Bruno Gašperov, Marko Đurasević, Domagoj Jakobovic
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引用次数: 0
摘要
金融投资组合优化(PO)的大多数标准方法都基于均值-方差(MV)框架。在给定风险厌恶系数的情况下,均值-方差程序会产生一个代表风险与收益之间最佳权衡的单一投资组合。然而,众所周知,由此得出的最优投资组合对输入参数(即收益协方差矩阵和平均收益向量的估计值)高度敏感。事实证明,更稳健、更灵活的替代方法在于确定近似最优投资组合的整个区域。在本文中,我们提出了一种基于质量多样性(QD)优化的新方法,用于寻找多样化的此类投资组合。更具体地说,我们采用了 CVT-MAP-Elites 算法,该算法可扩展至可能包含数百个行为描述符和/或资产的高维环境。研究结果凸显了 QD 作为 PO 新工具的优势。
Finding Near-Optimal Portfolios With Quality-Diversity
The majority of standard approaches to financial portfolio optimization (PO)
are based on the mean-variance (MV) framework. Given a risk aversion
coefficient, the MV procedure yields a single portfolio that represents the
optimal trade-off between risk and return. However, the resulting optimal
portfolio is known to be highly sensitive to the input parameters, i.e., the
estimates of the return covariance matrix and the mean return vector. It has
been shown that a more robust and flexible alternative lies in determining the
entire region of near-optimal portfolios. In this paper, we present a novel
approach for finding a diverse set of such portfolios based on
quality-diversity (QD) optimization. More specifically, we employ the
CVT-MAP-Elites algorithm, which is scalable to high-dimensional settings with
potentially hundreds of behavioral descriptors and/or assets. The results
highlight the promising features of QD as a novel tool in PO.