Generating VaR Scenarios under Solvency II with Product Beta Distributions
Abstract
1. Introduction
2. The Monte Carlo Algorithm
- Choose an index I randomly according to a uniform distribution over .
 - Generate independently d random variables , …, where follows a Beta distribution with parameters and (product beta distribution).
 - Set .
 
3. Case Study
4. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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| No. | Risk | Risk | 
|---|---|---|
| 1 | 0.468 | 0.966 | 
| 2 | 9.951 | 2.679 | 
| 3 | 0.866 | 0.897 | 
| 4 | 6.731 | 2.249 | 
| 5 | 1.421 | 0.956 | 
| 6 | 2.040 | 1.141 | 
| 7 | 2.967 | 1.707 | 
| 8 | 1.200 | 1.008 | 
| 9 | 0.426 | 1.065 | 
| 10 | 1.946 | 1.162 | 
| 11 | 0.676 | 0.918 | 
| 12 | 1.184 | 1.336 | 
| 13 | 0.960 | 0.933 | 
| 14 | 1.972 | 1.077 | 
| 15 | 1.549 | 1.041 | 
| 16 | 0.819 | 0.899 | 
| 17 | 0.063 | 0.710 | 
| 18 | 1.280 | 1.118 | 
| 19 | 0.824 | 0.894 | 
| 20 | 0.227 | 0.837 | 
| 0.0954 | 1.1909 | |
| –0.0437 | 0.2857 | 
| m = 15 | m = 20 | m = 25 | m = 30 | m = 50 | m = 100 | Kernel Density | |
|---|---|---|---|---|---|---|---|
| 13.987 | 12.978 | 12.347 | 12.016 | 11.341 | 10.908 | 11.754 | |
| 40.637 | 31.235 | 26.989 | 23.966 | 19.498 | 16.580 | 17.272 | |
| 60.752 | 44.270 | 36.410 | 30.846 | 23.390 | 18.864 | 19.087 | 
| Bernstein | NB Rook, a = 7 | NB UF, a = 7 | NB Rook, a = 15 | NB UF, a = 15 | |
|---|---|---|---|---|---|
| 7.166 | 6.885 | 7.016 | 6.974 | 7.155 | |
| 15.634 | 15.973 | 15.744 | 15.877 | 16.059 | |
| 21.105 | 20.801 | 21.311 | 20.256 | 21.733 | 
| Gamma Rook, a = 7 | Gamma UF, a = 7 | Gamma Rook, a = 15 | Gamma UF, a = 15 | |
|---|---|---|---|---|
| 9.330 | 10.072 | 9.522 | 10.191 | |
| 18.113 | 21.224 | 18.550 | 21.428 | |
| 22.933 | 28.123 | 23.079 | 28.588 | 
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Pfeifer, D.; Ragulina, O. Generating VaR Scenarios under Solvency II with Product Beta Distributions. Risks 2018, 6, 122. https://doi.org/10.3390/risks6040122
Pfeifer D, Ragulina O. Generating VaR Scenarios under Solvency II with Product Beta Distributions. Risks. 2018; 6(4):122. https://doi.org/10.3390/risks6040122
Chicago/Turabian StylePfeifer, Dietmar, and Olena Ragulina. 2018. "Generating VaR Scenarios under Solvency II with Product Beta Distributions" Risks 6, no. 4: 122. https://doi.org/10.3390/risks6040122
APA StylePfeifer, D., & Ragulina, O. (2018). Generating VaR Scenarios under Solvency II with Product Beta Distributions. Risks, 6(4), 122. https://doi.org/10.3390/risks6040122
        
