The Performance of Shrinkage Estimator for Stock Portfolio Selection in Case of High Dimensionality
Abstract
:1. Introduction
2. Literature Review
Shrinkage Estimator of Covariance Matrix
3. Methodology
3.1. Input Data
3.2. Portfolio Performance Evaluation Methodology
3.3. Portfolio Selection
4. Result
4.1. Competing Estimators and Benchmarks
4.2. Empirical Results
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Estimators | Portfolio Performance Metrics | ||||||
---|---|---|---|---|---|---|---|
Portfolio’s Return (Annually) | Sharpe Ratio | Jensen’s Alpha | Winning Ratio | Portfolio’s Risk (Annual Volatility) | Portfolio Turnover (Daily) | Maximum Loss | |
VN-Index | 13.00% | 0.6 | −0.18% | 55.31% | 17.03% | 0.10% | −45.34% |
N = 50 | |||||||
1/N portfolio | 9.55% | 0.45 | −1.41% | 56.01% | 15.64% | 1.03% | −41.63% |
SC | 13.87% | 0.84 | 4.86% | 54.41% | 12.02% | 3.01% | −38.46% |
SI | 13.46% | 0.73 | 2.52% | 56.66% | 14.04% | 1.12% | −36.35% |
Shrinkage | 13.55% | 0.82 | 3.05% | 54.73% | 11.95% | 3.59% | −38.6% |
N = 100 | |||||||
1/N portfolio | 12.35% | 0.66 | 1.84% | 57.11% | 14.12% | 0.99% | −39.36% |
SC | 11.93% | 0.8 | 4.38% | 54.26% | 9.86% | 4.11% | −27.64% |
SI | 14.75% | 0.9 | 4.59% | 57.52% | 12.25% | 1.15% | −32.39% |
Shrinkage | 12.69% | 0.89 | 5.06% | 54.81% | 9.63% | 3.65% | −25.81% |
N = 200 | |||||||
1/N portfolio | 15.53% | 0.98 | 5.79% | 59.02% | 12.09% | 1.02% | −31.47% |
SC | 12.69% | 1.01 | 6.07% | 55.01% | 8.68% | 5.99% | −28.86% |
SI | 17.43% | 1.26 | 8.08% | 59.52% | 10.48% | 1.11% | −25% |
Shrinkage | 14.28% | 1.26 | 7.56% | 55.11% | 8.07% | 4.47% | −21.86% |
N = 350 | |||||||
1/N portfolio | 18.27% | 1.3 | 9.00% | 59.62% | 10.69% | 0.54% | −22.63% |
SC | 13.95% | 0.85 | 4.89% | 55.01% | 11.9% | 2.81% | −38.76% |
SI | 20.02% | 1.56 | 10.80% | 60.97% | 9.80% | 1.10% | −20.76% |
Shrinkage | 18.57% | 1.85 | 11.84% | 57.87% | 7.48% | 4.38% | −16.73% |
Performance Metrics | The size of Portfolio (N) | |||
---|---|---|---|---|
50 | 100 | 200 | 350 | |
Portfolio’s return (Annually) | ||||
Sharpe ratio | ||||
Portfolio turnover (daily) | ||||
Maximum loss |
Performance Metrics | The Size of Portfolio (N) | |||
---|---|---|---|---|
50 | 100 | 200 | 350 | |
Portfolio’s return (Annually) | ||||
Sharpe ratio | ||||
Portfolio turnover (daily) | ||||
Maximum loss |
Performance Metrics | The Size of Portfolio (N) | |||
---|---|---|---|---|
50 | 100 | 200 | 350 | |
Portfolio’s return (Annually) | ||||
Sharpe ratio | ||||
Portfolio turnover (daily) | ||||
Maximum loss |
N = 50 | N = 100 |
N = 200 | N = 350 |
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Nguyen, N.M.; Nguyen, T.D.; Thalassinos, E.I.; Le, H.A. The Performance of Shrinkage Estimator for Stock Portfolio Selection in Case of High Dimensionality. J. Risk Financial Manag. 2022, 15, 249. https://doi.org/10.3390/jrfm15060249
Nguyen NM, Nguyen TD, Thalassinos EI, Le HA. The Performance of Shrinkage Estimator for Stock Portfolio Selection in Case of High Dimensionality. Journal of Risk and Financial Management. 2022; 15(6):249. https://doi.org/10.3390/jrfm15060249
Chicago/Turabian StyleNguyen, Nhat Minh, Trung Duc Nguyen, Eleftherios I. Thalassinos, and Hoang Anh Le. 2022. "The Performance of Shrinkage Estimator for Stock Portfolio Selection in Case of High Dimensionality" Journal of Risk and Financial Management 15, no. 6: 249. https://doi.org/10.3390/jrfm15060249
APA StyleNguyen, N. M., Nguyen, T. D., Thalassinos, E. I., & Le, H. A. (2022). The Performance of Shrinkage Estimator for Stock Portfolio Selection in Case of High Dimensionality. Journal of Risk and Financial Management, 15(6), 249. https://doi.org/10.3390/jrfm15060249