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Maximum likelihood estimation of covariance matrices with constraints on the efficient frontier

机译:约束有效边界的协方差矩阵的最大似然估计

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摘要

This paper develops an improved covariance matrix estimator in the mean-variance optimisation setting. Well-known problems with the sample covariance matrix are that it is singular when the number of observations is less than the number of assets, and can be nearly singular when the number of observations exceeds the number of assets. Therefore, using the sample covariance matrix as an input in mean-variance optimisation can result in unreasonable optimal portfolios and badly biased estimates of Sharpe ratios. We address this problem by imposing structure on the estimated covariance matrix by putting constraints on the Sharpe ratio, asset return variances, and the variance of the global minimum variance portfolio. We show that the constrained maximum likelihood estimator (CMLE) performs better than the sample covariance matrix. Moreover, when the shrinkage approach is applied to the CMLE and single index covariance matrix, it performs better than the shrinkage estimator of Ledoit and Wolf (2004).
机译:本文在均值方差优化设置中开发了一种改进的协方差矩阵估计器。样本协方差矩阵的一个众所周知的问题是,当观察数少于资产数时,它是奇异的;而当观察数超过资产数时,它可能几乎是奇数。因此,在均值方差优化中使用样本协方差矩阵作为输入会导致不合理的最优投资组合和夏普比率的估计偏差。我们通过对Sharpe比率,资产收益方差和全局最小方差组合的方差施加约束,在估计的方差矩阵上强加结构来解决此问题。我们表明,约束最大似然估计器(CMLE)的性能优于样本协方差矩阵。此外,将收缩方法应用于CMLE和单指数协方差矩阵时,其效果优于Ledoit和Wolf(2004)的收缩估计量。

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