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中国管理科学 ›› 2025, Vol. 33 ›› Issue (4): 50-61.doi: 10.16381/j.cnki.issn1003-207x.2022.2439

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基于风险传导网络的投资组合自抗扰研究

陈苑榕, 宋海涛()   

  1. 华南理工大学工商管理学院,广东 广州 510641
  • 收稿日期:2022-11-08 修回日期:2023-03-02 出版日期:2025-04-25 发布日期:2025-04-29
  • 通讯作者: 宋海涛 E-mail:htsong@scut.edu.cn

Research on Portfolio Auto Disturbance Rejection Based on Risk Conduction Network

Yuanrong Chen, Haitao Song()   

  1. School of Business Administration,South China University of Technology,Guangzhou 510641,China
  • Received:2022-11-08 Revised:2023-03-02 Online:2025-04-25 Published:2025-04-29
  • Contact: Haitao Song E-mail:htsong@scut.edu.cn

摘要:

均值方差 (MV) 模型是现代资产配置理论的基础,通过最小化投资组合内资产收益相关性以分散风险。但是,MV受到建模随机误差和市场内外部风险的干扰,模型泛化性能较差。现有投资组合研究主要通过修正风险度量、优化风险结构的方式改进MV建模误差,但模型仍具有强数据依赖,局限于风险分散,无法抵御外生冲击。风险传导具有局部确定性因果关系,但经过多重路径传导形成了复杂关联,使风险总体行为呈现高阶非线性特性。本文提出风险自抗扰的改进思路,利用风险相继作用的确定性,改进MV得到投资组合风险自抗扰模型(portfolio risk active disturbance rejection model,PRADR)。基于A股市场的实证结果显示,股市风险由独立风险根因高阶交互沿供应链相继传导形成,高阶风险传导网络仅需一阶线性网络风险根因数目的1/7,即达到相同水平的风险解释度;经过二维交叉重复试验,PRADR夏普比率更大且波动更小,投资组合表现优于MV;面对股市外生冲击,PRADR风险自抗扰能力强,具有更高的泛化性能。

关键词: 均值方差模型, 风险自抗扰, 风险传导网络, 独立成分分析

Abstract:

The mean variance (MV) model is the basis of modern asset allocation theory. MV disperses risk through minimizing the correlation of asset returns within the portfolio. Since the variance is not applicable to the non-Gaussian distribution of asset returns and the covariance can only describe the linear correlation between assets, MV is interfered by modeling random errors and the internal or external risks in the market, resulting in poor generalization performance. The existing portfolio researches mainly improve the MV modeling error by modifying the risk measurement and optimizing the risk structure, but those models still have strong data dependence which makes the risk offset unstable. Besides, those models are limited to risk dispersion which cannot resist exogenous shocks. Risk conduction exists partially deterministic causal relationship. However, financial risk forms a complex association through multiple paths of conduction, which makes the overall behavior show high order nonlinear characteristics. In this paper, an improved idea of risk auto disturbance rejection is proposed. Using the sequential risk actions, MV is improved to construct Portfolio Risk Active Disturbance Rejection Model (PRADR). Empirical research is conducted using A-share stock market data from July 10, 2017 to December 30, 2022, and the results show that the stock market risk is formed by the high-order of independent risk causes interacted and sequentially conducted along the supply chain. The high-order risk conduction network only needs 1/7 risk causes of the first-order linear network, which achieves the same risk interpretation degree; Through two-dimensional cross repeated test, PRADR Sharpe ratio is larger and less volatile, which illustrates its portfolio performance is better than MV; Suffering from the exogenous stock, PRADR has stronger risk auto disturbance rejection ability and higher generalization performance. The key to portfolio risk autoimmunity is to extract the deterministic relationships contained in uncertain risks and resist uncertainty interference. The deterministic risk transmission laws contained in various enterprise relationships need to be explored and applied.

Key words: mean-variance model, risk active disturbance rejection, risk conduction network, independent component correlation algorithm

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