APPENDIX 1 DAFTAR POPULASI DAN SAMPEL TAHUN

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1 APPENDIX 1 DAFTAR POPULASI DAN SAMPEL TAHUN No Nama Perusahaan Kode Kriteria Kriteria Kriteri Kriteria Sampel 1 2 a Agung Podomoro Land APLN 2. Alam Sutera Reality ASRI 3. Bekasi Asri Pemula BAPA 4. Bumi Citra Permai BCIP 5. Bekasi Fajar BEST Industrial Estate 6. Bhuawanatala Indah Permai BIPP 7. Bukit Darmo BKDP Property 8. Sentul City BKSL 1 9. Bumi Serpong Damai BSDE 10. Cowell Development COWL 11. Ciputra Development CTRA 12. Ciputra Property CTRP 13. Ciputra Surya CTRS 14. Duta Anggada Realty DART 15. Duta Pertiwi DUTI Intiland Development DILD Bakrieland ELTY Development 18. Megapolitan Development EMDE Fortune Mate FMII 5 Indonesia 20. Gading Development GAMA 21. Gowa Makassar GMTD 6 Tourism Development 22. Perdana Gapura GPRA 7 Prima 23. Greenwood Sejahtera GWSA Jaya Real Property JRPT 9

2 25. Kawasan Industri KIJA Jababeka 26. MNC Land KPIG 27. Lamicitra Nusantara LAMI 28. Laguna Cipta Griya LCGP 29. Lippo Cikarang LPCK Lippo Karawaci LPKR Modernland Realty MDLN Metropolitan MKPI Kentjana 33. Metropolitan Land MTLA 34. Metro realty MTSM 35. Nirvana Development NIRO 36. Indonesia Prima MORE Property 37. Plaza Indonesia PLIN Realty 38. PudjiatiPrestige PUDP 39. Pakuwon Jati PWON 40. Rista Bintang RBMS Mahkota Sejati 41. Roda Vivatex RDTX 42. Pikko Land RODA 13 Development 43. Danayasa Arthatama SCBD 44. Suryamas Duta SMDM Makmur 45. Summarecon Agung SMRA 46. Sitara Propertindo tbk TARA

3 APPENDIX 2 Working Capital Turnover WCT 1 DUTI Duta Pertiwi FMII Fortune Mate Indonesia GMTD Gowa Makassar Tourism Development GWSA Greenwood Sejahtera DILD Intiland Development JRPT Jaya Real Property LPCK Lippo Cikarang LPKR Lippo Karawaci EMDE Megapolitan Development MDLN Modernland Realty GPRA Perdana Gapura Prima RODA Pikko Land Development BKSL Sentul City Receivable Turnover RI 1 DUTI Duta Pertiwi FMII Fortune Mate Indonesia GMTD Gowa Makassar Tourism Development GWSA Greenwood Sejahtera DILD Intiland Development JRPT Jaya Real Property LPCK Lippo Cikarang LPKR Lippo Karawaci EMDE Megapolitan Development MDLN Modernland Realty GPRA Perdana Gapura Prima RODA Pikko Land Development BKSL Sentul City

4 Inventory Turnover IT 1 DUTI Duta Pertiwi FMII Fortune Mate Indonesia GMTD Gowa Makassar Tourism Development GWSA Greenwood Sejahtera DILD Intiland Development JRPT Jaya Real Property LPCK Lippo Cikarang LPKR Lippo Karawaci EMDE Megapolitan Development MDLN Modernland Realty GPRA Perdana Gapura Prima RODA Pikko Land Development BKSL Sentul City Debt to Asset Ratio DAR 1 DUTI Duta Pertiwi FMII Fortune Mate Indonesia GMTD Gowa Makassar Tourism Development GWSA Greenwood Sejahtera DILD Intiland Development JRPT Jaya Real Property LPCK Lippo Cikarang LPKR Lippo Karawaci EMDE Megapolitan Development MDLN Modernland Realty GPRA Perdana Gapura Prima RODA Pikko Land Development BKSL Sentul City

5 Debt to Equity Ratio DER 1 DUTI Duta Pertiwi FMII Fortune Mate Indonesia GMTD Gowa Makassar Tourism Development GWSA Greenwood Sejahtera DILD Intiland Development JRPT Jaya Real Property LPCK Lippo Cikarang LPKR Lippo Karawaci EMDE Megapolitan Development MDLN Modernland Realty GPRA Perdana Gapura Prima RODA Pikko Land Development BKSL Sentul City Return on Asset ROA 1 DUTI Duta Pertiwi FMII Fortune Mate Indonesia GMTD Gowa Makassar Tourism Development GWSA Greenwood Sejahtera DILD Intiland Development JRPT Jaya Real Property LPCK Lippo Cikarang LPKR Lippo Karawaci EMDE Megapolitan Development MDLN Modernland Realty GPRA Perdana Gapura Prima RODA Pikko Land Development BKSL Sentul City

6 APPENDIX 3 OUTPUT SPSS 22 Descriptives Descriptive Statistics N Minimum Maximum Mean Std. Deviation ROA WCT RI IT DAR DER Valid N (listwise) 39 Regression Variables Entered/Removed a Variables Variables Model Entered Removed Method 1 DER, IT, RI, WCT, DAR b. Enter a. Dependent Variable: ROA b. All requested variables entered. Model Summary b Adjusted R Std. Error of the Model R R Square Square Estimate Durbin-Watson a a. Predictors: (Constant), DER, IT, RI, WCT, DAR b. Dependent Variable: ROA

7 ANOVA a Model Sum of Squares df Mean Square F Sig. 1 Regression b Residual Total a. Dependent Variable: ROA b. Predictors: (Constant), DER, IT, RI, WCT, DAR Collinearity Diagnostics a Dime Condition Variance Proportions Model nsion Eigenvalue Index (Constant) WCT RI IT DAR DER a. Dependent Variable: ROA Charts

8 NPar Tests One-Sample Kolmogorov-Smirnov Test Unstandardized Residual N 39 Normal Parameters a,b Mean Std. Deviation Most Extreme Differences Absolute.096 Positive.086 Negative Test Statistic.096 Asymp. Sig. (2-tailed).200 c,d a. Test distribution is Normal. b. Calculated from data. c. Lilliefors Significance Correction. d. This is a lower bound of the true significance.

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