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Dependent structure and risk analysis of S&P 500 Index's continuously rising returns and continuously falling returns

机译:S&P 500指数的依赖结构和风险分析持续上升回报和持续下降返回

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摘要

Purpose - The stock market price time series can be divided into two processes: continuously rising and continuously falling. The authors can effectively prevent the stock market from crashing by accurately estimating the risk on continuously rising returns (CRR) and continuously falling returns (CFR). Design/methodology/approach - The authors add an exogenous variable into Log-autoregressive conditional duration (Log-ACD) model, and then apply our extended Log-ACD model and Archimedean copula to estimate the marginal distribution and conditional distribution of CRR and CFR. Plus, the authors analyze the conditional value at risk (CVaR) and present back-test results of the CVaR. The back-test shows that our proposed risk estimation method has a good estimation power for the risk of the CRR and CFR, especially the downside risk. In addition, the authors detect whether the dependent structure between the CRR and CFR changes using the change point test method. Findings - The empirical results indicate that there is no change point here, suggesting that the results on the dependent structure and risk analysis mentioned above are stable. Therefore, major financial events will not affect the dependent structure here. This is consistent with the point that the CRR and CFR can be analyzed to obtain the trend of stock returns from a more macro perspective than daily stock returns scholars usually study. Practical implications - The risk estimation method of this paper is of great significance in understanding stock market risk and can provide corresponding valuable information for investment advisors and public policy regulators. Originality/value - The authors defined a new stock returns, CRR and CFR, since it is difficult to analyze and predict the trend of stock returns according to daily stock returns because of the small autocorrelation among daily stock returns.
机译:目的 - 股票市场价格时间序列可分为两个流程:不断上升和持续下降。作者可以通过准确估算持续上升率(CRR)和持续下降返回(CFR)的风险,有效地防止股市崩溃。设计/方法/方法 - 作者将外源变量添加到日志自动增加条件持续时间(Log-ACD)模型中,然后应用我们的扩展日志ACD模型和Archimedean Copula来估计CRR和CFR的边缘分布和条件分布。此外,作者分析了风险(CVAR)的条件价值,并显示了CVAR的返回测试结果。后测试表明,我们提出的风险估计方法具有良好的估算能力,用于CRR和CFR的风险,特别是下行风险。此外,作者还检测CRR和CFR之间的依赖结构是否使用变化点测试方法改变。结果 - 经验结果表明,这里没有变化点,表明上述依赖性结构和风险分析的结果是稳定的。因此,主要的财务事件不会影响依赖结构。这与CRR和CFR可以分析的程度一致,以获得比每年股票的股票回报率从比日常股票回报学者通常学习。实际意义 - 本文的风险估算方法在理解股市风险方面具有重要意义,可以为投资顾问和公共政策监管机构提供相应的有价值信息。原创性/价值 - 作者定义了新的股票回报,CRR和CFR,因为难以分析和预测根据日常股票回报的股票回报趋势,因为每日股票回报中的小型自相关。

著录项

  • 来源
    《The journal of risk finance》 |2021年第1期|93-109|共17页
  • 作者

    Wuyi Ye; Ruyu Zhao;

  • 作者单位

    Department of Statistics and Finance University of Science and Technobgy of China Hefei China;

    Department of Statistics and Finance University of Science and Technobgy of China Hefei China;

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

    Finance; Copula; Risk analysis; Conditional VaR;

    机译:金融;系词;风险分析;条件var.;
  • 入库时间 2022-08-19 02:26:16

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