An Improved Estimation to Make Markowitz's Portfolio Optimization Theory Users Friendly and Estimation Accurate with Application on the US Stock Market Investment

P. Leung, Hon-Yip Ng, W. Wong
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引用次数: 66

Abstract

Using the Markowitz mean–variance portfolio optimization theory, researchers have shown that the traditional estimated return greatly overestimates the theoretical optimal return, especially when the dimension to sample size ratio p/n is large. Bai et al. (2009) propose a bootstrap-corrected estimator to correct the overestimation, but there is no closed form for their estimator. To circumvent this limitation, this paper derives explicit formulas for the estimator of the optimal portfolio return. We also prove that our proposed closed-form return estimator is consistent when n→∞ and p/n→y∈(0,1). Our simulation results show that our proposed estimators dramatically outperform traditional estimators for both the optimal return and its corresponding allocation under different values of p/n ratios and different inter-asset correlations ρ, especially when p/n is close to 1. We also find that our proposed estimators perform better than the bootstrap-corrected estimators for both the optimal return and its corresponding allocation. Another advantage of our improved estimation of returns is that we can also obtain an explicit formula for the standard deviation of the improved return estimate and it is smaller than that of the traditional estimate, especially when p/n is large. In addition, we illustrate the applicability of our proposed estimate on the US stock market investment.
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一种改进的估计,使马科维茨的投资组合优化理论易于使用和估计准确,并在美国股市投资中的应用
利用马科维茨均值-方差投资组合优化理论,研究人员发现传统的估计收益大大高估了理论最优收益,特别是当维度与样本容量之比p/n较大时。Bai等人(2009)提出了一种自举校正估计器来纠正过高估计,但他们的估计器没有封闭形式。为了规避这一限制,本文导出了最优投资组合收益估计的显式公式。我们还证明了当n→∞且p/n→y∈(0,1)时所提出的闭型回归估计量是一致的。我们的模拟结果表明,在不同的p/n比率值和不同的资产间相关性ρ下,特别是当p/n接近1时,我们提出的估计器在最优收益及其相应分配方面都显著优于传统估计器。我们还发现,对于最优收益及其相应的分配,我们提出的估计量比自举校正估计量表现得更好。我们改进收益估计的另一个优点是,我们还可以得到改进收益估计的标准差的显式公式,它比传统估计的标准差要小,特别是当p/n较大时。此外,我们说明了我们提出的估计对美国股市投资的适用性。
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