Robust Optimization Approaches for Portfolio Selection: A Computational and Comparative Analysis

A. Georgantas
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Abstract

The field of portfolio selection is an active research topic, which combines elements and methodologies from various fields, such as optimization, decision analysis, risk management, data science, forecasting, etc. The modeling and treatment of deep uncertainties for future asset returns is a major issue for the success of analytical portfolio selection models. Recently, robust optimization (RO) models have attracted a lot of interest in this area. RO provides a computationally tractable framework for portfolio optimization based on relatively general assumptions on the probability distributions of the uncertain risk parameters. Thus, RO extends the framework of traditional linear and non-linear models (e.g., the well-known mean-variance model), incorporating uncertainty through a formal and analytical approach into the modeling process. Robust counterparts of existing models can be considered as worst-case re-formulations as far as deviations of the uncertain parameters from their nominal values are concerned. Although several RO models have been proposed in the literature focusing on various risk measures and different types of uncertainty sets about asset returns, analytical empirical assessments of their performance have not been performed in a comprehensive manner. The objective of this study is to fill in this gap in the literature. More specifically, we consider different types of RO models based on popular risk measures and conduct an extensive comparative analysis of their performance using data from the US market during the period 2005-2016.
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投资组合选择的稳健优化方法:计算与比较分析
投资组合选择是一个活跃的研究课题,它结合了优化、决策分析、风险管理、数据科学、预测等各个领域的要素和方法。对未来资产收益的深度不确定性的建模和处理是分析性投资组合选择模型成功的一个主要问题。近年来,鲁棒优化(RO)模型在该领域引起了广泛的关注。基于对不确定风险参数的概率分布的相对一般假设,RO为投资组合优化提供了一个计算上易于处理的框架。因此,RO扩展了传统线性和非线性模型的框架(例如,众所周知的均值-方差模型),通过形式化和分析方法将不确定性纳入建模过程。就不确定参数与其标称值的偏差而言,现有模型的鲁棒对应物可以被认为是最坏情况的重新表述。尽管文献中提出了几种RO模型,重点关注各种风险度量和不同类型的资产回报不确定性集,但尚未对其绩效进行全面的分析实证评估。本研究的目的是填补这一空白的文献。更具体地说,我们基于流行的风险度量考虑了不同类型的RO模型,并使用2005-2016年期间美国市场的数据对其性能进行了广泛的比较分析。
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