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A novel probabilistic hesitant fuzzy portfolio selection model with value-at-risk and safety level of score

机译:具有价值 - 风险和安全水平的新型概率犹豫不决的模糊组合选择模型

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Purpose This paper aims to propose two portfolio selection models with hesitant value-at-risk (HVaR) - HVaR fuzzy portfolio selection model (HVaR-FPSM) and HVaR-score fuzzy portfolio selection model (HVaR-S-FPSM) - to help investors solve the problem that how bad a portfolio can be under probabilistic hesitant fuzzy environment. Design/methodology/approach It is strictly proved that the higher the probability threshold, the higher the HVaR in HVaR-S-FPSM. Numerical examples and a case study are used to illustrate the steps of building the proposed models and the importance of the HVaR and score constraint. In case study, the authors conduct a sensitivity analysis and compare the proposed models with decision-making models and hesitant fuzzy portfolio models. Findings The score constraint can make sure that the portfolio selected is profitable, but will not cause the HVaR to decrease dramatically. The investment proportions of stocks are mainly affected by their HVaRs, which is consistent with the fact that the stock having good performance is usually desirable in portfolio selection. The HVaR-S-FPSM can find portfolios with higher HVaR than each single stock and has little sacrifice of extreme returns. Originality/value This paper fulfills a need to construct portfolio selection models with HVaR under probabilistic hesitant fuzzy environment. As a downside risk, the HVaR is more consistent with investors' intuitions about risks. Moreover, the score constraint makes sure that undesirable portfolios will not be selected.
机译:目的本文旨在提出两个具有犹豫价值 - 风险(HVAR)的投资组合选择模型 - HVAR模糊组合选择模型(HVAR-FPSM)和HVAR-Score模糊组合选择模型(HVAR-S-FPSM) - 帮助投资者解决问题的问题是投资组合有多糟糕可能在概率犹豫不决的模糊环境下。设计/方法/方法严格证明概率阈值越高,HVAR-S-FPSM中的HVAR越高。使用数值示例和案例研究来说明建立所提出的模型和HVAR和得分约束的重要性的步骤。在案例研究中,作者对敏感性分析进行了敏感性分析,并将提出的模型与决策模型和犹豫不决的模糊组合模型进行比较。调查结果可以确保所选择的投资组合是有利可图的,但不会导致赫瓦尔急剧下降。股票的投资比例主要受其猎舍的影响,这与具有良好性能的股票在产品组合选择中是一致的。 HVAR-S-FPSM可以找到比每股股票更高的HVAR的投资组合,并且极端回报的牺牲不大。原创性/值本文履行了在概率犹豫不决的模糊环境下使用HVAR构建投资组合选择模型。作为下行风险,HVAR与投资者的风险的直觉更符合。此外,得分约束确保不选择不良的投资组合。

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