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A minimax regret approach for robust multi-objective portfolio selection problems with ellipsoidal uncertainty sets

机译:具有椭圆形不确定性集的强大多目标产品组合选择问题的最低限度遗憾方法

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摘要

Since security return cannot be accurately estimated using past data, in this paper it is assumed to take values in a given ellipsoidal uncertainty set. This paper aims to discuss a robust multi-objective portfolio selection problem based on the minimax regret criterion under an ellipsoidal uncertainty sets, in which the two objective functions are the portfolio return to be maximized and the mean absolute deviation as a risk measure to be minimized. The robust counterpart formulation for the proposed model is firstly presented, then an algorithm based on the relaxation procedure is designed to solve the robust counterpart formulation with second-order cone constraints and infinite constraints. Finally, a practical example based on real market data is presented to illustrate the effectiveness of the proposed model and the algorithm. Compared with the traditional robust portfolio model based on minimax robustness, the robust minimax regret optimal solutions proposed in this paper have better performance on several evaluation criteria.
机译:由于不能使用过去的数据准确地估计安全返回,因此假设在给定的椭圆形不确定性集中取值。本文旨在基于椭圆形不确定性集下的最低限度遗憾标准讨论一个强大的多目标产品组合选择问题,其中两个目标函数是投资组合返回最大化,并且平均绝对偏差作为最小化的风险尺寸。首先介绍了所提出的模型的鲁棒对应物配方,然后设计基于弛豫过程的算法,以解决具有二阶锥限制和无限约束的鲁棒对应物配方。最后,提出了一种基于实际市场数据的实际示例,以说明所提出的模型和算法的有效性。与基于MIMIMAX稳健性的传统强大投资组合模型相比,本文提出的强大的MIMIMAX遗憾最佳解决方案具有更好的若干评估标准。

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