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The structure of dynamic correlations in multivariate stochastic volatility models

机译:多元随机波动率模型中动态相关性的结构

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This paper proposes two types of stochastic correlation structures for Multivariate Stochastic Volatility (MSV) models, namely the constant correlation (CC) MSV and dynamic correlation (DC) MSV models, from which the stochastic covariance structures can easily be obtained. Both structures can be used for purposes of determining optimal portfolio and risk management strategies through the use of correlation matrices, and for calculating Value-at-Risk (VaR) forecasts and optimal capital charges under the Basel Accord through the use of covariance matrices. A technique is developed to estimate the DC MSV model using the Markov Chain Monte Carlo (MCMC) procedure, and simulated data show that the estimation method works well. Various multivariate conditional volatility and MSV models are compared via simulation, including an evaluation of alternative VaR estimators. The DC MSV model is also estimated using three sets of empirical data, namely Nikkei 225 Index, Hang Seng Index and Straits Times Index returns, and significant dynamic correlations are found. The Dynamic Conditional Correlation (DCC) model is also estimated, and is found to be far less sensitive to the covariation in the shocks to the indexes. The correlation process for the DCC model alsoappears to have a unit root, and hence constant conditional correlations in the long run. In contrast, the estimates arising from the DC MSV model indicate that the dynamic correlation process is stationary.
机译:本文为多变量随机波动率(MSV)模型提出了两种类型的随机相关结构,即常数相关(CC)MSV和动态相关(DC)MSV模型,从中可以轻松获得随机协方差结构。两种结构均可用于通过使用相关矩阵确定最佳投资组合和风险管理策略的目的,以及通过使用协方差矩阵来计算《巴塞尔协议》下的风险价值(VaR)预测和最优资本费用的目的。开发了一种使用马尔可夫链蒙特卡洛(MCMC)程序估算DC MSV模型的技术,仿真数据表明该估算方法行之有效。通过仿真比较了各种多元条件波动率和MSV模型,包括评估替代的VaR估计量。还使用三组经验数据(即日经225指数,恒生指数和海峡时报指数收益率)估算了DC MSV模型,并发现了显着的动态相关性。动态条件相关性(DCC)模型也得到了估计,并且发现对指数震荡的协方差不那么敏感。 DCC模型的相关过程也似乎具有单位根,因此从长远来看,条件相关是恒定的。相反,从DC MSV模型得出的估计值表明动态相关过程是平稳的。

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