Firm Credit Scoring: A Series Two-Stage DEA Bootstrapped Approach
Abstract
:1. Introduction
2. Literature Review
3. Methodological Framework—Data Set
3.1. Conceptual Framework
3.2. Model Building
3.2.1. DEA Modeling
3.2.2. Clustering Firms
3.3. Data Set
4. Results
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
References
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Descriptive Statistics | Total Assets * | Interest Expenses * | Sales * | Earnings Persistence * | EBITDA * | Cash Flow * |
---|---|---|---|---|---|---|
Mean | 44,568.86 | 615.29 | 35,739.91 | 1390.42 | 11,317.38 | 12,100.82 |
Standard deviation | 67,804.84 | 1004.18 | 55,862.22 | 2310.35 | 7445.45 | 7460.18 |
Median | 10,855.45 | 33.50 | 5839.36 | 372.43 | 8532.92 | 9506.21 |
Min | 8.35 | 0.01 | 3.99 | 4.22 | 800.50 | 287.95 |
Max | 265,894.12 | 4413.65 | 240,677.89 | 12,219.45 | 52,345.35 | 49,697.72 |
Sub-Process Efficiency | Operating Efficiency | Effectiveness | ||||||
---|---|---|---|---|---|---|---|---|
Point/Bootstrapped Estimates | Point Estimates | Bootstrapped Estimates | Point Estimates | Bootstrapped Estimates | ||||
DEA Estimates | DEA Point Estimates | DEA Bias-Corrected | DEA-LB | DEA-UB | DEA Point Estimates | DEA Bias-Corrected | DEA-LB | DEA-UB |
Mean | 0.5662 | 0.4854 | 0.4021 | 0.5652 | 0.2952 | 0.2116 | 0.1670 | 0.2940 |
Standard deviation | 0.2695 | 0.2050 | 0.1680 | 0.2689 | 0.2963 | 0.1976 | 0.1596 | 0.2949 |
Median | 0.5055 | 0.4608 | 0.3817 | 0.5045 | 0.1925 | 0.1435 | 0.1116 | 0.1918 |
Min | 0.1911 | 0.1615 | 0.1280 | 0.1907 | 0.0006 | 0.0005 | 0.0004 | 0.0006 |
Max | 1.0000 | 0.9306 | 0.7936 | 0.9984 | 1.0000 | 0.7395 | 0.5717 | 0.9958 |
Descriptive Statistics | Point Estimates * | Bootstrapped Estimates * | Cross Efficiency Estimares ** |
---|---|---|---|
Mean | 0.6053 | 0.6085 | 0.5037 |
Standard deviation | 0.2809 | 0.2820 | 0.2277 |
Median | 0.5307 | 0.5313 | 0.4469 |
Min | 0.1911 | 0.1906 | 0.1646 |
Max | 1.0000 | 0.9985 | 1.0000 |
Descriptive Statistics/Classes | Class I | Class II | Class III |
---|---|---|---|
Mean | 0.9364 | 0.5183 | 0.3151 |
Standard deviation | 0.1180 | 0.0857 | 0.0922 |
Median | 0.9962 | 0.5144 | 0.3092 |
Min | 0.6378 | 0.4001 | 0.1906 |
Max | 0.9985 | 0.7434 | 0.4995 |
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Tsolas, I.E. Firm Credit Scoring: A Series Two-Stage DEA Bootstrapped Approach. J. Risk Financial Manag. 2021, 14, 214. https://doi.org/10.3390/jrfm14050214
Tsolas IE. Firm Credit Scoring: A Series Two-Stage DEA Bootstrapped Approach. Journal of Risk and Financial Management. 2021; 14(5):214. https://doi.org/10.3390/jrfm14050214
Chicago/Turabian StyleTsolas, Ioannis E. 2021. "Firm Credit Scoring: A Series Two-Stage DEA Bootstrapped Approach" Journal of Risk and Financial Management 14, no. 5: 214. https://doi.org/10.3390/jrfm14050214
APA StyleTsolas, I. E. (2021). Firm Credit Scoring: A Series Two-Stage DEA Bootstrapped Approach. Journal of Risk and Financial Management, 14(5), 214. https://doi.org/10.3390/jrfm14050214