This paper proposes a Markov-switching copula model to examine the presence of regime change in the time-varying dependence structure between oil price changes and stock market returns in six GCC countries. The margin...This paper proposes a Markov-switching copula model to examine the presence of regime change in the time-varying dependence structure between oil price changes and stock market returns in six GCC countries. The marginal distributions are assumed to follow a long-memory model while the copula parameters are supposed to evolve according to the Markov-switching process. Furthermore, we estimate the Value-at-Risk (VaR) based on the proposed approach. The empirical results provide evidence of three regime changes, representing precrisis, financial crisis and post-crisis, in the dependence structure between energy and GCC stock markets. In particular, in the pre- and post-crisis regimes, there is no dependence, while in the crisis regime, there is significant tail dependence. For OPEC countries, we find lower tail dependence whereas in non-OPEC countries, we see upper tail dependence. VaR experiments show that the Markov-switching time- varying copula model performs better than the time-varying copula model.展开更多
地震动常被拆解为两个水平向分量(x、y)和一个竖向分量(z)。为探寻Copula模型在多维地震动参数相关性分析中的应用可行性,从太平洋工程抗震研究中心选取1500组实测地震动,并从强度、持时和频谱3个方面筛选出12组地震动参数用于表征分析...地震动常被拆解为两个水平向分量(x、y)和一个竖向分量(z)。为探寻Copula模型在多维地震动参数相关性分析中的应用可行性,从太平洋工程抗震研究中心选取1500组实测地震动,并从强度、持时和频谱3个方面筛选出12组地震动参数用于表征分析地震动不同向分量间的相关性。首先,计算得到u-v(u、v为地震动两个水平向分量和一个竖向分量中的任意两个分量,u、v=x,y,z)向分量间12组地震动参数的Pearson线性相关系数、Kendall秩相关系数和Spearman秩相关系数。其次,结合柯尔莫哥洛夫-斯米尔诺夫(Kolmogorov-Smirnov,K-S)检验和贝叶斯信息准则(the Bayesian information criteria,BIC)建立了12组地震动参数在x、y、z向分量上的最优概率模型。最后,利用BIC准则确定了u-v向分量间地震动参数的最优Copula函数,建立了u-v向分量间12组地震动参数的联合概率函数。结果表明:12组地震动参数相关性较好,但反应谱峰值对应周期参数在u-v向分量间的相关性和阿里亚斯强度参数在x-z向、y-z向分量间的相关性较低;通过Copula理论可以较为精准的建立u-v向分量间地震动参数的联合概率函数;在给定u向分量地震动参数条件下,得到的Copula条件均值和条件随机数能够用于v向分量地震动参数预测。展开更多
文摘This paper proposes a Markov-switching copula model to examine the presence of regime change in the time-varying dependence structure between oil price changes and stock market returns in six GCC countries. The marginal distributions are assumed to follow a long-memory model while the copula parameters are supposed to evolve according to the Markov-switching process. Furthermore, we estimate the Value-at-Risk (VaR) based on the proposed approach. The empirical results provide evidence of three regime changes, representing precrisis, financial crisis and post-crisis, in the dependence structure between energy and GCC stock markets. In particular, in the pre- and post-crisis regimes, there is no dependence, while in the crisis regime, there is significant tail dependence. For OPEC countries, we find lower tail dependence whereas in non-OPEC countries, we see upper tail dependence. VaR experiments show that the Markov-switching time- varying copula model performs better than the time-varying copula model.
文摘地震动常被拆解为两个水平向分量(x、y)和一个竖向分量(z)。为探寻Copula模型在多维地震动参数相关性分析中的应用可行性,从太平洋工程抗震研究中心选取1500组实测地震动,并从强度、持时和频谱3个方面筛选出12组地震动参数用于表征分析地震动不同向分量间的相关性。首先,计算得到u-v(u、v为地震动两个水平向分量和一个竖向分量中的任意两个分量,u、v=x,y,z)向分量间12组地震动参数的Pearson线性相关系数、Kendall秩相关系数和Spearman秩相关系数。其次,结合柯尔莫哥洛夫-斯米尔诺夫(Kolmogorov-Smirnov,K-S)检验和贝叶斯信息准则(the Bayesian information criteria,BIC)建立了12组地震动参数在x、y、z向分量上的最优概率模型。最后,利用BIC准则确定了u-v向分量间地震动参数的最优Copula函数,建立了u-v向分量间12组地震动参数的联合概率函数。结果表明:12组地震动参数相关性较好,但反应谱峰值对应周期参数在u-v向分量间的相关性和阿里亚斯强度参数在x-z向、y-z向分量间的相关性较低;通过Copula理论可以较为精准的建立u-v向分量间地震动参数的联合概率函数;在给定u向分量地震动参数条件下,得到的Copula条件均值和条件随机数能够用于v向分量地震动参数预测。