Tail Risk Early Warning System for Capital Markets Based on Machine Learning Algorithms

被引:6
|
作者
Zhang, Zongxin [1 ]
Chen, Ying [1 ]
机构
[1] Fudan Univ, Sch Econ, Shanghai, Peoples R China
基金
中国国家自然科学基金;
关键词
Tail Risk Measurement; Risk Warning; AcF Model; Machine Learning Algorithms; STOCK RETURNS; INDICATORS;
D O I
10.1007/s10614-021-10171-0
中图分类号
F [经济];
学科分类号
02 ;
摘要
Scientific and effective tail risk measurement and early warning are key points and difficulties in the identification and control of major risks in capital markets. In this paper, we use the autoregressive conditional Frechet model (AcF) to construct a tail risk measurement index for the capital market in China. The tail risk status identified by the scientific index method is used as a monitoring anchor to construct and optimize a tail risk early warning model based on machine learning algorithms. The study yields three findings. (1) The AcF model can overcome the shortcomings of traditional models in tail risk measurement and significantly improve the tail risk measurement efficiency of the capital market. (2) Tail risk synergies between equity and bond markets are significantly stronger than yield synergies, and the tail risk measure index has the role of a leading indicator of significant risk in capital markets. (3) Based on the joint test of risk status and crisis identification efficiency, the Logit model of crisis identification fails whereas the tail risk warning model optimized by machine learning algorithms can accurately identify crises and significant risks. The optimal early warning model pairings for the stock market and bond market are the oversampling-random forest algorithm and the double sampling-random forest algorithm, respectively, with out-of-sample crisis warning accuracies of 81.94% and 90.20%, respectively.
引用
收藏
页码:901 / 923
页数:23
相关论文
共 50 条
  • [21] Machine learning as an early warning system to predict financial crisis
    Samitas, Aristeidis
    Kampouris, Elias
    Kenourgios, Dimitris
    INTERNATIONAL REVIEW OF FINANCIAL ANALYSIS, 2020, 71
  • [22] Machine Learning in Capital Markets: Decision Support System for Outcome Analysis
    Rosati, Riccardo
    Romeo, Luca
    Goday, Carlos Alfaro
    Menga, Tullio
    Frontoni, Emanuele
    IEEE ACCESS, 2020, 8 (08): : 109080 - 109091
  • [23] Machine Learning Approach in the Prediction of Fog: An Early Warning System
    Shankar, Anand
    Kumar, Ashish
    Sinha, Vivek
    MAUSAM, 2024, 75 (04): : 1039 - 1050
  • [24] Clinical evaluation of a machine learning-based early warning system for patient deterioration
    Verma, Amol A.
    Stukel, Therese A.
    Colacci, Michael
    Bell, Shirley
    Ailon, Jonathan
    Friedrich, Jan O.
    Murray, Joshua
    Kuzulugil, Sebnem
    Yang, Zhen
    Lee, Yuna
    Pou-Prom, Chloe
    Mamdani, Muhammad
    CANADIAN MEDICAL ASSOCIATION JOURNAL, 2024, 196 (30) : E1027 - E1037
  • [25] Machine-learning-based early-warning system maintains stable production
    Ma, Kang
    Jiang, Hanqiao
    Li, Junjian
    JPT, Journal of Petroleum Technology, 2020, 72 (03): : 59 - 60
  • [26] Nonlinear behavior of tail risk resonance and early warning: Insight from global energy stock markets
    Xie, Qichang
    Fang, Tingwei
    Rong, Xueyun
    Xu, Xin
    INTERNATIONAL REVIEW OF FINANCIAL ANALYSIS, 2024, 93
  • [27] Machine learning-based accidents analysis and risk early warning of hazardous materials transportation
    Chai, Huo
    Dong, Kaikai
    Liang, Yiming
    Han, Zhencheng
    He, Ruichun
    JOURNAL OF LOSS PREVENTION IN THE PROCESS INDUSTRIES, 2025, 95
  • [28] Machine Learning for Demand Estimation in Long Tail Markets
    Adam, Hammaad
    He, Pu
    Zheng, Fanyin
    MANAGEMENT SCIENCE, 2024, 70 (08) : 5040 - 5065
  • [29] Time-frequency spillover and early warning of climate risk in international energy markets and carbon markets: From the perspective of complex network and machine learning
    Xu, Changxin
    Chen, Zixu
    Zhu, Wenjun
    Zhi, Jiaqi
    Yu, Yue
    Shi, Changfeng
    ENERGY, 2025, 318
  • [30] Development of machine learning based early warning for rapid response system in a single cancer center
    Kho, Bo-Gun
    Kim, Min-Seok
    Kim, Tae-Ok
    Park, Cheol-Kyu
    Kim, Young-Chul
    Kim, Soo-Hyung
    Oh, In-Jae
    CLINICAL CANCER RESEARCH, 2021, 27 (05)