Precision Matrix Estimation for the Global Minimum Variance Portfolio

springer

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摘要
We use the Minimum Regularised Covariance Determinant Estimator (MRCD) to limit weights’ misspecification within the Global Minimum Variance Portfolio (GMVP) framework. Estimating the precision matrix is a key step that often generates misspecification which translates to resulting portfolio weights, directly affecting the GMVP out-of-sample performance. This effect is exacerbated when data are high-dimensional and non-Normal. To this extent, we propose using the MRCD because is well-designed to deal with high-dimensionality and non-Normality. We perform an extensive Monte Carlo simulation analysis to check the effectiveness of the proposed approach in comparison to the sample estimator. Our analysis demonstrates that the out-of-sample performance of the GMVP benefits from the use of the MRCD estimator: results suggest a reduction in the portfolio turnover at no cost for the portfolio variance and an increase in the portfolio Sharpe ratio.
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关键词
Precision matrix, Global Minimum Variance Portfolio, Estimation error
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