不确定情况下多目标组合优化的风险管理

Yannick Becker, Pascal Halffmann, Anita Schöbel
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引用次数: 0

摘要

在投资组合优化中,决策者面临着现实世界中固有的不确定性带来的困难。这些不确定性严重影响了经典模型和多目标马科维茨模型中的投资组合结果。为了应对这些挑战,我们的研究探索了稳健多目标优化的力量。由于投资组合经理经常根据基准来衡量他们的解决方案,我们通过纳入这些基准比较来增强多目标最小遗憾稳健性概念。这种方法弥补了理论模型与现实世界投资场景之间的差距,为投资组合经理提供了更可靠、更适应市场不确定性的策略。我们的框架为现实世界条件下的投资组合优化提供了一种更均衡、更实用的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk management in multi-objective portfolio optimization under uncertainty
In portfolio optimization, decision makers face difficulties from uncertainties inherent in real-world scenarios. These uncertainties significantly influence portfolio outcomes in both classical and multi-objective Markowitz models. To address these challenges, our research explores the power of robust multi-objective optimization. Since portfolio managers frequently measure their solutions against benchmarks, we enhance the multi-objective min-regret robustness concept by incorporating these benchmark comparisons. This approach bridges the gap between theoretical models and real-world investment scenarios, offering portfolio managers more reliable and adaptable strategies for navigating market uncertainties. Our framework provides a more nuanced and practical approach to portfolio optimization under real-world conditions.
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