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Robust minimum variance portfolio optimization modelling under scenario uncertainty

机译:情景不确定性下的鲁棒最小方差投资组合优化建模

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Our purpose in this article is to develop a robust optimization model which minimizes portfolio variance for a finite set of covariance matrices scenarios. The proposed approach aims at the proper selection of portfolios, in a way that for every covariance matrix estimate included in the analysis, the calculated portfolio variance remains as close to the corresponding individual minimum value, as possible. To accomplish this, we formulate a mixed integer non-linear program with quadratic constraints. With respect to practical underlying concerns, investment policy constraints regarding the portfolio structure are also taken into consideration. The validity of the proposed approach is verified through extensive out-of-sample empirical testing in the EuroStoxx 50, the S&P 100, the S&P 500, as well as a well-diversified investment universe of ETFs. We report consistent generation of stable out-of-sample returns, which are in most cases superior to those of the worst-case scenario. Moreover, we provide strong evidence that the proposed robust model assists in selective asset picking and systematic avoidance of excessive losses.
机译:我们在本文中的目的是开发一个鲁棒的优化模型,该模型将针对一组有限的协方差矩阵场景的投资组合方差最小化。拟议的方法旨在正确选择投资组合,以这种方式,对于分析中包含的每个协方差矩阵估计,计算出的投资组合方差保持尽可能接近相应的单个最小值。为此,我们制定了具有二次约束的混合整数非线性程序。关于实际的潜在问题,还考虑了有关投资组合结构的投资政策约束。通过在EuroStoxx 50,S&P 100,S&P 500和广泛分散的ETF投资中进行的大量样本外经验测试,验证了该方法的有效性。我们报告稳定地产生了稳定的样本外收益,在大多数情况下,这些收益要比最坏情况下的收益要好。此外,我们提供了有力的证据,表明所提出的鲁棒模型有助于选择性资产挑选和系统避免过多损失。

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