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A copula-based scenario tree generation algorithm for multiperiod portfolio selection problems

机译:基于Copula的场景树生成算法,用于多级产品组合选择问题

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摘要

Global financial investors have been confronted in recent years with an increasing frequency of market shocks and returns' outliers, until the unprecedented surge of financial risk observed in 2008. From a statistical viewpoint, those market dynamics have shown not only asymmetric returns and fat tails but also a time-varying tail dependence, stimulating the formulation of portfolio selection models based on such assumptions. The concept of tail dependence on upper or lower tails, roughly speaking, focuses on the risk that tail events may occur jointly in different markets. This notion can be given a rigorous probabilistic definition, and it turns out that a distinction between upper and lower tails is relevant in portfolio management. In this paper, relying on a discrete modeling framework, we present a scenario generation algorithm able to capture this time-varying asymmetric tail dependence, and evaluate resulting optimal investment policies based on 4-stages 1-month planning horizons. The scenario tree aims at approximating a stochastic process combining an ARMA-GARCH model and a dynamic Student-t-Clayton copula. From a methodological viewpoint, scenario trees are generated from this model by stage-wisely sampling and clustering and to improve tail fitting with original data, the scenarios' nodal probabilities are calibrated on the returns' lower tails for a set of equity indices. The resulting scenario trees are then applied to solve a multiperiod portfolio selection problem. We present a set of empirical results to validate the adopted statistical approach and the optimal portfolio strategies able to capture asymmetric tail returns.
机译:近年来,全球金融投资者已面临着越来越多的市场震荡频率,并返回异常值,直到2008年观察到的财务风险前所未有的飙升。从统计观点来看,这些市场动态不仅表现出不对称的回报和脂肪尾巴但是还基于这种假设刺激了组合选择模型的制剂的时变尾依赖性。尾部依赖于上下尾部的概念,粗略地说,致力于尾部事件可能在不同市场中共同发生的风险。这概念可以给出严谨的概率定义,事实证明,上下尾部之间的区别在产品组合管理中是相关的。在本文中,依靠离散的建模框架,我们介绍了一种能够捕获这种时变非对称尾部依赖性的场景生成算法,并根据4分月1个月的规划视野评估结果的最佳投资策略。场景树旨在近似于组合ARMA-GARCH模型和动态学生-T-COPULA的随机过程。从方法的角度来看,通过舞台明智的采样和聚类,从该模型生成方案树,并通过原始数据改进尾部拟合,在返回的较低尾部校准方案的节点概率,为一组股票指数校准。然后应用生成的场景树以解决多层段组合选择问题。我们展示了一套经验结果,以验证采用的统计方法和能够捕获不对称尾返回的最佳组合策略。

著录项

  • 来源
    《Annals of Operations Research》 |2020年第2期|849-881|共33页
  • 作者单位

    Xi An Jiao Tong Univ Sch Math & Stat Dept Comp Sci Xian 710049 Shaanxi Peoples R China;

    Xi An Jiao Tong Univ Sch Math & Stat Dept Comp Sci Xian 710049 Shaanxi Peoples R China;

    Univ Bergamo Dept Management Econ & Quantitat Methods Via Caniana 2 I-24127 Bergamo Italy;

    Xi An Jiao Tong Univ Sch Math & Stat Dept Comp Sci Xian 710049 Shaanxi Peoples R China;

    Xi An Jiao Tong Univ Sch Math & Stat Dept Comp Sci Xian 710049 Shaanxi Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Copula; Scenario tree generation; Tail of the distribution; Portfolio selection;

    机译:copula;情景树生成;分配尾部;投资组合选择;

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