驾驭不确定性:通过样本外分析改进马科维茨资产配置策略

FinTech Pub Date : 2024-02-17 DOI:10.3390/fintech3010010
V. Kanaparthi
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引用次数: 5

摘要

本研究论文探讨了不确定性与马科维茨资产配置框架之间的复杂联系,具体研究了在样本外评估过程中,参数估计错误如何对策略绩效产生重大影响。借鉴相关文献,我们强调了研究结果的重要性。与常见的假设不同,我们的研究系统地将这些方法与其他分配策略进行了比较,深入探讨了它们在预期和现实世界样本外事件中的表现。研究表明,采用解决不确定性的方法可以增强马科维茨框架,从而对 "样本期越长,结果越好 "的观点提出质疑。值得注意的是,施加卖空限制被证明是提高初始投资组合有效性的重要策略。在揭示不确定性复杂性的同时,我们的研究还凸显了基本资产配置方法(如等权配置)令人惊讶的复原力,其表现值得称赞。在方法上,我们采用了严格的样本外评估,强调参数不确定性对资产配置结果的实际影响。考虑到市场的动态性和传统模型的内在局限性,投资者、投资组合经理和金融从业人员可以利用这些见解来完善他们的策略。总之,本文超越了理论范畴,为加强现实世界的投资决策提供了实质性价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Navigating Uncertainty: Enhancing Markowitz Asset Allocation Strategies through Out-of-Sample Analysis
This research paper explores the complicated connection between uncertainty and the Markowitz asset allocation framework, specifically investigating how mistakes in estimating parameters significantly impact the performance of strategies during out-of-sample evaluations. Drawing on relevant literature, we highlight the importance of our findings. In contrast to common assumptions, our study systematically compares these approaches with alternative allocation strategies, providing insights into their performance in both anticipated and real-world out-of-sample events. The research demonstrates that incorporating methods to address uncertainty enhances the Markowitz framework, challenging the idea that longer sample periods always lead to better outcomes. Notably, imposing a short-sale constraint proves to be a valuable strategy for improving the effectiveness of the initial portfolio. While revealing the complexities of uncertainty, our study also highlights the surprising resilience of basic asset allocation approaches, such as equally weighted allocation, which exhibit commendable performance. Methodologically, we employ a rigorous out-of-sample evaluation, emphasizing the practical implications of parameter uncertainty on asset allocation outcomes. Investors, portfolio managers, and financial practitioners can use these insights to refine their strategies, considering the dynamic nature of markets and the limitations internal to the traditional models. In conclusion, this paper goes beyond the theoretical scope to provide substantial value in enhancing real-world investment decisions.
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