square Adjusted R Square Std. Error of the Estimate.935 a a. Predictors: (Constant), Rm ANOVA b Sum of Squares df Mean Square F Sig. Regression a Residual Total a. Predictors: (Constant), Rm b. Dependent Variable: Ri

14 a Unstandardized Standardized B Std. Error Beta t Sig. (Constant) -4.70E Rm Variables Entered/Removed b Variables Entered Variables Removed Method Rm a. Enter a. All requested variables entered. b. Dependent Variable: Ri Summary R R Square Adjusted R Square Std. Error of the Estimate.936 a a. Predictors: (Constant), Rm

15 ANOVA b Sum of Squares df Mean Square F Sig. Regression a Residual Total a. Predictors: (Constant), Rm b. Dependent Variable: Ri a Unstandardized Standardized B Std. Error Beta t Sig. (Constant) Rm Variables Entered/Removed b Variables Entered Variables Removed Method Rm a. Enter a. All requested variables entered. b. Dependent Variable: Ri

16 Summary R R Square Adjusted R Square Std. Error of the Estimate.960 a a. Predictors: (Constant), Rm ANOVA b Sum of Mean Squares df Square F Sig. Regression a Residual Total a. Predictors: (Constant), Rm b. Dependent Variable: Ri a Unstandardized Standardized B Std. Error Beta t Sig. (Constant) Rm

17 Variables Entered/Removed b Variables Entered Variables Removed Method Rm a. Enter a. All requested variables entered. b. Dependent Variable: Ri Summary R R Square Adjusted R Square Std. Error of the Estimate.956 a a. Predictors: (Constant), Rm ANOVA b Sum of Squares df Mean Square F Sig. Regression a Residual Total.2 98 a. Predictors: (Constant), Rm b. Dependent Variable: Ri

18 a Unstandardized Standardized B Std. Error Beta t Sig. (Constant) E Rm

19 Lampiran 7 Estimasi Beta dan Standard Error Beta dengan Interval Return Mingguan per Periode 203 Variables Entered/Removed a Variables Entered Variables Removed Method Rm b. Enter b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.85 a a. Predictors: (Constant), Rm ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total

20 b. Predictors: (Constant), Rm a Unstandardized Standardized t Sig. B Std. Error Beta (Constant) Rm Variables Entered/Removed a Variables Entered Variables Removed Method Rm b. Enter b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.82 a a. Predictors: (Constant), Rm

21 ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total b. Predictors: (Constant), Rm a Unstandardized Standardized t Sig. B Std. Error Beta (Constant) Rm Variables Entered/Removed a Variables Entered Variables Removed Method Rm b. Enter

22 b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.84 a a. Predictors: (Constant), Rm ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total b. Predictors: (Constant), Rm a Unstandardized Standardized t Sig. B Std. Error Beta (Constant) Rm

23 Variables Entered/Removed a Variables Entered Variables Removed Method Rm b. Enter b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.828 a a. Predictors: (Constant), Rm ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total b. Predictors: (Constant), Rm

24 a Unstandardized Standardized t Sig. B Std. Error Beta (Constant) Rm

25 Lampiran 8 Estimasi Beta dan Standard Error Beta dengan Interval Return Bulanan per Periode 203 Variables Entered/Removed a Variables Variables Method Entered Removed Rm b. Enter b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.72 a a. Predictors: (Constant), Rm 7574 ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total

26 b. Predictors: (Constant), Rm a Unstandardized Standardized t Sig. B Std. Error Beta (Constant) Rm Variables Entered/Removed a Variables Variables Method Entered Removed Rm b. Enter b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.80 a

27 a. Predictors: (Constant), Rm ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total b. Predictors: (Constant), Rm a Unstandardized Standardized B Std. Error Beta t Sig. (Constant) Rm Variables Entered/Removed a Variables Variables Method Entered Removed Rm b. Enter

28 b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.835 a a. Predictors: (Constant), Rm 6583 ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total b. Predictors: (Constant), Rm a Unstandardized Standardized B Std. Error Beta t Sig. (Constant) Rm

29 Variables Entered/Removed a Variables Variables Method Entered Removed Rm b. Enter b. All requested variables entered. Summary R R Square Adjusted R Square Std. Error of the Estimate.88 a a. Predictors: (Constant), Rm 537 ANOVA a Sum of Squares df Mean Square F Sig. Regression b Residual Total b. Predictors: (Constant), Rm

30 a Unstandardized Standardized t Sig. B Std. Error Beta (Constant) Rm

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